Chapter 4 focuses on describing how to estimate and calculate Weighted Average Cost of Capital, answering the following questions:
How is the WACC calculated?
What is the Cost of Debt, Cost of Equity and Beta?
What is the Market Risk Premium and Country Risk Premium?
What is the periodicity of WACC calculation?
Chapter 4 focuses on describing how to estimate and calculate Weighted Average Cost of Capital, answering the following questions:
How is the WACC calculated?
What is the Cost of Debt, Cost of Equity and Beta?
What is the Market Risk Premium and Country Risk Premium?
What is the periodicity of WACC calculation?
Financial engineering is the quantitative methodology used for development of solutions to financial problems. It is often used for development of new financial products, such as an existing basket of vanilla financial products, or combining features of different financial products in a hybrid financial product, in order to enhance the yield or changing the risk aspects of the new product in accordance with the views of the client. The presentation on financial engineering and structured products is a presentation made at a conference regarding the products that have the unique feature of preserving the initial investment or a portion of initial investment along with the potential of increasing the yield of the investment.
Financial engineering is the quantitative methodology used for development of solutions to financial problems. It is often used for development of new financial products, such as an existing basket of vanilla financial products, or combining features of different financial products in a hybrid financial product, in order to enhance the yield or changing the risk aspects of the new product in accordance with the views of the client. The presentation on financial engineering and structured products is a presentation made at a conference regarding the products that have the unique feature of preserving the initial investment or a portion of initial investment along with the potential of increasing the yield of the investment.
In economics and accounting, the cost of capital is the cost of a company's funds, or, from an investor's point of view "the required rate of return on a portfolio company's existing securities". It is used to evaluate new projects of a company.
RBSA-RR-A Deep Dive Into The Hospital Industry in India.pdfRBSA Advisors
We are delighted to share our research on the Hospital segment in India, primarily focusing on the Performance of Key Hospital Groups including their future growth plans, and recent PE and M&A deals in this segment.
RBSA-RR-Specialty Chemicals-An opportunity for Make in India.pdfRBSA Advisors
These are interesting times for the Specialty Chemicals industry in India, in view of the current global market trends in this sector. The supply chain issues faced by manufacturers around the world, have brought greater momentum to the China +1 theme thereby creating incentives for Indian manufacturers to invest and grow.
RBSA-RR-Industry Valuation Multiples Series 6th Edition.pdfRBSA Advisors
We are delighted to share our “6th Edition of Industry wise Valuation Multiples” for Indian listed corporates. Our report coverage comprises of 13 largest industrial sectors in India.
RBSA-RR-Demystifying Life Insurance Industry in India (1).pdfRBSA Advisors
RBSA Advisors is delighted to share its recent research on the Life Insurance sector in India. Pandemic across the nation had impacted the country's overall financial system. The unprecedented nature of this crisis created difficult circumstances, including economic shutdowns. The year 2020 was a watershed year in the Insurance sector. Insurer were forced to rethink their business operations leading to enormous changes in the industry. Currently, life insurance industry is at crossroad.
Through this report we are demystifying the life insurance industry in India and sharing our views on the industry outlook.
SEBI streamlines the process of Buy-back of securities.pdfRBSA Advisors
With the intent to simplify the Buy-back process of securities, level the playing field for investors, and encourage ease of doing business, the Securities & Exchange Board of India (“SEBI”) has relaxed certain norms in the SEBI (Buy-back of Securities) Regulations, 2018 pursuant to SEBI (Buy-back of Securities) (Amendment) Regulations, 2023. Further, Operational Guidance on Buy-back was issued by SEBI on 8th March 2023. The amended regulation has come into force w.e.f 9th March, 2023.
RBSA-Budget-Finance Bill 2023-Key Proposals.pdfRBSA Advisors
Keeping a people-centric approach, various amendments in individual tax provisions and amendments providing benefits under the new tax-rate regime is a welcome move.
Through this report, we share our views on the prevailing framework/rules under the Income Tax Act, 1961 for determination of Fair Valuation in case of Shares/Securities.
