This document summarizes a report on analyzing a stock prediction model using neural networks. The report presents a model that predicts stock prices by extracting stock data, dividing it into training and validation sets, and feeding it into a neural network. Experimental results showed the model could accurately predict stock prices after training on 90% of the data, but predictions on the remaining 10% of data sometimes differed from actual prices. The model allows users to choose different stock attributes or time periods for analysis and prediction.
A Comparison of Stock Trend Prediction Using Accuracy Driven Neural Network V...idescitation
In the recent scenario, nevertheless to say, modern
finance is facing many hurdles to find effective ways to gather
information about stock market data at one shot. At the same
time it is inevitable for both individuals & institutions to
visualize, summarize & enhance their knowledge about the
market behavior for making wise decisions. This paper surveys
recent literature in the domain of neural network variants to
forecast the stock market trends. Classification is made in
terms of dependant variables, data preprocessing techniques
used, network structure, performance analysis and other
useful modeling information. Through the surveyed papers it
is shown that the neural network variants are widely accepted
to study and evaluate stock market behavior compared to
standalone neural network.
Stock Market Prediction using Machine LearningAravind Balaji
REPO : https://github.com/rvndbalaji/StockMarketPrediction
Stock Market Prediction using Machine
This is a presentation on Stock Market Prediction application built using R.
This is a part of final year engineering project
Integration of a Predictive, Continuous Time Neural Network into Securities M...Chris Kirk, PhD, FIAP
This paper describes recent development and test implementation of a continuous time recurrent neural network that has been configured to predict rates of change in securities. It presents outcomes in the
context of popular technical analysis indicators and highlights the potential impact of continuous predictive capability on securities
market trading operations.
A Comparison of Stock Trend Prediction Using Accuracy Driven Neural Network V...idescitation
In the recent scenario, nevertheless to say, modern
finance is facing many hurdles to find effective ways to gather
information about stock market data at one shot. At the same
time it is inevitable for both individuals & institutions to
visualize, summarize & enhance their knowledge about the
market behavior for making wise decisions. This paper surveys
recent literature in the domain of neural network variants to
forecast the stock market trends. Classification is made in
terms of dependant variables, data preprocessing techniques
used, network structure, performance analysis and other
useful modeling information. Through the surveyed papers it
is shown that the neural network variants are widely accepted
to study and evaluate stock market behavior compared to
standalone neural network.
Stock Market Prediction using Machine LearningAravind Balaji
REPO : https://github.com/rvndbalaji/StockMarketPrediction
Stock Market Prediction using Machine
This is a presentation on Stock Market Prediction application built using R.
This is a part of final year engineering project
Integration of a Predictive, Continuous Time Neural Network into Securities M...Chris Kirk, PhD, FIAP
This paper describes recent development and test implementation of a continuous time recurrent neural network that has been configured to predict rates of change in securities. It presents outcomes in the
context of popular technical analysis indicators and highlights the potential impact of continuous predictive capability on securities
market trading operations.
Financial forecastings using neural networks pptPuneet Gupta
The aim of the project is to predict the interest rates,bond yield variation and stock market prices using neural networks and make a comparative study of different pre-processing techniques viz Fast Fourier Transform and Hilbert Huang Transform.
this ppt needs other two also..
Optimization is considered to be one of the pillars of statistical learning and also plays a major role in the design and development of intelligent systems such as search engines, recommender systems, and speech and image recognition software. Machine Learning is the study that gives the computers the ability to learn and also the ability to think without being explicitly programmed. A computer is said to learn from an experience with respect to a specified task and its performance related to that task. The machine learning algorithms are applied to the problems to reduce efforts. Machine learning algorithms are used for manipulating the data and predict the output for the new data with high precision and low uncertainty. The optimization algorithms are used to make rational decisions in an environment of uncertainty and imprecision. In this paper a methodology is presented to use the efficient optimization algorithm as an alternative for the gradient descent machine learning algorithm as an optimization algorithm.
Turnover Prediction of Shares Using Data Mining Techniques : A Case Study csandit
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predicting future trends, their efficiency is questionable as their predictions suffer from a high
error rate. The objective of this paper is to investigate various existing classification algorithms
to predict the turnover of different companies based on the Stock price. The authorized datasetfor predicting the turnover was taken from www.bsc.com and included the stock market valuesof various companies over the past 10 years. The algorithms were investigated using the ‘R’
tool. The feature selection algorithm, Boruta, was run on this dataset to extract the important
and influential features for classification. With these extracted features, the Total Turnover of
the company was predicted using various algorithms like Random Forest, Decision Tree, SVM and Multinomial Regression. This prediction mechanism was implemented to predict the turnover of a company on an everyday basis and hence could help navigate through dubious
stock markets trades. An accuracy rate of 95% was achieved by the above prediction process.
