International Journal of Business and Management Invention (IJBMI) is an international journal intended for professionals and researchers in all fields of Business and Management. IJBMI publishes research articles and reviews within the whole field Business and Management, new teaching methods, assessment, validation and the impact of new technologies and it will continue to provide information on the latest trends and developments in this ever-expanding subject. The publications of papers are selected through double peer reviewed to ensure originality, relevance, and readability. The articles published in our journal can be accessed online
A Study on Store Atmosphere in Grocery Retail Market at Tiruchirappalliijtsrd
Store atmosphere plays an important role in the retail market and also it is new concept to present the product with light, color, music, interior, exterior, fixtures and display. Store atmosphere is the way of presenting store by displaying the products to the customer. A proper store atmosphere help the store to increase the customer walk ins and in turn increase the sales of the product. The increase in competition has necessitated retailers to differentiate themselves from their competition Mr. Robinson. M | Shanmugapriya. P ""A Study on Store Atmosphere in Grocery Retail Market at Tiruchirappalli"" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-3 | Issue-4 , June 2019, URL: https://www.ijtsrd.com/papers/ijtsrd23668.pdf
Paper URL: https://www.ijtsrd.com/management/marketing/23668/a-study-on-store-atmosphere-in-grocery-retail-market-at-tiruchirappalli/mr-robinson-m
THAI CONSUMERS ACCEPTABILITY OF JAPONICA RICE FROM NORTHERN THAILANDAkashSharma618775
Japonica rice in the domestic market is mainly produced through the contract farming system in
northern Thailand. Thai consumers have misunderstood that Thailand cannot cultivate Japonica rice with good
quality. This study aimed to analyze the acceptability of Thailand’s Japonica rice from the perspectives of Thai
consumers. Its specific objectives were to investigate the consumers’ consumption behaviors for Japanese cuisine
and to evaluate consumer preferences of different Japonica rice choices and attitudes towards Japonica rice
consumption. Data were collected from 385 respondents in Bangkok using the purposive sampling method. The
results indicated that respondents’ consumption behavior of Japanese cuisine in Bangkok was increasing.
Analyzing the preference of different Japonica rice choices found that the respondents preferred JR1 (from
Japan), JR3 (Thailand) and JR2 (from Vietnam), in descending order. JR2 attributes especially smell and soft
sticky texture were like JR3. However, JR3 shared similar qualities to JR1 in terms of smell, flavor and soft sticky
texture. JR3 can be a good alternative choice for Japanese restaurant owners and consumers. In addition, the
higher market price of JR1 creates a competitive opportunity for JR3 in the domestic market. Moreover, their
attitudes towards domestically grown Japonica rice consumption was also positive.
Shahid, M., & Kamran, F. (2015). Causal Relationship between Macroeconomic Factors and Stock Prices in Pakistan. International Journal Of Management And Commerce Innovations, 3(2), 172-178. Retrieved from http://researchpublish.com/journal/IJMCI/Issue-2-October-2015-March-2016/0
Price Determinant of Kolanut in Selected Markets in Ibadan, Oyo State, NigeriaAI Publications
The study was carried out to examine the price determinants of Kolanuts in selected markets in Ibadan, Oyo State. Eighty(80) Kolanuts sellers were randomly selected from four(4) urban Local Government Areas in Ibadan where four(4) Kolanut markets center were also visited. The data collected were subjected to descriptive statistics, Gross Margin and multiple Regression analysis. The results indicated that majority (97%) of Kolanut sellers in the study area were females. It was observed that (48%) of the respondents belong to the age bracket of 41-50years while (66.3%) of the respondents had primary and secondary education. Gross margin analysis showed that seven hundred and twenty three thousand, three hundred and fifty naira (₦723, 350.00) was realized as profit margin after the total variable cost(TVC) of two hundred and three thousand, four hundred and fifty naira(₦203,450.00) have been deducted as cost obtained. The results of multiple regression shows that the R2 (0.67) is high and that E-statistics further explained the ability of the independent variables in explaining the variations in the dependent variable. It was found out that slight changes in any of the explanatory variable will result in downward / upward movement in the market price of kolanut in the study area. It is imperative that more research should be carried out for more varieties of kolanut which could enhance more demand and marketing.
A Study on Customer Perception on Retail Services in Select Organized Retail ...Sunil Krishna
Organized retailing in India has been maturing by passing
through many trends with the entry of many big players
trying to build and strengthen their retail business. And in
the light of this situation some feel that the perception of
the customer may loose out their existence. The study
revealed that although organized retail is relatively new
concept in the semi urban area, yet a clear cut perception
has been establishes in the minds of shoppers in semi
urban areas like kadapa city, A.P. In this regard, the data
was collected on 11 factors about the organized retail
store.
A Study on Store Atmosphere in Grocery Retail Market at Tiruchirappalliijtsrd
Store atmosphere plays an important role in the retail market and also it is new concept to present the product with light, color, music, interior, exterior, fixtures and display. Store atmosphere is the way of presenting store by displaying the products to the customer. A proper store atmosphere help the store to increase the customer walk ins and in turn increase the sales of the product. The increase in competition has necessitated retailers to differentiate themselves from their competition Mr. Robinson. M | Shanmugapriya. P ""A Study on Store Atmosphere in Grocery Retail Market at Tiruchirappalli"" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-3 | Issue-4 , June 2019, URL: https://www.ijtsrd.com/papers/ijtsrd23668.pdf
Paper URL: https://www.ijtsrd.com/management/marketing/23668/a-study-on-store-atmosphere-in-grocery-retail-market-at-tiruchirappalli/mr-robinson-m
THAI CONSUMERS ACCEPTABILITY OF JAPONICA RICE FROM NORTHERN THAILANDAkashSharma618775
Japonica rice in the domestic market is mainly produced through the contract farming system in
northern Thailand. Thai consumers have misunderstood that Thailand cannot cultivate Japonica rice with good
quality. This study aimed to analyze the acceptability of Thailand’s Japonica rice from the perspectives of Thai
consumers. Its specific objectives were to investigate the consumers’ consumption behaviors for Japanese cuisine
and to evaluate consumer preferences of different Japonica rice choices and attitudes towards Japonica rice
consumption. Data were collected from 385 respondents in Bangkok using the purposive sampling method. The
results indicated that respondents’ consumption behavior of Japanese cuisine in Bangkok was increasing.
Analyzing the preference of different Japonica rice choices found that the respondents preferred JR1 (from
Japan), JR3 (Thailand) and JR2 (from Vietnam), in descending order. JR2 attributes especially smell and soft
sticky texture were like JR3. However, JR3 shared similar qualities to JR1 in terms of smell, flavor and soft sticky
texture. JR3 can be a good alternative choice for Japanese restaurant owners and consumers. In addition, the
higher market price of JR1 creates a competitive opportunity for JR3 in the domestic market. Moreover, their
attitudes towards domestically grown Japonica rice consumption was also positive.
Shahid, M., & Kamran, F. (2015). Causal Relationship between Macroeconomic Factors and Stock Prices in Pakistan. International Journal Of Management And Commerce Innovations, 3(2), 172-178. Retrieved from http://researchpublish.com/journal/IJMCI/Issue-2-October-2015-March-2016/0
Price Determinant of Kolanut in Selected Markets in Ibadan, Oyo State, NigeriaAI Publications
The study was carried out to examine the price determinants of Kolanuts in selected markets in Ibadan, Oyo State. Eighty(80) Kolanuts sellers were randomly selected from four(4) urban Local Government Areas in Ibadan where four(4) Kolanut markets center were also visited. The data collected were subjected to descriptive statistics, Gross Margin and multiple Regression analysis. The results indicated that majority (97%) of Kolanut sellers in the study area were females. It was observed that (48%) of the respondents belong to the age bracket of 41-50years while (66.3%) of the respondents had primary and secondary education. Gross margin analysis showed that seven hundred and twenty three thousand, three hundred and fifty naira (₦723, 350.00) was realized as profit margin after the total variable cost(TVC) of two hundred and three thousand, four hundred and fifty naira(₦203,450.00) have been deducted as cost obtained. The results of multiple regression shows that the R2 (0.67) is high and that E-statistics further explained the ability of the independent variables in explaining the variations in the dependent variable. It was found out that slight changes in any of the explanatory variable will result in downward / upward movement in the market price of kolanut in the study area. It is imperative that more research should be carried out for more varieties of kolanut which could enhance more demand and marketing.
A Study on Customer Perception on Retail Services in Select Organized Retail ...Sunil Krishna
Organized retailing in India has been maturing by passing
through many trends with the entry of many big players
trying to build and strengthen their retail business. And in
the light of this situation some feel that the perception of
the customer may loose out their existence. The study
revealed that although organized retail is relatively new
concept in the semi urban area, yet a clear cut perception
has been establishes in the minds of shoppers in semi
urban areas like kadapa city, A.P. In this regard, the data
was collected on 11 factors about the organized retail
store.
Assessment of Supply Chain Management of Sesame Seed in Pakokku Township, Mag...Premier Publishers
This study was carried out to examine the market performance of stakeholders along the sesame seed supply chain. The primary data were collected from 89 sesame farmers from four villages in Pakokku Township by using simple random sampling method and 11 traders or wholesalers at the crop exchange center in Pakokku, 5 sesame oil millers in Pakokku, 3 Mandalay wholesalers and 4 Yangon exporters were purposively selected in 2016-2017. Benefit and cost ratios in Pakokku were 1.22, it means that if the famer invest one MMK in sesame seed production, they will gain 0.22 MMK. Wholesalers and Chinese commission agents in Mandalay sell raw sesame products directly through the Muse exchange center, which is located on the border of Myanmar and China. Exporters in Yangon sell raw sesame products to Japan, Taiwan, and roasted sesame powder to Korea via Yangon port. The wholesalers/traders derive the greatest marketing margin and profit from the Sahmon Nat variety sold in Pakokku and Mandalay. The sesame supply chain was very weak in the study areas because of the profit by transacting the sesame without value adding and without any negotiating power by farmers.
The Impact of Policy Announcement on Stock Market Volatility: Evidence from C...IOSRJBM
The aim of the current empirical paper is to investigate the impact of major political events and its impact on stock market with special reference to BSE Sensex, Nifty fifty and BSE100 index. History has exhibited that stock market plays a major role in any economy. Stock markets have been impacted by various macro and micro economic factors. Therefore, the main objective of this empirical paper is to investigate the pricing behaviour of the chosen benchmark indices (Sensex, Nifty and BSE100) with respect to a major political event in India (demonetisation of currency) and its implications on regulators, researchers and market participants. For the purpose of the study the data has been collected from 26-10-2015 to 30-11-2016. The collected data has been tested for stationarity by applying ADF test statistics. The event study methodology has been employed to determine the impact of demonetisation on India bench mark indices. In order to capture the historical volatility the standard deviation of the abnormal returns of the selected indices has been computed. GARCH (1,1) model has been employed to ascertain the existence of ARCH/GARCH effect in the indices. We found a significant impact of currency demonetisation on the chosen indices on the event day. Nobody knows the actual impact of demonetisation on the economy in the long run. Bulk of the studies and opinions of experts on the demonetisation is mixed. Some experts opine that the impact on the economy would be significant and adverse. However, another bunch of experts opine that the shock on the economy would be smaller, although no extensive macroeconomic assessment has been published.