Chatty Kathy - UNC Bootcamp Final Project Presentation - Final Version - 5.23...John Andrews
SlideShare Description for "Chatty Kathy - UNC Bootcamp Final Project Presentation"
Title: Chatty Kathy: Enhancing Physical Activity Among Older Adults
Description:
Discover how Chatty Kathy, an innovative project developed at the UNC Bootcamp, aims to tackle the challenge of low physical activity among older adults. Our AI-driven solution uses peer interaction to boost and sustain exercise levels, significantly improving health outcomes. This presentation covers our problem statement, the rationale behind Chatty Kathy, synthetic data and persona creation, model performance metrics, a visual demonstration of the project, and potential future developments. Join us for an insightful Q&A session to explore the potential of this groundbreaking project.
Project Team: Jay Requarth, Jana Avery, John Andrews, Dr. Dick Davis II, Nee Buntoum, Nam Yeongjin & Mat Nicholas
Opendatabay - Open Data Marketplace.pptxOpendatabay
Opendatabay.com unlocks the power of data for everyone. Open Data Marketplace fosters a collaborative hub for data enthusiasts to explore, share, and contribute to a vast collection of datasets.
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Explore our comprehensive data analysis project presentation on predicting product ad campaign performance. Learn how data-driven insights can optimize your marketing strategies and enhance campaign effectiveness. Perfect for professionals and students looking to understand the power of data analysis in advertising. for more details visit: https://bostoninstituteofanalytics.org/data-science-and-artificial-intelligence/
2. Economic growth, measured as GDP, is a function of the interaction between the three
factors of production viz. Land, Labour and Capital.
Land includes all natural resources and area where production activities can be
conducted. Land needs to be compensated with rent for its use.
2
Introduction
Labour refers to the aggregate physical and mental effort used by human capital to produce goods and
services. Labour needs to be compensated for its effort and time with wages.
Capital is a means to employ land and labour to produce goods and services. Capital needs to be
compensated with interest or profits; the residual left after compensating other factors of production.
Production of all goods or services entails some combination of these three factors to interact.
3. Capital is different from money. While money is used to purchase goods and services for consumption, capital is
more durable and is used to create wealth through returns generated from investment.
Hence the need of understanding “Cost of Capital”.
A company's capital typically includes both Debt and Equity, one must therefore calculate both the Cost of Debt
and the Cost of Equity to determine a company's Cost of Capital. More importantly, both cost of debt and equity
must be forward looking, and reflect the expectations of risk and return in the future. Hybrid Instruments have
characteristics of both debt and equity, therefore the risk and return of the instruments is also expected to remain
between that of debt and equity capital. Example - preferred shares, convertible bonds.
There are essentially two ways in which cost of capital can be interpreted:
1. From the perspective of a business:
a. cost of raising new financing
b. opportunity cost of investing in new projects
2. From the perspective of investors :
a. the discount rate to value the business or
b. the minimum returns that an investor is willing to receive for investing in a company, based on the
given risk characteristics of the business.
Cost of Capital
Hence, cost of capital can be understood as the minimum rate of return that
providers of capital expect on the funds provided.
3
4. Cost of Capital: Cost of Equity (KE)
Cost of Equity (KE) can be computed theoretically by using Capital Asset Pricing Model, Arbitrage Pricing Model and
Build Up Model
1. Capital Asset Pricing Model (CAPM)
The Cost of Equity is calculated by comparing the investment to other investments (comparable) with similar risk
profiles. It is commonly computed using the Capital Asset Pricing Model (CAPM). The CAPM estimates the expected
return on a stock:
E(R) = Rf + β (RM - Rf) + α
- RF is the risk free rate corresponding to the investing period horizon
- β is a measure of systematic risk, capturing the volatility of a stock in relation to the market
- (RM - RF) is the equity risk premium (ERP) of the stock
CAPM states that investors would expect to be compensated for additional risk of investing in the market instead of
a risk free asset. This additional compensation would be in the form of the market risk premium which would be
further adjusted for inherent risk of the company in relation to the market. Company specific risk perception is
quantified in the form of Beta which is then used to adjust the market risk premium.
Here it is appropriate to note that one of the main assumptions of the CAPM is that the investor is only compensated
for the “systematic risk”; since all other risks faced by the investee’s business are diversifiable through investment in
securities that offset the inherent risks of a particular business.