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IJRET : International Journal of Research in Engineering and Technology is an international peer reviewed, online journal published by eSAT Publishing House for the enhancement of research in various disciplines of Engineering and Technology. The aim and scope of the journal is to provide an academic medium and an important reference for the advancement and dissemination of research results that support high-level learning, teaching and research in the fields of Engineering and Technology. We bring together Scientists, Academician, Field Engineers, Scholars and Students of related fields of Engineering and Technology
Financial forecastings using neural networks pptPuneet Gupta
The aim of the project is to predict the interest rates,bond yield variation and stock market prices using neural networks and make a comparative study of different pre-processing techniques viz Fast Fourier Transform and Hilbert Huang Transform.
this ppt needs other two also..
Optimization is considered to be one of the pillars of statistical learning and also plays a major role in the design and development of intelligent systems such as search engines, recommender systems, and speech and image recognition software. Machine Learning is the study that gives the computers the ability to learn and also the ability to think without being explicitly programmed. A computer is said to learn from an experience with respect to a specified task and its performance related to that task. The machine learning algorithms are applied to the problems to reduce efforts. Machine learning algorithms are used for manipulating the data and predict the output for the new data with high precision and low uncertainty. The optimization algorithms are used to make rational decisions in an environment of uncertainty and imprecision. In this paper a methodology is presented to use the efficient optimization algorithm as an alternative for the gradient descent machine learning algorithm as an optimization algorithm.
Turnover Prediction of Shares Using Data Mining Techniques : A Case Study csandit
Predicting the Total turnover of a company in the ever fluctuating Stock market has always proved to be a precarious situation and most certainly a difficult task at hand. Data mining is a
well-known sphere of Computer Science that aims at extracting meaningful information from large databases. However, despite the existence of many algorithms for the purpose of
predicting future trends, their efficiency is questionable as their predictions suffer from a high
error rate. The objective of this paper is to investigate various existing classification algorithms
to predict the turnover of different companies based on the Stock price. The authorized datasetfor predicting the turnover was taken from www.bsc.com and included the stock market valuesof various companies over the past 10 years. The algorithms were investigated using the ‘R’
tool. The feature selection algorithm, Boruta, was run on this dataset to extract the important
and influential features for classification. With these extracted features, the Total Turnover of
the company was predicted using various algorithms like Random Forest, Decision Tree, SVM and Multinomial Regression. This prediction mechanism was implemented to predict the turnover of a company on an everyday basis and hence could help navigate through dubious
stock markets trades. An accuracy rate of 95% was achieved by the above prediction process.
Moreover, the importance of the stock market attributes was established as well.
Comparative Study of Machine Learning Algorithms for Sentiment Analysis with ...Sagar Deogirkar
Comparing the State-of-the-Art Deep Learning with Machine Learning algorithms performance on TF-IDF vector creation for Sentiment Analysis using Airline Tweeter Data Set.
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find algorithms which have high detection rate, low training time, need less training samples and are easy
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1. BTP Report - Stock Prediction model analysis
Rachit Mishra
DA-IICT, Gandhinagar
201201092@daiict.ac.in
Supervisor
Prof. P.M Jat
Abstract – This document report present a detailed analysis of
stock prediction and puts forth a prediction model which
facilitates the prediction. The fundamentals upon which this
research was conducted and the relevant output was produced
were strengthened by studying the previous research work
conducted in similar domain.
Keywords – stock prediction, neural networks, artificial neural
networks, trend prediction.
I. INTRODUCTION
Beginning with formulating the problem statement, this
research aims at performing stock forecasting using neural
networks. This is the basic underlying idea of the problem
statement along lines of which, the relevant research was
conducted and ideas implemented.
1.1 Importance of the problem
This problem is primarily important because it implements
methods and produces outputs aimed at determining the future
value of stock prices. Living in a world where the global
economy spins off with an innumerable number of markets, a
tool aimed at predicting their stock values would maximize
their profits and better the economy.
1.2 General approaches
The general approaches used in stock forecasting deploy
various machine learning algorithms aimed at predicting the
prices or the price range for any upcoming day or week or
month and so on. Page Layout. Various approaches used
follow the important step of feeding the inputs to the machine
learning algorithm.