Traditional markets in Indonesia were created so that people from all walks of life can fulfill their needs, especially staple food products, without having to spend a lot of money. However, the prices of food products in different markets vary depending on the consumers of the particular market. The aims of this article were to compare the price difference of staple food products in several traditional markets and to find out the factors that cause the price difference. The data were collected by carrying out a survey to five traditional markets around Jakarta regarding the prices of ten staple food products. The data were analyzed quantitatively using statistical calculation ANOVA from SPSS version 22, and also qualitatively to discuss several factors underlying the price differences. Results revealed that price differences of staple food products were not only caused by market location, but other factors such as pricing strategy and consumer specification. This research implied that traditional markets were still chosen by Indonesian consumers to fulfill their needs because of the competitive price.
A Comparison of customer satisfaction between hyper stores and convenience St...deshwal852
The Indian retail sector is going through a transformation and the emerging market is witnessing a significant change in its growth pattern. Both existing and new players are experimenting with new retail formats. Consumers today can shop for goods and services in a wide variety of stores. The bestknown types of retailer are departmental store, hyper market, super market, convenience stores, discounter and cash and carry. This study is an attempt to compare the level of customer satisfaction buying grocery products in hyper stores and convenience stores. In the present study the sample of 100 respondents was taken. Convenient sampling technique was used. The sample was drawn from South-
West Delhi. Interpretation of result was done on the basis of mean, standard deviation and ‘t’ test. Results indicate that there is significant difference in customer satisfaction between hyper stores and convenience stores.
REVIEW OF COMMODITY FUTURES MARKET EFFICIENCY AND RELATED ISSUES Karthika Nathan
The study of market efficiency in commodity futures markets is important to both the government and the producers/marketers in India. In this paper, we review
the available literature on commodity futures market efficiency and related issues viz. the effect of seasonality on commodity futures market efficiency, the
inflationary impact of commodity futures trading and the impact of commodity futures trading on spot market volatility. The review shows that the results
produced in available literature are often conflicting: the efficiency hypothesis is supported only for certain markets and only over some periods. Also there are
very few studies on microstructure and macroeconomic issues in commodity futures market, and integration with other international markets. This forms further
scope of research in this area.
The Causality Relationship between Hnx Index and Stock Trading Volume in Hano...IJAEMSJORNAL
This paper examines the casual relations between the market return and trading volume for the Ha Noi Stock Exchange during the period from May 3th , 2013 to March 2rd, 2016. This paper uses Granger test and the results showed that the change of the volume of transactions that affect the change of HNX-Index. On the basis of this conclusion, we shall determine the degree of influence of the change in trading volume with HNX-Index by means of regression analysis.
Co- Movements of India’s Stock Market with Bond Market and Select Global Stoc...inventionjournals
The study intends to carry out a comparative analysis of performance of stocks and bond market in India, and moreover comparing the Indian stock market with select global stock market. It is found that Indian stock market has a very high correlation with developed stock markets. And it is also found that bond market is negatively correlated with the stock market. The study indicates the existence of linear combination between stock returns of India with U.S, U.K, Japan and Government Bond market. In short, there exist a long term relationship and long run equilibrium between these markets in short run there may be disequilibrium. Comparison of India’s stock and bond market will benefit in creating optimal portfolio possessing minimum risk and maximum return, when the Indian stock or bond index facing a trouble.
Inter Linkage between Macroeconomic Variables and Stock Indices Using Granger...ijtsrd
As exchange rate and GDP are the important factors which influence the behavior of stock market. In this study we have examined the Co integration between macroeconomic variables and Indian stock market and causality between exchange rate and GDP with stock return. We have applied 42years data on yearly basis for GDP, exchange rate and stock return and applied ADF test for checking Stationarity, Correlogram for serial correlation, Johansen Co integration for association and Granger causality test for examine multiple causal relation by controlling the effects of other variables, then Impulse Response Function used for checking the responsiveness of a time series to unexpected shocks in other time series. The study found that exchange rate significantly granger causes the stock return Indian stock market and long run co integration found to be significant in amongst the selected variables. Dr. Amit Manglani | Mr. Suraj Patel "Inter-Linkage between Macroeconomic Variables and Stock Indices: Using Granger Causality & Co-Integration Approach" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-6 | Issue-6 , October 2022, URL: https://www.ijtsrd.com/papers/ijtsrd51868.pdf Paper URL: https://www.ijtsrd.com/humanities-and-the-arts/other/51868/interlinkage-between-macroeconomic-variables-and-stock-indices-using-granger-causality-and-cointegration-approach/dr-amit-manglani
Analysis of Soybean Meal Price Discovery Function in Chinaijtsrd
Soybean meal, as the largest and most active agricultural product futures in China, involves a wide range of industries and a wide range of industries. After the Sino US trade friction, the raw material cost of soybean meal has risen, and the price fluctuates greatly. It is important to explore the impact of trade friction on the price discovery function of Chinas soybean meal futures, which will improve the efficiency of Chinas soybean meal futures market and promote it to better serve the real economy. significance. This article compares the discovery function of soybean meal futures market before and after the Sino US trade friction, and analyzes the reasons for the difference. Co integration test, causality test, variance decomposition, and PT IS model are used to analyze the soybean meal futures and spot prices from 2014 to 2020. The empirical results show that, in general, the soybean meal futures market plays a leading role in the price discovery process, but trade The price discovery function in the period after the friction occurs is relatively weaker than in the previous period. Finally, specific suggestions are put forward in terms of improving the structure of market participants and the information disclosure system. Zhang Jiayu | Zhang Yuan "Analysis of Soybean Meal Price Discovery Function in China" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-5 | Issue-6 , October 2021, URL: https://www.ijtsrd.com/papers/ijtsrd47601.pdf Paper URL : https://www.ijtsrd.com/home-science/food-and-nutrition/47601/analysis-of-soybean-meal-price-discovery-function-in-china/zhang-jiayu
Assessment of Supply Chain Management of Sesame Seed in Pakokku Township, Mag...Premier Publishers
This study was carried out to examine the market performance of stakeholders along the sesame seed supply chain. The primary data were collected from 89 sesame farmers from four villages in Pakokku Township by using simple random sampling method and 11 traders or wholesalers at the crop exchange center in Pakokku, 5 sesame oil millers in Pakokku, 3 Mandalay wholesalers and 4 Yangon exporters were purposively selected in 2016-2017. Benefit and cost ratios in Pakokku were 1.22, it means that if the famer invest one MMK in sesame seed production, they will gain 0.22 MMK. Wholesalers and Chinese commission agents in Mandalay sell raw sesame products directly through the Muse exchange center, which is located on the border of Myanmar and China. Exporters in Yangon sell raw sesame products to Japan, Taiwan, and roasted sesame powder to Korea via Yangon port. The wholesalers/traders derive the greatest marketing margin and profit from the Sahmon Nat variety sold in Pakokku and Mandalay. The sesame supply chain was very weak in the study areas because of the profit by transacting the sesame without value adding and without any negotiating power by farmers.
The Impact of Policy Announcement on Stock Market Volatility: Evidence from C...IOSRJBM
The aim of the current empirical paper is to investigate the impact of major political events and its impact on stock market with special reference to BSE Sensex, Nifty fifty and BSE100 index. History has exhibited that stock market plays a major role in any economy. Stock markets have been impacted by various macro and micro economic factors. Therefore, the main objective of this empirical paper is to investigate the pricing behaviour of the chosen benchmark indices (Sensex, Nifty and BSE100) with respect to a major political event in India (demonetisation of currency) and its implications on regulators, researchers and market participants. For the purpose of the study the data has been collected from 26-10-2015 to 30-11-2016. The collected data has been tested for stationarity by applying ADF test statistics. The event study methodology has been employed to determine the impact of demonetisation on India bench mark indices. In order to capture the historical volatility the standard deviation of the abnormal returns of the selected indices has been computed. GARCH (1,1) model has been employed to ascertain the existence of ARCH/GARCH effect in the indices. We found a significant impact of currency demonetisation on the chosen indices on the event day. Nobody knows the actual impact of demonetisation on the economy in the long run. Bulk of the studies and opinions of experts on the demonetisation is mixed. Some experts opine that the impact on the economy would be significant and adverse. However, another bunch of experts opine that the shock on the economy would be smaller, although no extensive macroeconomic assessment has been published.
Traditional markets in Indonesia were created so that people from all walks of life can fulfill their needs, especially staple food products, without having to spend a lot of money. However, the prices of food products in different markets vary depending on the consumers of the particular market. The aims of this article were to compare the price difference of staple food products in several traditional markets and to find out the factors that cause the price difference. The data were collected by carrying out a survey to five traditional markets around Jakarta regarding the prices of ten staple food products. The data were analyzed quantitatively using statistical calculation ANOVA from SPSS version 22, and also qualitatively to discuss several factors underlying the price differences. Results revealed that price differences of staple food products were not only caused by market location, but other factors such as pricing strategy and consumer specification. This research implied that traditional markets were still chosen by Indonesian consumers to fulfill their needs because of the competitive price.
A Comparison of customer satisfaction between hyper stores and convenience St...deshwal852
The Indian retail sector is going through a transformation and the emerging market is witnessing a significant change in its growth pattern. Both existing and new players are experimenting with new retail formats. Consumers today can shop for goods and services in a wide variety of stores. The bestknown types of retailer are departmental store, hyper market, super market, convenience stores, discounter and cash and carry. This study is an attempt to compare the level of customer satisfaction buying grocery products in hyper stores and convenience stores. In the present study the sample of 100 respondents was taken. Convenient sampling technique was used. The sample was drawn from South-
West Delhi. Interpretation of result was done on the basis of mean, standard deviation and ‘t’ test. Results indicate that there is significant difference in customer satisfaction between hyper stores and convenience stores.
REVIEW OF COMMODITY FUTURES MARKET EFFICIENCY AND RELATED ISSUES Karthika Nathan
The study of market efficiency in commodity futures markets is important to both the government and the producers/marketers in India. In this paper, we review
the available literature on commodity futures market efficiency and related issues viz. the effect of seasonality on commodity futures market efficiency, the
inflationary impact of commodity futures trading and the impact of commodity futures trading on spot market volatility. The review shows that the results
produced in available literature are often conflicting: the efficiency hypothesis is supported only for certain markets and only over some periods. Also there are
very few studies on microstructure and macroeconomic issues in commodity futures market, and integration with other international markets. This forms further
scope of research in this area.
The Causality Relationship between Hnx Index and Stock Trading Volume in Hano...IJAEMSJORNAL
This paper examines the casual relations between the market return and trading volume for the Ha Noi Stock Exchange during the period from May 3th , 2013 to March 2rd, 2016. This paper uses Granger test and the results showed that the change of the volume of transactions that affect the change of HNX-Index. On the basis of this conclusion, we shall determine the degree of influence of the change in trading volume with HNX-Index by means of regression analysis.
Co- Movements of India’s Stock Market with Bond Market and Select Global Stoc...inventionjournals
The study intends to carry out a comparative analysis of performance of stocks and bond market in India, and moreover comparing the Indian stock market with select global stock market. It is found that Indian stock market has a very high correlation with developed stock markets. And it is also found that bond market is negatively correlated with the stock market. The study indicates the existence of linear combination between stock returns of India with U.S, U.K, Japan and Government Bond market. In short, there exist a long term relationship and long run equilibrium between these markets in short run there may be disequilibrium. Comparison of India’s stock and bond market will benefit in creating optimal portfolio possessing minimum risk and maximum return, when the Indian stock or bond index facing a trouble.