4
5. α & β – Alpha & Beta of the Equation
According to the CAPM theory, there are two types of risks — systematic and non-systematic.
Alpha represents unsystematic risk. The level of unsystematic risk of an individual security is dependent on its own
unique characteristics. It is independent from market returns and cannot be diversified.
Factors (alpha) responsible for adjustment in discount rate:
Size of the company/project
Stake under consideration
Stage of Development/gestation period
Company specific risk factors
Comfort on Projections
Distressed situation
Beta represents systematic risk. The level of systematic risk of an individual security depends on how correlated it is
with the overall market. This risk can be diversified if one invests in a portfolio of securities.
β which is arrived at by regressing the historical stock returns with the historical market returns numerically
provides the extent to which the stock returns varies from the market returns hence capturing the systematic risk of
a stock. Looking at it from the perspective of risk, it states how risky/volatile the stock return has been in relation to
the aggregate market.
(RM - RF) - The equity risk premium (ERP) is the additional return that an investor holding a market portfolio (a
portfolio of the index components of the same weights) will require for taking on additional systematic risk {since
market portfolio is considered to be a well-diversified portfolio hence theoretically (RM - RF) should only represent
systematic risk that cannot be diversified.}
5
6. Cost of Capital: Cost of Equity (KE)
2. Arbitrage Pricing Theory (APT):
Arbitrage Pricing Theory is another model to estimate the Ke. It is similar to CAPM as it is a factor sensitivity
model. However, unlike CAPM which postulates that Ke is dependent only on one factor, APT further divides
the calculation of the KE into multiple macroeconomic factors that reflect systematic risks (Eg.: interest rates,
FX rates, etc.). APT does not provide any particular set of factors to be considered for the calculation of KE and
leaves the factor selection to the analyst.
E(R) = RF + β1R1 + β2R2 + …. + βNRN
- RF is the risk free rate corresponding to the investing period horizon
- βX are factor sensitivities of the parameters representing systematic risk. This is arrived at by regressing
historical values of individual parameters over the returns on the stock.
- RX are the additional returns on account of exposures to each parameter.
3. Build Up Model:
The build up model calculates Ke by adding incremental premiums to the risk free rate to account for factors
such as equity risk, industry risk, business risk and size of company. However, the premiums ascribed to the
factors are left to the discretion of the analyst while also allowing flexibility to include additional factors.
E(R) = RF + PE + PI + PB + PS
- RF is the risk free rate corresponding to the investing period horizon
- PE is the premium required for investment in a risky security
- PI is the premium associated with industry specific risks
- PB is the premium associated with business specific risks
- PS is the premium associated with company specific risks
6
7. When companies borrow funds from outside or take debt from financial institutions or other sources the interest
paid on that amount is called cost of debt. Since in most cases debt interest is a tax deductible expense, the cost of
debt is computed as an after-tax cost to make it comparable with the cost of equity.
KD = Interest *(1 - tax rate)
Calculation of Cost of Debt (KD)
If a company has market traded debt instrument, the KD of the company is relatively easy to compute as it is the
Yield To Maturity (YTM) of the traded bond. The YTM of a bond is the return that is generated if the bond is bought
today at the market price and held to maturity is a reflection of what lenders would require the firm to pay them as
compensation (interest) for funds borrowed as of today. It is the IRR of the bond which equates current price of
bond to the present value of remaining cash flows.
Alternatively, when current market price of a company’s debt is not available or is not reliable, a debt rating
approach can be used, to calculate the KD. The debt rating approach involves the identification of a bond with similar
risk-return characteristics to the bond for which KD is required and using its yield to maturity as an approximate
measure of the KD for the selected company.
The factors to compute the interest that lenders (majorly banks) charge to borrowers would be dependent on:
Marginal cost of funds: costs that bank is incurring to get funds/deposits is calculated on a marginal basis.
Negative carry on account of CRR (Cash Reserve Ratio): cost that bank has to incur while keeping reserves with
RBI – RBI does not compensate with any interest for this CRR.
Operating costs: is the operating expenses incurred by bank.