Another general approach was to work on the model of
sentimental analysis. This basically analysed the emotional
inclinations and sentiments of the investors via. their tweets
and then facilitated the prediction. In the long run, this didn't
prove to be much credible as people started getting biased.
1.3 Solution outline
My solution includes the following of a series of steps. Firstly,
I extract the data in form of excel sheets for, say a company X.
Now, for any given company, there are various factors which
contribute towards the development of its prediction model.
Opening rates for that particular period
Highest rates of that particular period
Lowest rates of that given period
The closing rates at that period
These are the primary attributes which would be considered
while applying the algorithms followed by the Artificial
neural networking tool on the data flowing into the neural
network. The time frame within which we would be doing
the simulation can be varied as per the user's interest.
The [1]
data is precisely divided into sets of - training and
validation data. The simulation results are then noted down
and plots are produced as a result of before and after training
the data. Subsequently, validation is done on the (100-x)%
data where x is the %data allotted for training.
Figure 1 : Step-wise fundamentals of the initial phase
1.4 Summary of experimental results
Fine tuning different attributes results in different plots which
exhibit the different nature of outputs at different times. There
are basically 3 stages via. which the experiment has been
performed.
At first, simulation is performed before training the data. Two
different lines can be observed where one symbolizes the
feeding of data into the neural network and the other
symbolized the actual data.
After this, the data is trained with 90% of the data being
treated as training data and the rest 10% as the testing data. In
Data
extraction
in form of
.csv files
Divison
into
training
and
validation
sets
Feeding
data into
the
Neural
networks
2. overall summary, various observations can be noted down as a
result of the plots achieved. For instance, if the highest rates
of stocks for a given company witness a declining trend over a
period of time, the predicted plot can show a profit for the
company or vice versa. Such alarming observations can be
noted down which would be discussed in depth later.
.
II. RELATED WORK
In the field of stock prediction, an extensive research aimed at
providing a near-accurate prediction model is underway and
has sent numerous benchmarks.
In one of the approaches, the use of [2]
global stock data in
correlation with the data of other financial products has been
stressed. In this very approach, the Support Vector Machine
learning algorithm has been implemented. Markets which stop
trading right before the beginning of the US markets are
studied in this approach. Specifically speaking, the world
major stock indices[6]
are used as an input feature for the
predictor developed via. this approach.
Figure 2 : Correlation of NASDAQ stock data with other
global markets
In another approach, the importance of the Back propagation
Learning Algorithm which intends to find the
maxima/minima of the function by moving it in direction of
negative slope is stressed. There were various attributes such
as the date, time of the day, the opening price, the closing
price, the highest and the lowest prices as well as the
fractional changes in prices, of which some were taken into
account. For training, 60% of the data was used where as the
rest 40% was used for validation.
Figure 3 : Looking at the error in the second approach
Thus, in most of the related works, the application of Artificial
neural networks in order to develop a stock prediction model
are discussed. A general observation observed is that the
prediction actually is decently accurate. However, if there is a
sudden fluctuation in any of the parameters, the accuracy
decreases.
III. PROBLEM STATEMENT
3.1 PROBLEM OVERVIEW
By studying the methodology of the neural networks[3]
,
forecasting of the stock prices can be facilitated as was done
in this research. Motivation for conducting the theoretical
research was an important factor in developing the problem
statement for this research project. Basically, the overview of
the problem is that we need to fetch data in the form of .csv
files and then, this data needs to be fed into the neural network.
3.1.1. Precise description
Consider the stock prices data being fed for a company say
Reliance. While using the prediction model produced at the
end of this research, the user gets to choose the timeline in
which the stock price data is to be trained.
3. For instance, you choose to extract weekly stock price
attributes between say, 3rd January, 2005 to say, 28th
Decemeber, 2015. From a relevant source, you can mine the
data and get the csv file containing the necessary data. Of the
576 rows accumulated in the data sheet, 90% of the data is
allocated to training and 10% to testing.
3.1.2 Significance
The significance of this problem statement is that it
contributes a lot to the functioning of stock markets and thus
enhancing the overall functioning of national economies. A
prediction model which can predict the profit of your
company's stock at near-accurate rates happens to be a
powerful tool for the global economy.
IV. APPROACH
4.1 Architecture
There are various elements integral to data modelling[7]
and
which form the basic underlying idea of the neural network
architecture.
Figure 4 : Elements integral to NN Architecture
I have used the MATLAB tool in order to fulfil the coding
requirements and the ANN tool to train and validate the data
thereby generating the appropriate plots.