Inter Linkage between Macroeconomic Variables and Stock Indices Using Granger...ijtsrd
As exchange rate and GDP are the important factors which influence the behavior of stock market. In this study we have examined the Co integration between macroeconomic variables and Indian stock market and causality between exchange rate and GDP with stock return. We have applied 42years data on yearly basis for GDP, exchange rate and stock return and applied ADF test for checking Stationarity, Correlogram for serial correlation, Johansen Co integration for association and Granger causality test for examine multiple causal relation by controlling the effects of other variables, then Impulse Response Function used for checking the responsiveness of a time series to unexpected shocks in other time series. The study found that exchange rate significantly granger causes the stock return Indian stock market and long run co integration found to be significant in amongst the selected variables. Dr. Amit Manglani | Mr. Suraj Patel "Inter-Linkage between Macroeconomic Variables and Stock Indices: Using Granger Causality & Co-Integration Approach" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-6 | Issue-6 , October 2022, URL: https://www.ijtsrd.com/papers/ijtsrd51868.pdf Paper URL: https://www.ijtsrd.com/humanities-and-the-arts/other/51868/interlinkage-between-macroeconomic-variables-and-stock-indices-using-granger-causality-and-cointegration-approach/dr-amit-manglani
Analysis of Soybean Meal Price Discovery Function in Chinaijtsrd
Soybean meal, as the largest and most active agricultural product futures in China, involves a wide range of industries and a wide range of industries. After the Sino US trade friction, the raw material cost of soybean meal has risen, and the price fluctuates greatly. It is important to explore the impact of trade friction on the price discovery function of Chinas soybean meal futures, which will improve the efficiency of Chinas soybean meal futures market and promote it to better serve the real economy. significance. This article compares the discovery function of soybean meal futures market before and after the Sino US trade friction, and analyzes the reasons for the difference. Co integration test, causality test, variance decomposition, and PT IS model are used to analyze the soybean meal futures and spot prices from 2014 to 2020. The empirical results show that, in general, the soybean meal futures market plays a leading role in the price discovery process, but trade The price discovery function in the period after the friction occurs is relatively weaker than in the previous period. Finally, specific suggestions are put forward in terms of improving the structure of market participants and the information disclosure system. Zhang Jiayu | Zhang Yuan "Analysis of Soybean Meal Price Discovery Function in China" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-5 | Issue-6 , October 2021, URL: https://www.ijtsrd.com/papers/ijtsrd47601.pdf Paper URL : https://www.ijtsrd.com/home-science/food-and-nutrition/47601/analysis-of-soybean-meal-price-discovery-function-in-china/zhang-jiayu
Determinants of Share Prices of listed Commercial Banks in Pakistaniosrjce
The focus of this paper is to identify the determinants of share prices for the listed commercial banks
in Karachi stock exchange over the period 2007-2013. One of the unique features of this paper is to find out the
impact of both internal and external factors on share price. Linear multiple regression analysis is used to
determine whether the selected independent variables have influence on share prices or not. The results indicate
that earning per share has more influence on share prices and it has positive and significant relationship with
share prices, book to market value ratio and interest rate have also significant but negative relation with share
prices while other variables (gross domestic product, price earnings ratio, dividend per share, leverage) have
no relationship with share prices
Price Integration In The Indian Stock Market: S&P CNX Nifty And S&P CNX Nifty...Karthika Nathan
One of the important functions of Futures market is Price discovery. Futures
markets provide a mechanism through which information about current and
futures Spot prices can be assimilated and disseminated to all participants in
the economy. The ability of future markets to provide information about price
is a central theme for the existence of these markets. The paper has examined
whether the futures market is performing its primary role of price discovery.
The main objective of the study is to examine whether any long run
equilibrium relationship exists between spot market and future market and to
identify the lead-lag relationship between these markets. The daily NSE
closing prices of Nifty Spot Index and Nifty Index Futures of near month
contracts from January 2013 to December 2013 have been taken for the study
purpose. After obtaining the stationarity of the series by conducting
Augmented Dickey Fuller Test, Granger’s Co integration Test and Johansen
Co integration Test have been conducted on the Nifty Spot and Nifty futures.
The empirical results indicate that there exists long run equilibrium between
these two markets. Further Granger’s Causality Test results indicate that there
exists lead –lag relationship between these Spot market and Future market. It
also shows that there is much feedback from Futures market to Spot market in
impounding information in its prices. Finally from overall empirical results
we propose that Futures markets are more efficient in discovering the Future
spot price.
An Analysis of Indian Commercial Dynamism in International Trade: 2000-2021Samsul Alam
The study first looks at the fundamentals of growth rate, trade balance, coverage rate, openness rate, and the share of global indicators before presenting each of them in more detail. It thus assesses India's overall commercial dynamism. A thorough analysis is made using data gathered from the World Bank's databank in order to carry out this study. An analysis of time series data is performed using data from 2000 to 2021. MS Excel is then used to analyze the data and provide a suitable interpretation. The results show that India has an average growth rate of 12.16 for imports and 12.02 for exports, a deficit trade balance over the years, a coverage rate that ranges from 78.49 (2012) to 97.97 (2020), trade openness that ranges from 26 (2001) to 56 (2012) percent, and a total global market share of 2.52 (2021) and 0.79. (2000). Researchers, other stakeholders in the field, and policymakers in nearby countries, specifically mentioning Bangladeshi, Pakistani, Myanmar and Indian governments, could all benefit from this study's findings.
Economic Integration of Pakistan: An Empirical Test of Purchasing Power Parityinventionjournals
This paper empirically analyses the substantiation of (PPP) purchasing power parity theory in Pakistan. For finding the associationin exchange rate’sprecariousness and inflation rate’sdisparity between Pakistan and its thirteen major trading partners, study used OLS method, and for long run relationship applied co-integration, error correction model and panel co-integration technique over the time span of 1972Q1- 2012Q3. OLS results are shown very small values of R 2 . But co-integration, Unit root test results and Panel tests’ results revealed the existence of long run equilibrium relationship between Pakistan and sample countries. The error correction terms also exposed and confirmed the speed of adjustment from disequilibrium to long run equilibrium condition at significant level.Panel unit root test and panel co-integration test by Pedroni also revealed that expected inflation rate differential have a positive andsignificant effect on exchange rate change between Pakistan and its trading partners during the sample period. The results also provided thestrong evidence thateconomic integration between foreign exchange markets and commodity markets among the sample countries is very high. For getting the proper fruits of globalization it is required to enhance the canvas of exports quantity and numbers of export items
American Journal of Multidisciplinary Research and Development is indexed, refereed and peer-reviewed journal, which is designed to publish research articles.
American Journal of Multidisciplinary Research and Development is indexed, refereed and peer-reviewed journal, which is designed to publish research articles.
Analysis of Selective Indices of BSE Stock Market in India A Reviewijtsrd
Stock market plays vital role for financial sectors and this became a major vehicle for mobilizing of investment and saving in the capital market. The capital market operates through the National Stock Exchange NSE and Bombay Stock Exchange. The objectives of this paper is to evaluate the performance of selective indices in the BSE stock market India such are SandP BSE INDEX, SandP BSE 100, SandP BSE 200, SandP BSE 500 and SandP Dollex 100. Various result has been found by using benchmark Indexes, during the period Jan 2011 to December 2021. Performance measure used by Compound Average Growth Rate CAGR , Average Return, Variance, Standard Deviation and co efficient of correlation. five indices have selected to performed superior in the BSE market in terms of CAGR, Variance, Standard Deviation. Best performance has been found under co efficient of correlation. Thippeswamy. C. B. | Dr. Manjunath K. R. "Analysis of Selective Indices of BSE Stock Market in India - A Review" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-7 | Issue-5 , October 2023, URL: https://www.ijtsrd.com/papers/ijtsrd59865.pdf Paper Url: https://www.ijtsrd.com/management/risk-management/59865/analysis-of-selective-indices-of-bse-stock-market-in-india--a-review/thippeswamy-c-b
Personal Brand Statement:
As an Army veteran dedicated to lifelong learning, I bring a disciplined, strategic mindset to my pursuits. I am constantly expanding my knowledge to innovate and lead effectively. My journey is driven by a commitment to excellence, and to make a meaningful impact in the world.
What are the main advantages of using HR recruiter services.pdfHumanResourceDimensi1
HR recruiter services offer top talents to companies according to their specific needs. They handle all recruitment tasks from job posting to onboarding and help companies concentrate on their business growth. With their expertise and years of experience, they streamline the hiring process and save time and resources for the company.
Memorandum Of Association Constitution of Company.pptseri bangash
www.seribangash.com
A Memorandum of Association (MOA) is a legal document that outlines the fundamental principles and objectives upon which a company operates. It serves as the company's charter or constitution and defines the scope of its activities. Here's a detailed note on the MOA:
Contents of Memorandum of Association:
Name Clause: This clause states the name of the company, which should end with words like "Limited" or "Ltd." for a public limited company and "Private Limited" or "Pvt. Ltd." for a private limited company.
https://seribangash.com/article-of-association-is-legal-doc-of-company/
Registered Office Clause: It specifies the location where the company's registered office is situated. This office is where all official communications and notices are sent.
Objective Clause: This clause delineates the main objectives for which the company is formed. It's important to define these objectives clearly, as the company cannot undertake activities beyond those mentioned in this clause.
www.seribangash.com
Liability Clause: It outlines the extent of liability of the company's members. In the case of companies limited by shares, the liability of members is limited to the amount unpaid on their shares. For companies limited by guarantee, members' liability is limited to the amount they undertake to contribute if the company is wound up.
https://seribangash.com/promotors-is-person-conceived-formation-company/
Capital Clause: This clause specifies the authorized capital of the company, i.e., the maximum amount of share capital the company is authorized to issue. It also mentions the division of this capital into shares and their respective nominal value.
Association Clause: It simply states that the subscribers wish to form a company and agree to become members of it, in accordance with the terms of the MOA.
Importance of Memorandum of Association:
Legal Requirement: The MOA is a legal requirement for the formation of a company. It must be filed with the Registrar of Companies during the incorporation process.
Constitutional Document: It serves as the company's constitutional document, defining its scope, powers, and limitations.
Protection of Members: It protects the interests of the company's members by clearly defining the objectives and limiting their liability.
External Communication: It provides clarity to external parties, such as investors, creditors, and regulatory authorities, regarding the company's objectives and powers.
https://seribangash.com/difference-public-and-private-company-law/
Binding Authority: The company and its members are bound by the provisions of the MOA. Any action taken beyond its scope may be considered ultra vires (beyond the powers) of the company and therefore void.
Amendment of MOA:
While the MOA lays down the company's fundamental principles, it is not entirely immutable. It can be amended, but only under specific circumstances and in compliance with legal procedures. Amendments typically require shareholder
Remote sensing and monitoring are changing the mining industry for the better. These are providing innovative solutions to long-standing challenges. Those related to exploration, extraction, and overall environmental management by mining technology companies Odisha. These technologies make use of satellite imaging, aerial photography and sensors to collect data that might be inaccessible or from hazardous locations. With the use of this technology, mining operations are becoming increasingly efficient. Let us gain more insight into the key aspects associated with remote sensing and monitoring when it comes to mining.