Tenor premium: denotes that higher interest can be charged from long term loans.
Cost of Capital: Cost of Debt (KD)
7
8. In order to arrive at the aggregated cost of capital of the firm, the weighted average cost of individual sources of
finance is determined with the weights being the proportion of each type of capital used.
The Weighted Average Cost of Capital (WACC – K0) is defined as the weighted average of the cost of various sources
of finance, weights being the book value or market values of each source of finance:
K0 = WEKE + WDKD
K0 = Weighted Average Cost of Capital
KE = Cost of Equity
KD = Cost of Debt including Term Loans
WE = Proportion of total capital supplied by external equity
WD = Proportion of total capital supplied by debt
The major determinants to the Cost of Capital are:
1. Inflation
2. Government Regulations
3. Liquidity
4. Risk Perception
Cost of Capital: WACC (K0)
Determinants of Cost of Capital
8
9. High Inflation
Expectation of
High Deposit
Rates from
marginal savers
Higher Returns on G
- Secs (Risk Free
Assets) to provide
more incentive
compared to higher
Deposit Rates in
Banking System
Resultant High
Lending Rate and
High Kd; Higher
Ke due to higher
risk free returns
Cumulatively,
higher Cost of
Capital due to
higher inflation
-1.00%
4.00%
9.00%
14.00%
19.00%
24.00%
Inflation Rate - CPI Risk Free Rate Cost of Equity *
9
High inflation can have damaging economic and social consequences and one of them is that it leads to higher cost of capital:
“High inflation may also lead to higher borrowing costs for businesses and people needing loans and mortgages as financial markets
protect themselves against rising prices and increase the cost of borrowing on short and longer-term debt. There is also pressure on
the government to increase the value of the state pension and unemployment benefits and other welfare payments as the cost of
living climbs higher”.
Inflation – Cause & Effects
* Cost of Equity is computed by CAPM. Beta for individual country is taken at 1 and no additional adjustments (alpha) has been taken in the calculation.
CPI - http://www.tradingeconomics.com/country-list/inflation-rate
RF - http://www.tradingeconomics.com/bonds
ERP - www.stern.nyu.edu/~adamodar/pc/datasets/ctryprem.xls
Country wise Comparison
Determinants of Cost of Capital – I. Inflation
In our research report we have tried to map inflation rate of various countries along with their Risk Free Rate and cost of Equity. In
developing nations we observe there is high inflation which is sustained with higher risk free rate and higher cost of equity when
compared with developed nations.
10. Determinants of Cost of Capital – II. Government Rules
State wise FDI Equity Inflows
(Amount in INR Cr)
Demand & supply of money (capital) affects the cost of capital. The
cost of capital and supply of capital are inversely related. Government
regulations are pivotal in deciding the Capital Flows (Supply) in India,
resultantly deciding it’s cost; one such tool being Foreign Direct
Investment (FDI). More liberal FDI policy, attracts foreign investment
2000-01
US$ 2.5
billion
2004-05
US$3.2
billion
2009-10
#US$ 25.8
billion
2014-15
(April –Feb
2015)
#US$ 28.8
billion
DIPP’S – FINANCIAL YEAR-WISE FDI
EQUITY INFLOWS
(# Figures for the year 2009-10 & from April
14 to February 2015 are provisional subject to
reconciliation with RBI)
0
1
2
3
4
5
6
^ Sectors attracting highest FDI Inflows (Amount in $ Bn)
Apr 12 - Mar 13 Apr 13 - Mar 14 Apr 14 - Feb 15
States having liberal Business and FDI policies have received
highest cumulative FDI till date as can be see from above
representative Map
Source: http://dipp.nic.in/English/Publications/FDI_Statistics/2015/india_FDI_February2015.pdf
^ Services sector includes Financial, Banking, Insurance, Non-Financial / Business, Outsourcing, R&D, Courier, Tech. Testing and Analysis, Construction
includes Development of Townships, Housing, Built-Up Infrastructure, Chemicals Excludes Fertilizers
INR 3,49,002
INR
2,45,886
INR 87,062
INR 80,381
INR
6,360
INR 48,961
INR 53,220
INR 6,791
INR 6,095
INR 6,099
INR 3,864
INR 2,362
INR 1,957
INR 364INR 265
INR 26 cr
INR 14,499
10
11. Due to the lag in transmission of higher liquidity,
there is no immediate impact on the lending rates of
the banks. SLR is one of the major source for
channelling the country's savings into government's
deficit financing, crowding out private credit and
increasing cost of private credit.