Neural networks are used to approximate functions
depending on a large number of inputs which happens to be
the underlying idea of the implementation.
The NN Architecture covers basically the types of
problems which are to be tackled by the applications. In the
architecture, stocks can be classified in different groups based
on their kind of returns. For instance, they can be classified as
either +ve or -ve or even neutral.
4.2 Individual Component
The individual components involved are the different
attributes which are considered as parameters for predicting
the stocks. For any given parameter or even for all parameters
at once, the user can simulate the input data being fed into the
neural network and make note of the predicted outputs.
The algorithm implemented has been divided into three
separate fragments of code or it can at least be considered as
such.
Figure 5 : First fragment of the algorithm[4]
Above is the first fragment of the algorithm in which the
testing and the training data are separated. In the 8th line,
where
u_train = A(:. 2:526);
the ':' implies the inclusion of all the attributes as
parameters while predicting the stock price output. In our case,
I chose 90% of the data for training which amounts to 516
rows and the last 60 rows for validation and testing which
amounts to 10% of total.
Figure 6 : Second fragment
This next fragment of the algorithm performs training on
the first 90% of the data which happens to be the first 516
rows and fine tunes the input data[5]
being fed into the neural
network accordingly. The
plot(y_train_sim, 'r:')
function trains and simulates the data and accordingly, the
plot is generated which would be shown later.
4. Figure 7 : Final testing fragment of the algorithm
This is the final fragment of the algorithm which
symbolizes the part which performs testing on the remaining
10% of the data. In other words, after performing[8]
training on
the previous 90% of the data, the values of the last 10% were
predicted.
These stock price values are now tested and compared with
the actual 10% of the values. [9]
That tells a great deal about the
algorithm and the nature of the stock market for the given
company.
V. EVALUATION
5.1 Objective of the experiment
The objective of the experiment is to feed a constant stream
of data into the ANN tool prior to training the data. Then, few
parameters are listed down and are considered as the prime
attributes necessary to do the simulation.
Thus, the overall objective is to train some fraction of the
input data and use rest of the data to validate the results after
training.
5.2 Experiment setup
Setting up the experiment required the code above to be
written on Matlab. Post that, the first stage of simulation is
executed in which the below plot is produced.
It just shows the values of the stock prices before training
the data of Bombay Stock Exchange. The timeline
considered is :
From : 3rd Jan, 2005
To : 28th December, 2015
No. of rows = 576
Figure 8 : Before training
In the next stage, the training is done and the second
fragment of the algorithm is executed as shown in the
previous section. By doing this, the data is trained. 90% of the
data is trained in this stage which is roughly the 1st 516 rows
of stock prices for BSE.
We can see in the below plot that the red line which
indicates the predicted output almost coincides with the blue
line which represents the actual price. Thus, this implies that
the prediction is almost accurate while training.
Figure 9 : Post training analysis
While the experiment has been set up and the data has been
trained, based on the predicted value of the stock prices after
training the 90% of data, the predicted[10]
value of the last 10%
which is the last 60 rows is compared with the actual value of
the stock prices of the last 10% which is represented by the
blue line.
Thus, conclusions can be drawn via. this plot which shows
that the actual prices have been higher and even lower at times
than the predicted ones.
5. Figure 10 : After performing the testing
5.3 Results and Analysis
In a point form, the results can be drawn[11]
as shown above
and few noteworthy points worth analysing would be :
You can choose between various parameters and
your output will be formulated accordingly.
When you consider all the parameters, a
significant different between the actual and the
predicted values can be observed at the end.
If however, one chooses to use just a single
attribute as a parameter, say closing price, the
output isn't near-accurate.
Also, the difference between the actual and the
predicted value decreases. Overall, the efficiency
of the model decreases.
Figure 11 : When using a single attribute as the parameter,
efficiency decreases.
The final analysis can be concluded as saying that the user
gets the options to choose from the attributes and also gets the
option to set the parameter as output to train and validate the
data.[12]
The efficiency of this model varies depending upon
the input chosen.
A single input say Closing price chosen as a parameter can
produce more efficient and accurate predictions than when all
the 4 attributes are considered as parameters or even vice-
versa.
VI. DISCUSSION AND CONCLUSION
While discussing and concluding this research-based
experiment, the whole idea can be listed in terms of strengths
and drawbacks of this very model which has been presented in
this report.
The strengths of this model primarily centre around the fact
that this model enables the user to get deep insights about how
the stock of his or her firm might perform in the near future.