RMD24 | Retail media: hoe zet je dit in als je geen AH of Unilever bent? Heid...BBPMedia1
Grote partijen zijn al een tijdje onderweg met retail media. Ondertussen worden in dit domein ook de kansen zichtbaar voor andere spelers in de markt. Maar met die kansen ontstaan ook vragen: Zelf retail media worden of erop adverteren? In welke fase van de funnel past het en hoe integreer je het in een mediaplan? Wat is nu precies het verschil met marketplaces en Programmatic ads? In dit half uur beslechten we de dilemma's en krijg je antwoorden op wanneer het voor jou tijd is om de volgende stap te zetten.
Buy Verified PayPal Account | Buy Google 5 Star Reviewsusawebmarket
Buy Verified PayPal Account
Looking to buy verified PayPal accounts? Discover 7 expert tips for safely purchasing a verified PayPal account in 2024. Ensure security and reliability for your transactions.
PayPal Services Features-
🟢 Email Access
🟢 Bank Added
🟢 Card Verified
🟢 Full SSN Provided
🟢 Phone Number Access
🟢 Driving License Copy
🟢 Fasted Delivery
Client Satisfaction is Our First priority. Our services is very appropriate to buy. We assume that the first-rate way to purchase our offerings is to order on the website. If you have any worry in our cooperation usually You can order us on Skype or Telegram.
24/7 Hours Reply/Please Contact
usawebmarketEmail: support@usawebmarket.com
Skype: usawebmarket
Telegram: @usawebmarket
WhatsApp: +1(218) 203-5951
USA WEB MARKET is the Best Verified PayPal, Payoneer, Cash App, Skrill, Neteller, Stripe Account and SEO, SMM Service provider.100%Satisfection granted.100% replacement Granted.
"𝑩𝑬𝑮𝑼𝑵 𝑾𝑰𝑻𝑯 𝑻𝑱 𝑰𝑺 𝑯𝑨𝑳𝑭 𝑫𝑶𝑵𝑬"
𝐓𝐉 𝐂𝐨𝐦𝐬 (𝐓𝐉 𝐂𝐨𝐦𝐦𝐮𝐧𝐢𝐜𝐚𝐭𝐢𝐨𝐧𝐬) is a professional event agency that includes experts in the event-organizing market in Vietnam, Korea, and ASEAN countries. We provide unlimited types of events from Music concerts, Fan meetings, and Culture festivals to Corporate events, Internal company events, Golf tournaments, MICE events, and Exhibitions.
𝐓𝐉 𝐂𝐨𝐦𝐬 provides unlimited package services including such as Event organizing, Event planning, Event production, Manpower, PR marketing, Design 2D/3D, VIP protocols, Interpreter agency, etc.
Sports events - Golf competitions/billiards competitions/company sports events: dynamic and challenging
⭐ 𝐅𝐞𝐚𝐭𝐮𝐫𝐞𝐝 𝐩𝐫𝐨𝐣𝐞𝐜𝐭𝐬:
➢ 2024 BAEKHYUN [Lonsdaleite] IN HO CHI MINH
➢ SUPER JUNIOR-L.S.S. THE SHOW : Th3ee Guys in HO CHI MINH
➢FreenBecky 1st Fan Meeting in Vietnam
➢CHILDREN ART EXHIBITION 2024: BEYOND BARRIERS
➢ WOW K-Music Festival 2023
➢ Winner [CROSS] Tour in HCM
➢ Super Show 9 in HCM with Super Junior
➢ HCMC - Gyeongsangbuk-do Culture and Tourism Festival
➢ Korean Vietnam Partnership - Fair with LG
➢ Korean President visits Samsung Electronics R&D Center
➢ Vietnam Food Expo with Lotte Wellfood
"𝐄𝐯𝐞𝐫𝐲 𝐞𝐯𝐞𝐧𝐭 𝐢𝐬 𝐚 𝐬𝐭𝐨𝐫𝐲, 𝐚 𝐬𝐩𝐞𝐜𝐢𝐚𝐥 𝐣𝐨𝐮𝐫𝐧𝐞𝐲. 𝐖𝐞 𝐚𝐥𝐰𝐚𝐲𝐬 𝐛𝐞𝐥𝐢𝐞𝐯𝐞 𝐭𝐡𝐚𝐭 𝐬𝐡𝐨𝐫𝐭𝐥𝐲 𝐲𝐨𝐮 𝐰𝐢𝐥𝐥 𝐛𝐞 𝐚 𝐩𝐚𝐫𝐭 𝐨𝐟 𝐨𝐮𝐫 𝐬𝐭𝐨𝐫𝐢𝐞𝐬."
RMD24 | Debunking the non-endemic revenue myth Marvin Vacquier Droop | First ...BBPMedia1
Marvin neemt je in deze presentatie mee in de voordelen van non-endemic advertising op retail media netwerken. Hij brengt ook de uitdagingen in beeld die de markt op dit moment heeft op het gebied van retail media voor niet-leveranciers.
Retail media wordt gezien als het nieuwe advertising-medium en ook mediabureaus richten massaal retail media-afdelingen op. Merken die niet in de betreffende winkel liggen staan ook nog niet in de rij om op de retail media netwerken te adverteren. Marvin belicht de uitdagingen die er zijn om echt aansluiting te vinden op die markt van non-endemic advertising.
Discover the innovative and creative projects that highlight my journey throu...dylandmeas
Discover the innovative and creative projects that highlight my journey through Full Sail University. Below, you’ll find a collection of my work showcasing my skills and expertise in digital marketing, event planning, and media production.
Skye Residences | Extended Stay Residences Near Toronto Airportmarketingjdass
Experience unparalleled EXTENDED STAY and comfort at Skye Residences located just minutes from Toronto Airport. Discover sophisticated accommodations tailored for discerning travelers.
Website Link :
https://skyeresidences.com/
https://skyeresidences.com/about-us/
https://skyeresidences.com/gallery/
https://skyeresidences.com/rooms/
https://skyeresidences.com/near-by-attractions/
https://skyeresidences.com/commute/
https://skyeresidences.com/contact/
https://skyeresidences.com/queen-suite-with-sofa-bed/
https://skyeresidences.com/queen-suite-with-sofa-bed-and-balcony/
https://skyeresidences.com/queen-suite-with-sofa-bed-accessible/
https://skyeresidences.com/2-bedroom-deluxe-queen-suite-with-sofa-bed/
https://skyeresidences.com/2-bedroom-deluxe-king-queen-suite-with-sofa-bed/
https://skyeresidences.com/2-bedroom-deluxe-queen-suite-with-sofa-bed-accessible/
#Skye Residences Etobicoke, #Skye Residences Near Toronto Airport, #Skye Residences Toronto, #Skye Hotel Toronto, #Skye Hotel Near Toronto Airport, #Hotel Near Toronto Airport, #Near Toronto Airport Accommodation, #Suites Near Toronto Airport, #Etobicoke Suites Near Airport, #Hotel Near Toronto Pearson International Airport, #Toronto Airport Suite Rentals, #Pearson Airport Hotel Suites
India Orthopedic Devices Market: Unlocking Growth Secrets, Trends and Develop...Kumar Satyam
According to TechSci Research report, “India Orthopedic Devices Market -Industry Size, Share, Trends, Competition Forecast & Opportunities, 2030”, the India Orthopedic Devices Market stood at USD 1,280.54 Million in 2024 and is anticipated to grow with a CAGR of 7.84% in the forecast period, 2026-2030F. The India Orthopedic Devices Market is being driven by several factors. The most prominent ones include an increase in the elderly population, who are more prone to orthopedic conditions such as osteoporosis and arthritis. Moreover, the rise in sports injuries and road accidents are also contributing to the demand for orthopedic devices. Advances in technology and the introduction of innovative implants and prosthetics have further propelled the market growth. Additionally, government initiatives aimed at improving healthcare infrastructure and the increasing prevalence of lifestyle diseases have led to an upward trend in orthopedic surgeries, thereby fueling the market demand for these devices.
India Orthopedic Devices Market: Unlocking Growth Secrets, Trends and Develop...
Market Efficiency of Agricultural Commodity Futures in India: A Case of Selected Commodity Derivatives Traded On Ncdex During 2013
1. International Journal of Business and Management Invention
ISSN (Online): 2319 – 8028, ISSN (Print): 2319 – 801X
www.ijbmi.org || Volume 4 Issue 1 || January. 2015 || PP.32-49
www.ijbmi.org 32 | Page
Market Efficiency of Agricultural Commodity Futures in India:
A Case of Selected Commodity Derivatives Traded On Ncdex
During 2013
1,
Mrs. Gouri Prava Samal , 2,
Dr. Anil Kumar Swain , 3,
Dr. Ansuman Sahoo,
4,
Mr.Amit Soni,
1,
Research Scholar, P.G. Department of Commerce, Utkal University, C/O: Gopal Chandra Dhal, At:
Kanheipur, Po: Jajpur Road, Dist: Jajpur, Odisha
2,
Senior Reader in Commerce, P.G. Department of Commerce, Utkal University, Qr. No. C/9, Utkal University
Campus, Vani Vihar, BBSR-751004, Odisha,
3,
Lecturer, IMBA, Department of Business Administration, Utkal University, Vani Vihar, BBSR- 751004,
Odisha,
4,
Assistant Professor, Department of Economics, Shaheed Bhagat Singh College,University of Delhi,
ABSTRACT : In an agriculture-dominated economy like India, farmers face not only yield risk but also price
risk as the Government has reduced its direct market intervention to encourage private participation based on
market forces. This has led to increased exposure of agricultural produce to price and other market risks.
Commodity futures and derivatives have a vital role to play in the price risk management process, especially in
agriculture. Keeping this into consideration, the present paper analyzes the efficiency of agricultural commodity
markets by assessing the relationships between futures prices and spot market prices of three agricultural
commodities i.e. cotton, turmeric and castor seed in India. The efficiency of the futures market for 3 agricultural
commodities, traded at one of the largest commodity exchanges of India, i.e. National Commodity & Derivatives
Exchange Ltd, has been explored by using OLS regression analysis and Granger causality tests. Augmented
Dickey-Fuller test and Vector Auto Regression model are initially applied to examine whether futures and spot
prices are stationary or not and their interdependency level respectively. The hypothesis, that futures prices are
fair predictors of spot prices in India or Indian futures market is efficient has been tested using econometric
software package. Results show that correlation exists significantly in futures and spot prices for all the selected
agricultural commodities. This suggests that there is a long-term relationship between futures and spot prices
for all the selected agricultural commodities. The causality test further distinguishes and categorizes the
commodities based on direction of relationship between futures and spot prices. The analysis of short-term
relationship by causality test indicates that futures markets have stronger ability to predict subsequent spot
prices for cotton, turmeric and castor seed. The results of this study are useful for various stakeholders who are
actively participating in agricultural commodity markets such as producers, traders, commission agents,
commodity exchange participants, regulators and policy makers.