5.00%
10.00%
15.00%
20.00%
25.00%
SLR % Lending Rates
Source: https://www.rbi.org.in/Scripts/PublicationsView.aspx?id=16515
http://dbie.rbi.org.in/OpenDocument/opendoc/openDocument.jsp
Statutory Liquidity Ratio (SLR): is the amount, as determined by RBI, that the commercial banks require to maintain in
the form of gold or government approved securities(like bonds and shares) before providing credit to the customers.
-2.00%
0.00%
2.00%
4.00%
6.00%
8.00%
7.43%
2.39%
1.80% 1.53% 1.24%
0.21%
-0.13%
10-Year Government Bond Yields
-2.00%
0.00%
2.00%
4.00%
6.00%
8.00% 6.50%
4.35%
2.00%
0.50% 0.50% 0.00%
-0.10%
Overnight Interest Rates
For further analysis, we have considered long-term government bonds as a credible proxy for the risk free rate. Above is a
comparison of the prevailing yields on 10-Year Government Bonds of India, US, UK, China, Australia, Japan and Eurozone.
The shortest term of borrowing between banks is denoted by the overnight lending rate. The second graph is a snapshot
of the prevailing rates of overnight lending for the same set of countries. The rates prevailing in India are significantly
higher than any of the other countries compared at both the short- as well as the long-end of the yield curve. Hence,
the base on which the cost of capital is built is quite high in India.
Determinants of Cost of Capital – III. Liquidity
Source: Central Bank Website
11
12. Risk perception is a major determinant of cost of capital for not
only a company but entire country. However, it cannot be
quantitatively measured since the perception of risk and the
expected additional return is subject to an investor’s risk appetite.
Broadly, given an increase in the risk perception of an
industry/company, the cost of capital increases for the industry
and subsequently the company. As with other cases, this increase
in cost of capital is to compensate the investor for the additional
risk undertaken.
It is worth noting that the changes in the cost of capital for
companies within an industry perceived as risky is not
linear, since it also depends on the strengths of the
individual company itself. This implies that companies with
stronger businesses within a risky industry will experience
smaller incremental costs of borrowing in comparison to
companies with weaker businesses. In essence, the cost of
capital for companies has a direct relation to the perceived
riskiness of the industry as well as the business.
Determinants of Cost of Capital – IV. Risk Perception
12
13. The sample size for our study of Cost of Capital has been deduced by analyzing all the Listed Companies on NSE.
Of the 36 sectors, we have selected 16 sectors which represent ~75% of total Market Capitalization; excluding
BFSI sector (constituting ~19% of Market Capitalization) from our study due to the different parameters of Debt
and Equity being applicable to it (summing up to ~94% of the total Market Capitalization) . We have ignored the
sectors which are < 1% of the total Market Capitalization. The selected sectors are as enlisted below:
Sector-wise Analysis of Cost of Capital in India
Methodology adopted for analysis:
The Listed companies are filtered as per sectors enlisted on the adjoining table.
The respective data related to Debt, Interest Costs and Market Capitalisation
has been sourced from various Databases
Kd used for analysis is pre tax Kd deduced by dividing Finance Cost and
Outstanding Debt
Ke is calculated using CAPM - Beta has been regressed over a period of three
years i.e. 01st April 2012 – 31st March 2015. No additional Alpha has been
considered.