Accordingly, the user can corroborate with his associates and
the firm can implement measures to keep the prices or bay or
maximize its profits. This would also assist the clients who
happen to be major stockholders in one form or the other in a
great manner. A beforehand idea of how the stocks of a given
company might perform in the coming time and affect the
decision of a person investing into shares of a given company
by a great deal.
On the downside, the weakness or the drawbacks associated
with the functioning of such research-based prediction models
should also be taken into account in order to present an
unbiased thesis of the whole experiment. The true nature of
the performance of the stocks happens to be erratic. One
cannot exactly predict the future thus rendering the value of
such experiments null and void at times. For instance, a
prediction model which takes into account all the 4 attributes
as parameters is placed in front of a prediction model which is
taking into account just a single parameter to predict the stock
price. One of these models can be less accurate than the other
one and the person who is relying on the less-accurate model
unknowingly can suffer a great deal of loss in the stock
market. Thus, these experiments are trustworthy only to some
extent because post-that, it's all 'wish me luck'.
The future scope of this model can be tremendous devoid of
any bounds or limitations. Speaking in technical terms, this
model can be further expanded to develop a comparator which
would give a more direct idea of where to invest in as the user
would get much lucid insights as to which company's stock
might be performing better in the near future.
6. VII. ACKNOWLEDGEMNT
During the course of four months of this research internship, I
was able to dive deep into various domains of research
pertaining to machine learning, data mining, as well as other
technicalities associated with the field of Neural Networks and
Stock Prediction. For bestowing me with an opportunity to
pursue this research and for making the terms of research as
lucid as possible, I would like to thank my mentor, Prof. P.M.
Jat. I would also like to thank him for assisting me with
developing strategies and building ideas necessary to
overcome the roadblocks I encountered at every step during
the two phases of my internship. Also, for providing me with
the insights pertaining to all the tools and technologies
involved in my research, I would like to thank my mentor
again. All in all, this research internship was an enlightening
experience made possible only by a great guidance.
VIII. REFERENCE
[1]
<BSESN Historical Prices>, Accessed on 19th April, 2016
https://in.finance.yahoo.com/q/hp?s=%5EBSESN&a=06&b=1
&c=1997&d=00&e=8&f=2016&g=w
[2]
<Adani Power Ltd. stock prices>, Last Accessed on 29th
April,2016<https://www.quandl.com/data/NSE/ADANIPOW
ER-Adani-Power-Limited>
[3]
<Stock Market Prediction using Neural Networks>, Last
Accessed on
29thApril,2016<http://neuroph.sourceforge.net/tutorials/Stock
MarketPredictionTutorial.html>
[4]
<Stock Market Prediction - MATLAB>, Last Accessed on
29thApril,2016..http://www.breakyourhead.com/2013/03/stoc
k-prediction-artificial-neural.html
[5]
<Half adder - Neural Networks>, Last Accessed on
29thApril,2016..http://www.breakyourhead.com/2012/11/half
-adder-artificial-neural-networks.html
IX. APPENDIX
[6]
Shen, Shunrong, Haomiao Jiang, and Tongda
Zhang.,"Stock Market Forecasting Using Machine Learning
Algorithms."2012
[7]
Marijana Zekić: Neural Network Applications in Stock
Market Predictions ñ A Methodology Analysis, in B. Aurer,
R. Logoûar, Varaûdin (Eds.), Proceedings of the 9th
International Conference on Information and Intelligent
Systems, pp. 255-263, 1998
[8]S
. Zemke, “On developing a financial prediction system:
Pitfall and possibilities,” Proceedings of DMLL-2002
Workshop, ICML, Sydney, Australia, 2002.
[9]
Marijana Zekic, MS, “Neural Network Applications in
Stock Market Predictions - A Methodology Analysis,”
University of Josip Juraj Strossmayer in Osijek, Croatia.
[10]
Refenes, A.N., Zapranis, A., Francis, G., Stock
Performance Modeling Using Neural Networks: A
Comparative Study with Regression Models, Neural
Networks, vol. 7, No. 2, 1994, pp. 375-388.
[11]
Schoeneburg, E., Stock Price Prediction Using Neural
Networks: A Project Report, Neurocomputing, vol. 2, 1990,
pp. 17-27.
[12]
Swales, G.S.Jr., Yoon, Y., Applying Artificial Neural
Networks to Investment Analysis, Financial Analyst s Journal,
September-October, 1992, pp. 78-80.