KEYWORDS: Commodity Market, Market Efficiency, Futures price, Spot price, agricultural commodity
I. INTRODUCTION
India has a long history of Futures Trading in Commodities. Trading in Commodity Futures has been in
existence in India from the 19th century with organized trading in cotton, through the establishment of Bombay
Cotton Association Ltd. in 1875. Over a period of time, various other commodities were allowed to be traded in
futures Exchanges. Though, India is a commodity based economy where two-third of the total population
depend on agricultural commodities, startlingly has an under developed commodity market and futures market
trades are merely used as risk management mechanism. Since commodity “futures” trading was permitted by
government in 2003 by lifting prohibition against futures trading in all the commodities and granting recognition
to electronic exchanges namely National Multi Commodity Exchange of India (NMCE), Multi Commodity
Exchange of India (MCX), National Commodity and Derivatives Exchange (NCDEX) as national multi
commodity exchanges, the commodity derivative market in India has witnessed exceptional growth. It was
marked that the Indian commodity market expanded almost by 50 times in a span of 5 years from Rs 665.30
billion in 2002 to Rs 33,753.36 billion in 2007. Further, Indian Commodity Exchange (ICEX) and ACE
Commodity and Derivative Exchanges were also granted recognition as the fourth and fifth multi commodity
exchanges in 2009 and 2010 respectively.
2. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 33 | Page
With the establishment of these exchanges, the commodity futures market has witnessed a steady
growth rate of about 30% by 2010 and touched a volume of Rs 74,156.13 billion with active and wide
participation of traders (ASSOCHAM findings). Though the volume of commodity futures trade increased
rapidly since its launch in 2003, the functioning of the futures market came under analysis during 2008-2009
due to price rise. The role of futures market in stabilize spot prices was widely discussed.Generally, it is said
that the futures market has two important economic functions such as price risk management and price
discovery. Having market participants with various objectives and information, the futures market enables the
current futures price to act as an accurate indicator of the spot price expected at the maturity of the futures
contract. Only an efficient futures market can perform this function. The market is considered as efficient if the
futures price reflects all available information for predicting the future spot price and no participant can make
profit consistently (Fama, 1970). Empirical analyses on market efficiency of commodity futures have been
conducted mainly for developed countries. The present paper especially focuses on India which is one of the
emerging countries with phenomenal growth in its commodity market. It empirically examines whether the
market efficient hypothesis holds in the Indian commodity market.
This paper is organized as follows. The next section briefly reviews the related literatures and discusses
the contribution of this study. Section III and IV explain about the objective and hypothesis of the study
respectively. Section V describes about the sources and properties of the data along with the statistical models.
While the sixth section shows the empirical results of the applied models. In the final section, it summarizes the
main findings of the study in form of conclusion.
II. REVIEW OF LITERATURE
There are numerous studies that have been explored in the ascertainment of whether the price
information is reflected in the spot market or in its underlying futures market under various interval of time
since the introduction of futures in Indian commodity market. Derivatives trading in the commodity market have
been a topic of enthusiasm of research in the field of finance. There have been contrary views on impact of
derivatives trading. A number of studies have been done to study the dynamic relationship between spot price
and futures price of commodities. This study adds to the existing literature in this field using the econometric
tool Vector Autoregressive model, Granger Causality test and OLS regression model to bring conclusiveness to
the subject. A study conducted on “pepper” to examine the price discovery process by applying Granger
causality, Co-integration and Error Correction model found that there was a unidirectional causality from
Futures to Spot prices in the pepper Futures market (Kushankur Dey, Debasish Maitra, 2012).
A study on the price discovery function of Agricultural Commodities in Indian markets found that there
is an efficient price discovery process in place. It also recommended the strengthening of the market regulatory
framework. An emphasis on the autonomy of Forwards Market Commission was made. The study also revealed
about the need for well developed warehousing and market linkages (Sanjay Sehgal, Namita Rajput, Rajeev
Kumar Dua, 2012). So far as the long-term relationship between Futures and Spot Prices for the Agricultural
Commodities is concerned, a study on agricultural commodities like Maize, Chickpea, Black Lentil, Pepper,
Castor Seed, Soybean and Sugar was conducted and found co-integration in their Futures and Spot prices. There
was also a short-term relationship between them and the Futures markets had ability to predict spot prices for
Chickpea, Castor Seed, Soybean and Sugar. It was also found that there was a bi-directional relationship in the
short run among the Maize, Black Lentil and Pepper (Jabir Ali, Kriti Bardhan Gupta, 2011).
So far as the efficiency of Indian commodity market in terms of price formation of agricultural
commodities traded on commodity exchanges is concerned, one study by applying co- integration analysis and
GARCH model on agricultural commodities, confirmed that the co- integration between commodity futures and
commodity spot market indices is present. It further emphasized that with the information of any one index,
hedging can be done on other commodity indices. It also found new information as an important factor to
predict the future value of commodities (Ranajit and Asima, 2010).A study on price discovery and volatility has
clearly suggested that futures trading in agricultural goods and especially in food items have neither resulted in
price discovery nor less of volatility in food prices. Further, it is observed a steep increase in spot prices for
major food items along with a granger causal link from futures to spot prices for commodities on which futures
are traded (Sen and Paul, 2010).An examination conducted on the role of futures markets in terms of price
discovery process and rate of convergence of information from one market to another by taking six
commodities- gold, silver, nickel, copper and Gram (Chana) by using a two-regime threshold vector auto-
regression (TVAR) and a two-regime threshold auto-regression method.
3. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 34 | Page
The result supported the existence of price discovery process in Indian commodity exchanges and a
high rate of convergence of information in case of metals and slow convergence of information in case of
agricultural commodities has been found between different markets (Vishwanathan and Archana, 2010).In order
to determine the direction of information flows between Spot and Futures prices in the agricultural commodities,
a study was conducted using Granger Causality test and it was found that Spot prices are generally discovered in
Futures Markets. It also argued for establishment of sufficient food grain reserves globally in order to fight the
volatility in markets (M Hernandez, Torero, 2009).
So far as the correlation between spot price and futures price is concerned, it is found that the
commodity spot and futures prices had closely tracked each other in selected agri-commodities and no
significant volatility has been found in the prices of futures and spot contracts of those agricultural commodities
(Gurbandani and Rao, 2009). With an aim to analyze the effect of futures trading on inflation, a study
emphasized that trading in commodity futures contributed to an increase in inflation as result showed that during
the time period of futures trading the spot price of selected commodities and their volatilities had posted
remarkable increase (Golka and Tulsi (2008).
A study on hedging efficiency of Indian commodity futures market found that it has failed to provide
an efficient hedge against the price risk particularly in agricultural commodities. The results showed the
inefficiency of agricultural commodity futures market in terms of price discovery due to the non integration of
futures and the spot market. Exchange specific factors attributed to the market imperfection had found like non
awareness of futures market among farmers, infrequent trading, thin volume and low market depth, lack of
effective participation of members etc. It also suggested about the implementation of Government driven policy
measures to raise the commodity futures market as a vibrant segment for price risk management in Indian
Agriculture sector (R. Salvadi and P. Ramasundaram, 2008).In an examination about the hedging effectiveness
of futures contract on a financial asset and commodities in Indian markets by applying different time series
models, it is found that there is presence of necessary co-integration between the spot and derivatives markets
and have shown that both stock market and commodity derivatives markets in India provide a reasonably high
level of hedging effectiveness (Kumar, Singh and Pandey, 2008).
An analysis on the effectiveness of commodity futures market through regression analysis by taking
both spot and future prices of commodities has been done and the result proved the high level of volatility in
both spot and futures prices of commodities. Positive coefficients for agricultural commodities in dissimilar
equations supported the effectiveness of commodity market in hedging the price risk (Jabir and Kriti, 2007).To
determine the interdependency among spot market and futures market and factors for success of futures market,
a study stressed that the growth of commodity spot market depends upon the growth of commodity futures
market in developing countries and certified warehouses, centralized spot prices and effective margin system
were found as the important institutional factors for successful commodity futures market (Bharat and
Jatinderbir (2007).
Another study on operational efficiency of commodity futures market in India found co integration of
commodity futures and spot prices, enlightening the right direction of achieving the improved operational
efficiency at a slow rate. Further, it emphasized that Indian commodity market has lack of liquidity in some
commodities like pepper, sugar and groundnuts. In other commodities hedging proves to be effective. For some
commodities the volatility in futures price has been considerably less than the spot price indicating an efficient
utilization of information (S.M, 2007).So far as function of Indian commodity futures market is concerned, a
study observed the dependence of commodity futures market on spot market for price determination along with
increasing inflation due to trade volume of commodity futures. The study also concluded that futures market is
not performing the function of price discovery and it is a weak market in short run Gurpreet and Gaurav (2006).
A study on the efficiency of Indian futures market observed that the wheat futures market is even weak-form
inefficient and fails to play the role of spot price discovery. Spot market has found to capture the market
information faster and therefore expected to play the leading role. This inefficiency of the futures market may be
attributed to the lack of necessary data to truly capture the actual lead-lag relationship between the spot and
futures market. It is also suggested that the trading volume in commodity futures market, along with other
factors, have a significant impact on country‟s inflationary pressure (Raizada and Sahi, 2006). On an attempt to
investigate the price discovery in six Indian commodity exchanges for five commodities, a study has been
conducted by using the daily futures and comparable ready price and also the ratio of standard deviations of spot
and futures rates for empirical testing of ability of futures markets to incorporate information efficiently.
Besides, the study has empirically analyzed the efficiency of spot and futures markets by employing the
4. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 35 | Page
Johansen Co integration Technique. The results showed the inability of futures market to fully
incorporate information and confirmed inefficiency of futures market. However, it is concluded that the Indian
agricultural commodities futures markets are not yet mature and efficient (Kumar and Sunil, 2004).For
determining the efficiency of commodity futures market, one of the studies indicated about the inefficiency of
commodity futures market in terms of providing hedge against price risk by observing the difference between
futures and spot prices. It instituted many factors like lack of participation of trading members, low market
depth and thin volume with Government‟s interference in Commodity markets etc. as major evils for inefficient
price risk management (K.G, 2002). There is enormous amount of literature on the concerned subject
considering the world-wide commodity market. However, it is comparatively less in case of agricultural
commodities, especially in agricultural based economy like India and also during the pre-mature phase of
futures market. In such circumstances, this study carries a significant importance to re-look on the efficiency of
agricultural commodity market in India. Therefore, the broad objective of this study is mentioned below.
III. OBJECTIVE OF THE STUDY
To test the market efficiency of selected agricultural commodity derivatives in India.
IV. HYPOTHESIS
(H0): Agricultural commodity market in India is not efficient.
(H1): Agricultural commodity market in India is efficient.
In all, 23 Future Contracts for the three commodities (Castor, Cotton and Turmeric) are analyzed for the period
of study. Vector Auto Regression) VAR Analysis, Granger Causality test and OLS regression model are used to
test the efficiency of the agricultural commodity market in India.
V. DATA AND METHODOLOGY
Data for testing the market efficiency of futures market In India, NCDEX is considered as prime
national level commodity exchange for agricultural commodities and hence selected for the study and the time
frame chosen for the study is the future contracts expiring during the period January 2013 to December 2013.
The sample used in the study consists of three agricultural commodities traded on National Commodity
Exchange of India, Mumbai i.e. Cotton, Turmeric and Castor Seeds. The data comprises of daily closing spot
and futures prices of the sample commodities during the period (January to Dec of the year 2013) which were
obtained from the home page of NCDEX (www.ncdex.com). Table 1 below presents the details of the sample
contracts considered for the study.