WACC is calculated using respective Debt and Market Cap for these companies
as on 31st March 2015
The Doughnuts of every sector shows the Total Number of Companies that has
been analysed for various Kd, Ke and WACC intervals. E.g. Auto sector Kd pie
says <7% - 33 implies 33 companies have Kd less than 7%, 14% -41 implies 41
companies have Kd in the range of 7-14% so on and so forth for all the
Doughnuts for Kd, Ke and WACC. The total sample entries are plotted on a
normal distribution Bell Curve to show the median Kd, Ke and WACC of the
respective sectors
The smoothened Kd, Ke and WACC are presented to give an analysis of CoC
prevalent in India in subsequent slide
Sr No Sectors
1 IT
2 Auto
3 Oil & Gas
4 FMCG
5 Healthcare
6 Metals
7 Power
8 Telecom
9 Chemicals
10 Construction Materials
11 Capital Goods
12 Infrastructure
13 Logistics
14 Realty
15 Media
16 Consumer Durables
13
14. Weighted Average Cost of Capital
Source: AceEquity and RBSA Research
10%
13%
11%
0%
2%
4%
6%
8%
10%
12%
14%
16%
Kd (pre-tax) Ke WACC
• Median WACC for all listed companies is approximately 11%. Oil & Gas and Capital Goods have the highest WACC and Telecom,
Power and Metals & Mining sectors have the lowest WACC. Median Ke and Kd for all sectors analyzed is 13% and 10%
respectively.
• Restrictions in various sectors for Foreign Direct investments (FDI) and restrictions on debt investments by Foreign Institutional
Investors (FIIs) causes sectoral differences in the availability of capital and the cost of raising such capital.
• Weighted average cost of capital (WACC) is also affected by capital structure choices peculiar to each sector e.g. Asset-heavy
sectors like Infrastructure and Realty tend to have more debt in their books.
• Sectors with highest Ke are Infrastructure and Realty (15% and 14% respectively) while Chemicals and FMCG have the lowest Ke
(12% each).
15. • Sectors with highest kd is Capital Goods 12% while Oil & Gas and Power have the lowest kd (7% each).
• The above chart indicates the Cost of Debt for the Sectors on a pre tax and post tax basis. The WACC as deduced in
erstwhile slide is on the basis of post tax Cost of Debt.
Weighted Average Cost of Capital
Source: AceEquity and RBSA Research
6%
10%
0%
2%
4%
6%
8%
10%
12%
14%
Kd (post Tax) Kd (pre-tax)
*Interest component is excluding Interest Cost that has been capitalized
16. Information Technology Automobiles
34
29
15
12
<6% 12% 18% >18%
0
0.5
0% 200% 400% 600% 800%
Kd
(Pre-tax)
0 11
68
11
<5% 10% 15% >15%
0
6
12
18
0% 10% 20% 30%
Ke
6
57
26
1
<6% 12% 18% >18%
0
5
10
15
0% 10% 20% 30%
WACC
Median Kd (post tax), Ke and WACC of the sector is at 5%, 12% and
11% respectively; with maximum number of companies falling
under the normal distribution. Total Number of Companies = 90
33
41
20
11
<7% 14% 21% >21%
0
5
0% 50% 100%
Kd
(Pre-tax)
0 9
81
15
<5% 10% 15% >15%
0
10
20
0% 5% 10% 15% 20%
WACC
0
5
10
15
20
0% 5% 10% 15% 20%
Ke
1
26
74
4
<5% 10% 15% >15%
Median Kd (post tax), Ke and WACC of the sector is at 7%, 13% and
11% respectively; with maximum number of companies falling
under the normal distribution; Total Number of Companies = 105
16
17. Oil & Gas FMCG
0
10
20
0% 10% 20% 30%
Ke
0
4
8
12
0% 10% 20% 30%
WACC
12
10
0
6
<6% 12% 18% >18%
0
5
22
1
<6% 12% 18% >18%
1
16
10
1
<6% 12% 18% >18%
Median Kd, Ke and WACC of the sector is at 5%, 14% and 12%
respectively; with maximum number of companies falling under the
normal distribution; Total Number of Companies = 28
0
0.2
0.4
0% 200% 400% 600% 800%
Kd
(Pre-tax)
23
20
8
9
<6% 12% 18% >18%
0 7
46
7
<5% 10% 15% >15%
3
23
30
4
<5% 10% 15% >15%
0
2
4
0% 20% 40% 60%
Kd
(Pre-tax)
0
3
6
9
12
15
18
0% 10% 20% 30%
Ke
0
5
10
15
0% 10% 20% 30%
WACC
Median Kd, Ke and WACC of the sector is at 6%, 12% and 10%
respectively; with maximum number of companies falling under the
normal distribution; Total Number of Companies = 60
17
18. Healthcare Metals & Mining
23
30
18
12
<6% 12% 18% >18%
0 11
60
12
<5% 10% 15% >15%
1
27
50
5
<5% 10% 15% >15%
0
0.05
0.1
0% 2000% 4000% 6000%
Kd
(Pre-tax)
0
5
10
15
20
0% 5% 10% 15% 20%
Ke
0
4
8
12
16
0% 10% 20% 30%
WACC
Median Kd, Ke and WACC of the sector is at 6%, 12% and 11%
respectively; with maximum number of companies falling under the
normal distribution; Total Number of Companies = 83
36
42
8
7
<8% 16% 24% >24%
0 8
64
21
<5% 10% 15% >15%
22
61
9 1
<7% 14% 21% >21%
0
4
8
12
16
0% 5% 10% 15% 20%
Ke
0
4
8
12
0% 10% 20% 30%
WACC
0
0.05
0.1
0% 2000% 4000% 6000% 8000%
Kd
(Pre-tax)
Median Kd, Ke and WACC of the sector is at 6%, 13% and 9%
respectively; with maximum number of companies falling under the
normal distribution; Number of Companies = 93
18
19. Power Telecom
12
14
01
<7% 14% 21% >21%
9
17
10
<8% 16% 24% >24%
0
4
8
12
0% 10% 20% 30%
Ke
0
4
8
12
0% 5% 10% 15% 20%
WACC
Median Kd, Ke and WACC of the sector is at 5%, 14% and 9%
respectively; with maximum number of companies falling under the
normal distribution; Total Number of Companies = 27
1
16
10
0
<8% 16% 24% >24%
0
2
4
6
8
0% 10% 20% 30%
Kd
(Pre-tax)
4
9
6
1
<7% 14% 21% >21%
1
18
10
<10% 20% 30% >30%
3
15
2 0
<7% 14% 21% >21%
0
2
4
0% 50% 100%
Kd
(Pre-tax)
0
5
10
15
0% 10% 20% 30%
Ke
0
5
10
0% 5% 10% 15% 20%
WACC
Median Kd, Ke and WACC of the sector is at 7%, 14% and 11%
respectively; with maximum number of companies falling under the
normal distribution; Total Number of Companies = 20
19
20. Chemicals Construction Materials
0
7
14
21
0% 5% 10% 15% 20%
Ke
0
4
8
12
16
0% 5% 10% 15% 20%
WACC
23
37
12
8
<7% 14% 21% >21%
0 6
60
14
<5% 10% 15% >15%
3
27
46
4
<5% 10% 15% >15%
Median Kd, Ke and WACC of the sector is at 6%, 12% and 11%
respectively; with maximum number of companies falling under the
normal distribution; Total Number of Companies = 80
0
1
2
0% 100% 200% 300%
Kd
(Pre-tax)
0
1
2
0% 100% 200% 300%
Kd
(Pre-tax)
0
4
8
12
0% 10% 20% 30%
Ke
0
4
8
12
0% 10% 20% 30%
WACC
14
28
10
2
<7% 14% 21% >21%
9
36
9
<5% 10% 15% >15%
2
16
32
4
<5% 10% 15% >15%
Median Kd, Ke and WACC of the sector is at 7%, 11% and 13%
respectively; with maximum number of companies falling under the
normal distribution; Total Number of Companies = 54
20
21. Capital Goods Infrastructure
0
0.1
0.2
0% 1000% 2000% 3000%
Kd
(Pre-tax)