Commodity Contract (No of Months) No of Observations
Castor seed
January,2013 (5) 71
February,2013 (5) 76
March,2013 (5) 77
April,2013 (5) 78
May,2013 (5) 74
June,2013 (5) 77
July,2013 (5) 78
August,2013 (5) 80
September,2013 (5) 78
October,2013 (5) 74
November,2013 (5) 67
Cotton
October,2013 (7) 129
November,2013 (8) 146
December,2013 (9) 168
Turmeric
April,2013 (7) 107
May,2013 (8) 123
June,2013 (8) 129
July,2013 (8) 135
August,2013 (5) 81
September,2013 (5) 84
October,2013 (5) 79
November,2013 (5) 75
December,2013 (5) 74
Daily Price Return on all the commodities, both in spot and futures market, is defined as usual i.e. the first
difference in the log of commodity price, such that R S/F, t = ln (P S/F, t ) – ln (P S/F, t-1 ). P represents the daily price
information of the respective commodities, in Spot (S) or Futures (F) market.
5. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 36 | Page
VI. METHODOLOGY FOR TESTING THE EFFICIENCY OF FUTURES MARKET
An efficient agricultural commodity market is one in which the spot market “fully reflects” the
available information (Fama 1970); i.e. an efficient futures market should send price signals to the spot market
immediately to eliminate supernormal profit from arbitraging on price differences or at maturity, the future
prices become equivalent to spot prices except for some transaction costs. With cost-of-carry (stochastic
convenient yield) and no-arbitrage profit expectation, the efficiency in Indian agricultural futures markets can be
represented as:
Ft, t-k = St, t-k + d t ------------------------------------------------------------------- (1)
Where d t is the cost-of-carry, Ft, t-k is the futures price at time t for delivery at time t-k, and St-k is the expected
spot price at maturity of the contract, i.e. time t-k. If the cost-of-carry is stationary or zero, th -arbitrage model
implies that the futures price is co-integrated with the spot price. Two critical criteria must be met to ensure
long-term efficiency of Indian commodity futures markets i.e. S and F must be integrated (stationary) to the
same order and they must also be co-integrated, otherwise S and F will tend to drift apart over time.
Stationarity Test : Stationarity test is important because regressing one non-stationary series on another may
produce some spurious results. Therefore, the variables expected to be used in a regression model which should
posses stationarity. Even if most of the underlying price series are found to be non-stationary, i.e. I (1), their first
difference, i.e. the price returns are found to be stationary, i.e. I (0). Therefore, price returns, not the actual
prices, are considered to test the interrelationship among the spot and futures market. Augmented Dickey-Fuller
(ADF) test has been carried out to test the stationarity of the price series. The ADF approach controls for higher-
order correlation by adding lagged difference terms of the dependent variable to the right-hand side of the
regression. The ADF test is specified here as follows:
ΔYt = b0 + βYt-1 + μ1Yt-1 + μ2Yt-2 + …….. + μpYt-p + εt …………………………… (2)
where, Yt represents time series to be tested, b0 is the intercept term, β is the coefficient of interest in the unit
root test, μi is the parameter of the augmented lagged first difference of Yt to represent the pth
order
autoregressive process, and εt is the white noise error term. In carrying out the unit root test, it is required to test
the following hypothesis:
H0: α=0 (non stationary)
H1: α≠0 (stationary)
If the null hypothesis is rejected, this means that the time series data is stationary. The decision criteria involve
comparing the computed values of Augmented Dickey-Fuller „T‟ statistic with the critical values for the
rejection of a hypothesis for a unit root. If the computed ADF statistic is less relative to the critical values, then
the null hypothesis of non-stationarity in time series variables can not be rejected.
Vector Autoregressive Model : After testing for stationarity, the second step is to identify the
interdependencies among spot prices and futures prices of selected commodities by using VAR model. All
variables in a VAR are treated symmetrically in a structural sense and each variable has an equation explaining
its evolution based on its own lags and the lags of the other model variables. A VAR model describes the
evolution of a set of k variables (called endogenous variables) over the same sample period (t = 1... T) as
a linear function of only their past values. The variables are collected in a k × 1 vector yt, which has
the i th
element, yi,t, the time t observation of the i th
variable. A p-th order VAR, denoted VAR (p), is
---------------------------- (3)
where the l-periods back observation yt−l is called the l-th lag of y, c is a k × 1 vector of constants, Ai is a
time-invariant k × k matrix and et is a k × 1 vector of error term.
Causality Test : The Granger-causality test is used to investigate direction of causation between futures price
and spot price. The outcome from the Granger-causality test is utilized to determine whether the variables under
study can be used to predict each other or not. Granger proposed that if causal relationship exists between
variables, these variables can be used to predict each other. The causality test helps to ascertain whether a uni-
directional or bi-directional relationship exists between spot price and futures price. To achieve this, the study
employs the granger-causality statistic to test the statistical causality between the spot price and futures price of
6. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 37 | Page
3 commodities (Castor, Cotton and Turmeric) as well as to determine the predictive content of one variable
beyond that inherent in the explanatory variable itself. The study uses the daily returns of spot (RSt) and futures
(RFt) of 3 commodities in percentage form for the Granger causality test. More specifically, the Granger
causality test involved analyzing the relationship between RSt and p lagged values of RSt and RFt by estimating
the regression models:
------------------------- (4)
------------------------ (5)
F-test is used to test whether RFt does not Granger-cause RSt by examining the null hypothesis that the lagged
coefficients of RFt are equal to zero. A similar F-test is used to test the opposite effect i.e. whether RSt does not
Granger-cause RFt.
OLS Regression Analysis
Ordinary Least Squares (OLS) is a statistical technique which attempts to find the function which most closely
approximates the data. In general terms, it is an approach to fitting a model to the observed data. In technical
terms, the Least Squares method is used to fit a straight line through a set of data-points, so that the sum of the
squared vertical distances called residuals from the actual data-points is minimized. At a very basic level, the
relationship between a continuous response variable (Y) and a continuous explanatory variable (X) may be
represented using a line of best-fit, where Y is predicted, at least to some extent, by X. If this relationship is
linear, it may be appropriately represented mathematically using the straight line equation as follows.
Y = α + βx ---------------------------------------- (6)
Where, α indicates the value of Y when X is equal to zero (also known as the intercept) and β indicates the slope
of the line (also known as the regression coefficient). The regression coefficient β describes the change in Y that
is associated with a unit change in X.
VI. EMPIRICAL FINDINGS
Results of Stationarity Test
The computed values of Augmented Dickey-Fuller „T‟ statistic for all twenty three contracts of castor, cotton
and turmeric are presented in table 2 below at 5% level of significance. It may be seen from the results of unit
root tests for the three selected commodities that both the spot and futures prices are not stationary but become
stationary at the first difference. The results are characterized as I (1) or first difference stationary. This satisfies
the first criterion of market efficiency definition.
Table No.2 ADF test for stationary
Year Commodity Contract (No of Months)
No of
Observations
Spot 'T'
statistics
Futures
'T'
statistics
Critical
'T' at
5%
2013 Castor seed
January,2013 (5) 71 -7.00 -6.74 -3.48
February,2013 (5) 76 -6.93 -7.45 -3.47
March,2013 (5) 77 -6.65 -6.71 -3.47
April,2013 (5) 78 -6.72 -7.01 -3.47
May,2013 (5) 74 -7.75 -7.73 -3.47
June,2013 (5) 77 -7.37 -7.37 -3.47
July,2013 (5) 78 -7.81 -7.87 -3.47
August,2013 (5) 80 -7.57 -8.14 -3.47
7. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 38 | Page
September,2013 (5) 78 -4.87 -10.60 -3.47
October,2013 (5) 74 -10.94 -11.10 -3.47
November,2013 (5) 67 -10.16 -10.06 -3.48
Cotton
October,2013 (7) 129 -10.86 -11.51 -3.45
November,2013 (8) 146 -11.44 -12.03 -3.44
December,2013 (9) 168 -12.68 -12.96 -3.44
Turmeric
April,2013 (7) 107 -6.80 -9.37 -3.45
May,2013 (8) 123 -7.50 -10.19 -3.45
June,2013 (8) 129 -8.08 -10.72 -3.45
July,2013 (8) 135 -7.81 -7.87 -3.47
August,2013 (5) 81 -10.49 -10.15 -3.47
September,2013 (5) 84 -10.34 -10.19 -3.46
October,2013 (5) 79 -9.60 -8.81 -3.47
November,2013 (5) 75 -8.22 -8.23 -3.47
December,2013 (5) 74 -6.46 -8.18 -3.47
Source: Authors‟ estimations.
As both variables are stationary, VAR (Vector Auto Regression) equations are taken in level form to test the
interdependency of the two variables i.e. spot price and futures price of the selected commodities. Prior to
estimating VAR equations, it is required to know the optimal lag of endogenous variables (here both variables)
used as independent variables in order to have the best valid results. Therefore, test for optimal lags are
conducted. Table no.3 shows the obtained log-likelihood (LL), likelihood ratio (LR), final prediction error
(FPE) and various information criteria estimates from the models estimated with different lags for all 23
contracts. By theory, a model is better when LL and LR are higher and FPE and ICs are lower. Results show
that the optimal lag is 1 for 15 contracts, 2 for 7 contracts and 3 for one contract only.
9. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 40 | Page
Table no. 3: Selection of optimal lag
Source: Authors’ estimations.
Note: Lags corresponding to highest number of ‘* ‘marked criterions are considered as optimum lag.
As the next step, VAR model is estimated for all the contracts. The results of VAR model is presented in
Annexure 1. The outcomes of VAR model can be clearly understood from the following table.
Table No. 4: Summary of VAR Model
castor Cotton turmeric
Contract (No of
Months)
Equation
of
lag of
spot
lag of
future
lag of
spot
lag of
future
lag of
spot
lag of
future
January,2013
future n p
Spot n p
February,2013
future 0 0
Spot n p
March,2013
future n p
Spot n p
April,2013
future 0 p 0 0
Spot n p p p
May,2013
future 0 0 0 0
Spot n p 0 p
June,2013
future 0 0 0 0
Spot n p p p
July,2013
future 0 0 0 0
Spot n p p p
August,2013
future 0 0 0 0
Spot 0 p n p
September,2013
future 0 0 0 0
Spot 0 0 n p
October,2013
future 0 0 0 0 0 0
Spot 0 0 0 0 n p
November,2013
future 0 0 0 P 0 0
Spot 0 0 p N 0 p
December,2013
future p N 0 0
Spot p N 0 p
data not available
n:explanatory variable significantly influences dependent variable in negative direction
p:explanatory variable significantly influences dependent variable in positive direction
0;explanatory variable does not significantly influence dependent variable
October,2013 (5)
0 -270.133 4.86049 7.25689 7.28157 7.31869
1 -258.419 23.429* 3.95705* 7.05117* 7.1252* 7.23657*
November,2013 (5)
0
-253.886 4.62879 7.20805 7.23339* 7.27178*
1
-248.107 11.558* 4.403* 7.15794* 7.23398 7.34915
December,2013 (5)
0 -232.894 2.81652 6.71125 6.73677 6.77549
1 -223.248 19.291 2.39721 6.54995 6.62651* 6.74268*
2 -218.065 10.366* 2.31842* 6.51615* 6.64374 6.83736
10. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 41 | Page
The above table clearly depicts that there are 3 contracts in which lag of spot influences futures in
negative direction. In one contract only i.e. cotton (Nov.) in positive direction. Otherwise there is no influence.
But there are 17 contracts in which lag of futures influences spot in positive direction. In two contracts i.e.
cotton (Nov. & Dec.) in negative direction. Only in four contracts it has no influence on spot. Thus it can be
concluded that lag value of futures has significant influence on spot. To validate this result, test of stability and
adequacy has been conducted.
Test of Adequacy of the model: An equation should have enough number of lag values so that any remaining
significant lag should not become part of residual. It is ensured by test of no autocorrelation in the residuals. The
result of adequacy test is presented in Table 5 below. From the table it can be clearly seen that null hypothesis of
no autocorrelation in residuals is not rejected in all the contracts except November contract for Cotton. Thus, it
can be recapitulated that the model with optimum lag value is adequate.
Table No. 5: Test of adequacy
Lagrange-multiplier test for adequacy
H0: no autocorrelation at following lag order
Commodity Contract (No of Months) lag chi2 p value
Castor seed
January,2013 (5) 1 2.19 0.70
February,2013 (5) 1 4.78 0.31
March,2013 (5) 1 3.76 0.44
April,2013 (5) 1 1.34 0.85
May,2013 (5) 1 6.13 0.19
June,2013 (5) 1 1.58 0.81
July,2013 (5) 1 4.98 0.29
August,2013 (5) 1 1.4 0.84
September,2013 (5)
1 4.56 0.33
2 4.75 0.31
October,2013 (5) 1 5.92 0.21
November,2013 (5) 1 5.31 0.26
Cotton
October,2013 (7)
1 6.98 0.14
2 9.04 0.06
November,2013 (8)
1 4.07 0.40
2 12.16 0.02
December,2013 (9)
1 0.82 0.93
2 0.49 0.97
Turmeric
April,2013 (7) 1 4.36 0.36
May,2013 (8) 1 6.59 0.16
June,2013 (8)
1 6.29 0.18
2 2.08 0.72
July,2013 (8)
1 4.01 0.01
2 2.23 0.69
August,2013 (5)
1 3.96 0.41
2 4.99 0.29
September,2013 (5) 1 6.76 0.15
October,2013 (5) 1 4.82 0.31
November,2013 (5) 1 3.19 0.52
December,2013 (5)
1 4.61 0.33
2 7.13 0.13
Source: Authors‟ estimations.
Test of stability of VAR model: This test is conducted to establish whether the effect of lags die with passage
of time. Otherwise, returns of spot/future contracts would be either highly negative or highly positive and so, the
11. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 42 | Page
model will explode. The outcome of stability test is given in Table no. 6. As per rule, VAR satisfies stability
condition as all the eigenvalues lie inside the unit circle which is clearly depicted in the table below.
Table No. 6: Test of stability
Commodity Contract (No of Months) Eigen value Modulus
Castor seed
January,2013 (5)
.0324 + .4302 0.431
.0324 - .4302 0.431
February,2013 (5)
-0.013 + 0.271i 0.271
-0.013 - 0.271i 0.271
March,2013 (5)
.053 + .298i 0.303
.053 - .298i 0.303
April,2013 (5)
0.034 + 0.197i 0.200
0.034 - 0.197i 0.200
May,2013 (5)
-0.358 0.358
0.054 0.054
June,2013 (5)
-0.366 0.367
0.187 0.187
July,2013 (5)
-0.491 0.491
0.179 0.179
August,2013 (5)
-0.480 0.480
0.197 0.197
September,2013 (5)
-0.567 0.567
0.454 0.454
-0.264 + .367 0.452
-0.264 - .367 0.452
October,2013 (5)
-0.416 0.416
-0.237 0.237
November,2013 (5)
-0.444 0.444
-0.207 0.207
Cotton
October,2013 (7)
0.332 + 0.559 0.561
0.332 - 0.559 0.561
-0.479 + 0.269 0.549
-0.479 - 0.269 0.549
0.363 + 0.099 0.376
0.363 - 0.099 0.376
November,2013 (8)
0.600 0.600
- 0.337 + 0.472i 0.581
- 0.337 - 0.472i 0.581
- 0.438 0.438
0.308 0.308
- 0.029 0.029
December,2013 (9)
0.519 0.519
-.244 + .452 0.514
-.244 - .452 0.514
-0.392 0.392
0.316 0.316
-0.065 0.065
Turmeric
April,2013 (7)
0.351 0.351
- 0.129 0.129
May,2013 (8)
0.275 0.275
- 0.121 0.121
12. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 43 | Page
June,2013 (8)
0.584 0.584
-0.443 0.443
- 0.047 + 0.242i 0.247
- 0.047 - 0.242i 0.247
July,2013 (8)
0.574 0.574
-0.344 + 0.109i 0.361
-0.344 - 0.109i 0.361
0.109 0.109
August,2013 (5)
- 0.487 0.487
-0.227 + 0.380i 0.443
-0.227 - 0.380i 0.443
0.415 0.415
September,2013 (5)
- 0.222 + 0.259i 0.341
- 0.222 - 0.259i 0.341
October,2013 (5)
-0.144 + 0.111i 0.182
-0.144 - 0.111i 0.182
November,2013 (5)
-0.255 0.255
0.119 0.119
December,2013 (5)
- 0.266 + 0.356i 0.444
- 0.266 - 0.356i 0.444
0.419 0.419
-0.069 0.069
Source: Authors‟ estimations.
To reiterate the above results a summary of relationship was examined through Granger Causality test and
results of Table No. 7 reflect the above inference.
Results of Causality Test
The Granger causality test result is reported in table no.7. The upper and lower rows of the F statistic column
reports the null hypotheses that spot price does not Granger-cause futures price and futures price does not
Granger-cause spot price respectively. Generally, the null hypothesis that the futures market prices do not
Granger-cause the prices in spot market prices is uniformly rejected at 1%, 5% and 10% significance level for
18 out of 23 contracts. The implication is that the futures markets have stronger ability to discover spot prices or
spot market prices are influenced by the futures market prices for Castor, cotton and turmeric. The table also
reports bidirectional causality relationship (F↔S) results only for two contracts of castor seed during 2013.
Only in case of December, 2013 contract of turmeric, it is proved that do spot price Granger-causes futures
price. Further, in four contracts, the test shows no directional relationship between the spot and futures prices of
castor seed and cotton during the sample period. Thus, examination of the F statistics for all contracts for the
above three commodities indicates strong evidence that futures market prices dominate or lead spot market
prices or the spot prices for these commodities are discovered in the futures markets.
Table No. 7: Granger Causality Test
Year Commodity
Contract (No of
Months) Hypothesis F-statistic Prob. Direction Relation
2013 Castor seed
January,2013 (5)
S /→ F 10.7992* 0.0016
Bidirectional F↔S
F /→ S 34.2518* 2.00E-07
February,2013 (5)
S /→ F 2.31671 0.1324
Unidirectional F→S
F /→ S 17.5377* 8.00E-05
March,2013 (5)
S /→ F 4.93233** 0.0295
Bidirectional F↔S
F /→ S 25.6354* 3.00E-06
April,2013 (5)
S /→ F 1.79774 0.1731
Unidirectional F→S
F /→ S 7.03826* 0.0016
May,2013 (5)
S /→ F 0.01264 0.9108
Unidirectional F→S
F /→ S 8.30833* 0.0052
13. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 44 | Page
June,2013 (5)
S /→ F 0.0501 0.8235
Unidirectional F→S
F /→ S 18.9247* 4.00E-05
July,2013 (5)
S /→ F 0.81577 0.3694
Unidirectional F→S
F /→ S 13.7158* 0.0004
August,2013 (5)
S /→ F 1.75529 0.1892
Unidirectional F→S
F /→ S 10.2783* 0.002
September,2013 (5)
S /→ F 1.05419 0.3539
No direction
S--X--
F
F--X--
SF /→ S 0.30262 0.7398
October,2013 (5)
S /→ F 0.15318 0.6967
No direction
S--X--
F
F--X--
SF /→ S 0.27643 0.6007
November,2013 (5)
S /→ F 0.02106 0.8851
No direction
S--X--
F
F--X--
SF /→ S 1.1027 0.2977
Cotton
October,2013 (7)
S /→ F 0.30295 0.7392
No direction
S--X--
F
F--X--
SF /→ S 0.23984 0.7871
November,2013 (8)
S /→ F 0.55029 0.5781
Unidirectional F→S
F /→ S 4.0297** 0.0199
December,2013 (9)
S /→ F 1.26317 0.2855
Unidirectional F→S
F /→ S 3.96235** 0.0209
Turmeric
April,2013 (7)
S /→ F 1.43902 0.2331
Unidirectional F→S
F /→ S 10.4727* 0.0016
May,2013 (8)
S /→ F 0.76974 0.3821
Unidirectional F→S
F /→ S 9.32296* 0.0028
June,2013 (8)
S /→ F 0.49589 0.6103
Unidirectional F→S
F /→ S 8.83199* 0.0003
July,2013 (8)
S /→ F 0.81577 0.3694
Unidirectional F→S
F /→ S 13.7158* 0.0004
August,2013 (5)
S /→ F 1.34729 0.2493
Unidirectional F→S
F /→ S 16.2243* 0.0001
September,2013 (5)
S /→ F 2.74958 0.1012
Unidirectional F→S
F /→ S 20.1085* 2.00E-05
October,2013 (5)
S /→ F 0.4695 0.4953
Unidirectional F→S
F /→ S 19.7835* 3.00E-05
November,2013 (5)
S /→ F 0.26785 0.6064
Unidirectional F→S
F /→ S 6.60139** 0.0123
December,2013 (5)
S /→ F 3.21066*** 0.0775
Unidirectional S→ F
F /→ S 2.03626 0.158
Source: Authors’ estimations.
Note: *1%, **5%, ***10% significance. F-statistic reported.
In the last column F and S indicate Futures and Spot prices while the symbol → and --X-- respectively
indicate
Granger cause and does not Granger cause.
Co integration/OLS regression analysis: It is popular and useful to go for co integration analysis to see
relationship among variables in time series data because many of time series variables are not stationary and
14. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 45 | Page
with non stationary variables, OLS results may not be valid if variables are not moving in tandem or not co
integrated. However, if variables are stationary, then it is more efficient to do OLS regression (in line of Engle-
Granger test of co integration) than Co integration analysis through Vector Error correction model using
Maximum Likelihood Estimation. As the variables in the present study are stationary, the OLS regression has
been used to analyze relationship between current spot and futures prices and returns. The OLS regression
results are shown in Table No.8 below. From the table, it can be seen that the results for all the contracts clearly
indicate highly significant direct relationship among both the prices and their returns. Thus it can be concluded
that spot and futures prices are highly correlated and have causal relationships for current and lagged values of
both variables. This satisfies the second criterion of market efficiency definition.
Table No.8: OLS Regression
Explanatory variable
Commodity Contract (No of Months) Equation for spot Future
Castor seed
January,2013 (5)
spot 0.64 (0.05)
future 1.13 (0.098)
February,2013 (5)
spot 0.65 (0.05)
future 1.01 (0.074)
March,2013 (5)
spot 0.71 (0.05)
future 0.98 (0.066)
April,2013 (5) spot
0.69 (0.05)
future 0.99 (0.06)
May,2013 (5)
spot 0.48 (0.05)
future 1.2 (0.14)
June,2013 (5)
spot 0.54 (0.05)
future 1.08 (0.1)
July,2013 (5)
spot 0.49 (0.05)
future 1.07 (0.12)
August,2013 (5)
spot 0.45 (0.05)
future 1.1 (0.12)
September,2013 (5)
spot 0.5 (0.04)
future 1.38 (0.1)
October,2013 (5)
spot 0.48 (0.04)
future 1.35 (0.11)
November,2013 (5)
spot 0.46 (0.04)
future 1.37 (0.12)
Cotton
October,2013 (7)
spot 0.82 (0.03)
future 1 (0.03)
November,2013 (8)
spot 0.61 (0.04)
future 0.97 (0.09)
December,2013 (9)
spot 0.6 (0.11)
future 0.96 (0.1)
Turmeric
April,2013 (7)
spot 0.35 (0.05)
future 0.87 (0.17)
May,2013 (8)
spot 0.40 (0.04)
future 0.99 (0.11)
June,2013 (8)
spot 0.43 (0.05)
future 0.96 (0.13)
July,2013 (8)
spot 0.46 (0.05)
future 0.92 (0.10)
August,2013 (5)
spot 0.34 (0.05)
future 0.99 (0.25)
15. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 46 | Page
September,2013 (5) spot 0.31 (0.05)
future 1.08 (0.32)
October,2013 (5)
spot 0.29 (0.6)
future 0.84 (0.29)
November,2013 (5)
spot 0.35 (0.05)
future 1.05 (0.16)
December,2013 (5)
spot 0.31 (0.04)
future 1.46 (0.19)
Source: Authors’ estimations.
Note: Coefficients in bold are significant at 1% level of significance.
Std error is given in parentheses.
VII. CONCLUSION
The present paper empirically analyzes whether the growing Indian commodity futures market satisfies
market efficiency condition. Based on the theoretical and empirical literature that is reviewed in this study, the
Efficient Market Hypothesis in the context of an emerging commodity market namely NCDEX has been
investigated. The study examined the efficiency of three agricultural commodity futures traded on NCDEX
using daily data of closing price for the period of 12 months. It has examined the hypothesis over 3 lag period in
order to analyze whether the NCDEX exhibits a trend of market efficiency overtime. Different statistical tools
namely Vector Auto Regression model, OLS regression model and Granger Causality test are used in this study.
The empirical results of the study indicate significant evidence of linear dependency for all three
agricultural commodities. The VAR model clearly indicates that the lag value of futures has significant
influence on spot. To validate this result, test of stability and adequacy has been conducted and it is proved that
the results of VAR model is adequate and stable. The Granger Causality test for the full sample period indicates
strong evidence that futures market prices dominate spot market prices or the spot prices for sample
commodities are discovered in the futures markets. Finally, the OLS regression analysis has been made and it is
found that the spot and futures prices for all the contracts are highly correlated as the corresponding coefficient
values are significant at 1% level of significance. Thus, from all the results it can be summarized that both the
variables i.e. spot price and futures price of sample commodities are integrated as well as co- integrated proving
the fact that the Indian commodity markets for the sample commodities are efficient. There are some limitations
inherent in the present study. The study is limited to the period from 1st January, 2013 to 31st Dec, 2013.
Further, the number of commodities is limited to only three from only one commodity exchange. Finally, data
availability is a major issue. The data that was available was in some cases recorded once and in other cases
recorded twice daily. Therefore, only the prices which were nearest to the closing time were chosen. Several
natural processes such as seasonal cycles based on harvests, monsoons, depressions, and other weather events
would also be expected to have an impact on price discovery efficiency of commodity markets. This factor can
be considered for further study in this area.
17. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 48 | Page
ic FP 0.22 (0.22) - - 0.01 (0.95) - -
May,2013 (8)
SP 0.15 (0.15) - - 0.21 (0.00) - -
FP 0.16 (0.37) - - 0.00 (0.99) - -
June,2013 (8)
SP
-0.00
(0.99)
0.29
(0.00) - 0.28 (0.00)
-0.06
(0.44) -
FP
0.02 (0.91)
0.17
(0.32) - 0.05 (0.69)
-0.09
(0.48) -
July,2013 (8)
SP
-0.08
(0.51)
0.34
(0.00) - 0.35 (0.00)
-0.10
(0.18) -
FP
-0.12
(0.55)
0.17
(0.28) - 0.07 (0.55)
-0.03
(0.82) -
August,2013
(5)
SP
-0.50
(0.00)
0.11
(0.41) - 0.34 (0.00)
0.09
(0.28) -
FP
-0.19
(0.49)
0.36
(0.15) - -0.02 (0.87)
-0.06
(0.73) -
September,201
3 (5)
SP
-0.45
(0.00) - - 0.29 (0.00) - -
FP
-0.41
(0.09) - - 0.01 (0.95) - -
October,2013
(5)
SP
-0.33
(0.00) - - 0.30 (0.00) - -
FP
- 0.15
(0.48) - - 0.04 (0.75) - -
November,201
3 (5)
SP
-0.15
(0.28) 0.21 (0.01)
-0.15
(0.28)
FP 0.13 (0.59) 0.02 (0.92)
0.13
(0.59)
December,201
3 (5)
SP
0.01 (0.96)
-0.02
(0.90) - 0.14 (0.05)
0.12
(0.09) -
FP
0.65 (0.08)
0.05
(0.88) - -0.19 (0.24)
-0.06
(0.74) -
Source: Authors‟ estimations.
Note: Coefficients in bold are significant at 5% level of significance.
p value is given in parentheses
REFERENCES
[1] Ali, Jabir and Gupta, Kriti Bardhan (2007), “Agricultural Price Volatility and Effectiveness of Commodity Futures Markets in
India”, Indian Journal of Agricultural Economics. Vol. 62, No.3, pp. 537.
[2] Alphonse, Pascal (2000). Efficient Price Discovery In Stock Index Cash And Futures Markets. Annales d'Economie et de
Statistique. Retrieved from:http://annales.ensae.fr/anciens/n60/vol60-08.pdf as on August 13, 2014.
[3] Asche, Frank & Guttormsen, Atle G. (2002). Lead-Lag Relationships between Futures and Spot Prices. Working Paper no. 2/02.
Retrieved from: http://bora.nhh.no/bitstream/2330/898/1/A02_02.pdf as on July 25, 2014.
[4] Aydemir, Ogujhan & Demirhan, Erdal (2009). The Relationship between Stock Prices and Exchange Rates Evidence from Turkey.
International Research Journal of Finance and Economics. 23, 1-7.
[5] Bose, Suchismita (2007). Contribution of Indian index futures to price formation in the stock market. Money & Finance. Retrieved
from: http://ssrn.com/abstract=1017477. 39-56 as on July 20, 2014.
[6] Brooks, Chris (2002), Introductory Econometrics for Finance (3rd ed.). Modeling Long-run Relationships in Finance. 367-436.
[7] Chakrabarty, Ranajit and Sarkar Asima (2010), “Efficiency of the Indian Stock Market with Focus on Some Agricultural Product”,
Paradigm Vol.14 No. 1, pp. 85-96.
[8] Chan, K (1992). A further analysis of the lead-lag relationship between the cash market and stock index futures market. Review of
Financial Studies. 5 (1), 123-152.
[9] Debashish, Sathya Swaroop & Mishra, Bishnupriya (2008). Econometric Analysis of Lead-Lag Relationship between NSE Nifty
and its Derivatives Contracts. Indian Management Studies Journal. 12(2), 81-100.
[10] Easwaran R. Salvadi and Ramasundaram P. (2008), “Whether Commodity Futures Market in Agriculture is Efficient in Price
Discovery? - An Economics Analysis”, Agricultural Economics Research Review, Vol. 21, Conference Issue, pp. 337-344.
[11] Engle, Robert F. & Granger, C.W.G. (1987). Cointegration and Error Correction: Representation, Estimation and Testing.
Econometrica. 55 (2), 251-276.
[12] Fama, E. F. 1970. “Efficient Capital Markets: A Review of Theory and Empirical Work.” The Journal of Finance 25: 387-417.
18. Market Efficiency Of Agricultural Commodity…
www.ijbmi.org 49 | Page
[13] Floros, Christos & Vougas, Dimitrios V. (2007). Lead-Lag relationship between Futures and Spot Markets in Greece: 1999-2001.
International Research Journal of Finance and Economics. 7, 168-174.
[14] Floros, Christos (2009). Price Discovery in South African Stock Index Futures Markets. International Research Journal of Finance
and Economics, Retrieved from: http://www.eurojournals.com/irjfe_34_12.pdf as on July 29, 2014.
[15] Iyer, Vishwanathan and Pillai Archana (2010), “Price Discovery and Convergence in the Indian Commodities Market.” Indian
Growth and Development Review, Vol. 3 No.1, pp.53-61
[16] Jabir Ali, Kriti Bardhan Gupta, "Efficiency in Agricultural Commodity Futures Markets in India: Evidence from co-integration and
causality tests", Agricultural Finance Review, Vol. 71 Iss: 2, pp.162 – 178
[17] Johansen, S., 1988. “Statistical Analysis of Cointegration Vectors.” Journal of Economic Dynamics and Control 12(2–3): 231–254.
[18] Johansen, S., and K. Juselius. 1990. “Maximum Likelihood Estimation and Inference on Cointegration, with Applications to the
Demand for Money.” Oxford Bulletin of Economics and Statistics 52:169-210
[19] Kaur, Gurbandini and Rao, D.N (2009), “Do the spot prices influence the pricing of futures contracts? An empirical study of price
volatility of future contracts of selected agricultural commodities traded on NCDEX (India)”,
[20] Kumar, B., Singh, P. and Pandey, A. (2008); Hedging Effectiveness of Constant and Time Varying Hedge Ratio in Indian Stock and
Commodity Futures Markets; Working Paper, Indian Institute of Management (Ahmadabad), India.
[21] Kushankur Dey; Debasish Maitra, “Price Discovery in Indian Commodity Futures Market: An Empirical Exercise”, International
Journal of Trade and Global Markets, 2012, Vol.5, No.1, pp.68 – 87.
[22] Lokare, S. M. (2007), “Commodity Derivatives and Price Risk Management: An Empirical Anecdote from India”, Reserve Bank of
India Occasional Papers, Vol. 28 No.2, pp. 27-77
[23] Nath, Golka C. and Lingareddy, Tulsi (2008), “Impact of Futures Trading on Commodity Prices”, Economic and Political Weekly,
Vol. 43 No.3, pp. 18-23.
[24] Raizada, G. and Sahi, G.S. (2006); Commodity Futures Market Efficiency in India and Effect on Inflation; Working Paper, Indian
Institute of Management (Lucknow), India
[25] Ramaswami , Bharat and Singh , Jatinder Bir (2007), “Underdeveloped Spot Markets and Futures Trading: The Soya Oil Exchange
in India:, electronic copy available on http://ssrn.com/abstract=962835 (accessed 30 September 2012).
[26] Sahi,Gurpreet Singh and Raizada, Gaurav (2006), “Commodity Futures Market Efficiency in India and Effect on Inflation”,
electronic copy available on http://ssrn.com/abstract=949161 (accessed 30 September 2012).
[27] Sanjay Sehgal, Namita Rajput Rajeev Kumar Dua, “Price Discovery in Indian Agricultural Commodity Market” International
Journal of Accounting and Financial Reporting ISSN 2162-3082 2012, Vol. 2.
[28] Sehdevan, K.G. (2002), “Derivative and Price Risk Management: A Study of Agricultural Commodity Futures in India”, A Seed
Money Project Report of Indian Institute of Management, Lucknow.
[29] Sen, S. and Paul, M. (2010); Trading In India‟s Commodity Future Markets; Working Paper, Institute for Studies in Industrial
Development.