0
4
8
12
16
0% 10% 20% 30%
Ke
0
5
10
15
0% 5% 10% 15% 20%
WACC
23
28
19
9
<7% 14% 21% >21%
0
50
29
0
<7% 14% 21% >21%
5
58
16
0
<7% 14% 21% >21%
Median Kd, Ke and WACC of the sector is at 8%, 13% and 11%
respectively; with maximum number of companies falling under the
normal distribution; Total Number of Companies = 54
0
4
8
0% 20% 40% 60%
Kd
(Pre-tax)
0
4
8
12
0% 10% 20% 30%
Ke
0
4
8
12
0% 10% 20% 30%
WACC
8
35
12
4
<7% 14% 21% >21%
0
12
32
15
<6% 12% 18% >18%
16
39
4 0
<7% 14% 21% >21%
Median Kd, Ke and WACC of the sector is at 7%, 15% and 9%
respectively; with maximum number of companies falling under the
normal distribution; Total Number of Companies = 59
21
22. Logistics Realty
0
5
10
0% 10% 20% 30%
Kd
(Pre-tax)
0
9
18
0% 5% 10% 15% 20%
Ke
0
5
10
15
0% 10% 20%
WACC
7
12
4
2
<6% 12% 18% >18%
00
17
8
<5% 10% 15% >15%
0
10
14
1
<5% 10% 15% >15%
Median Kd, Ke and WACC of the sector is at 6%, 14% and 11%
respectively; with maximum number of companies falling under the
normal distribution; Total Number of Companies = 25
0
1
2
0% 100% 200% 300%
Kd
(Pre-tax)
0
4
8
12
0% 10% 20% 30%
Ke
0
4
8
12
0% 10% 20% 30%
WACC
20
17
6
4
<7% 14% 21% >21%
1
31
13
2
<8% 16% 24% >24%
4
18
20
5
<5% 10% 15% >15%
Median Kd, Ke and WACC of the sector is at 5%, 14% and 10%
respectively; with maximum number of companies falling under the
normal distribution; Total Number of Companies = 47
22
23. Media & Entertainment Consumer Durables
0
7
14
0% 10% 20% 30%
Ke
0
7
14
0% 10% 20% 30%
WACC
9
25
7
5
<7% 14% 21% >21%
0
9
28
9
<5% 10% 15% >15%
2
35
9
0
<7% 14% 21% >21%
0
0.5
1
0% 200% 400% 600%
Kd
(Pre-tax)
Median Kd, Ke and WACC of the sector is at 7%, 13% and 11%
respectively; with maximum number of companies falling under the
normal distribution; Total Number of Companies = 46
0
5
10
0% 10% 20% 30%
Kd
(Pre-tax)
0
5
10
15
20
25
0% 5% 10% 15% 20%
Ke
0
5
10
15
0% 5% 10% 15% 20%
WACC
4
10
9
2
<6% 12% 18% >18%
0
9
15
1
<6% 12% 18% >18%
1
13
10
1
<6% 12% 18% >18%
Median Kd, Ke and WACC of the sector is at 7%, 13% and 11%
respectively; with maximum number of companies falling under the
normal distribution; Total Number of Companies = 25
23
24. Contact Us
Research Analysts:
Rachana Kothari Doshi Sudhir Shettty Nitin Kumar Abhishek Sundaram Shekha Arora
+91 22 6130 6067 +91 22 6130 6063 +91 22 6130 6065 +91 22 6130 6089 +91 22 6130 6047
rachana.doshi@rbsa.in sudhir.shetty@rbsa.in nitin.kumar@rbsa.in abhishek.sundaram@rbsa.in shekha.arora@rbsa.in
India Offices:
Mumbai Office:
21-23, T.V. Industrial Estate, 248-A,
S.K. Ahire Marg, Off. Dr. A. B. Road, Worli,
Mumbai - 400 030
Tel : +91 22 6130 6000
Delhi Office :
9 C, Hansalaya Building,
15, Barakhambha Road, Connaught place,
New Delhi -110 001
Tel : +91 11 2335 0635/37
+91 99585 62211
Bangalore Office:
Unit No. 104, 1st Floor, Sufiya Elite, #18,
Cunningham Road, Near Sigma Mall,
Bangalore - 560052
Tel : +91 80 4112 8593
+91 97435 50600
Ahmedabad Office:
912, Venus Atlantis Corporate Park,
Anand Nagar Rd, Prahaladnagar,
Ahmedabad - 380 015
Tel : +91 79 4050 6000
Surat Office:
37, 3rd Floor, Meher Park,
‘A’, Athwa Gate, Ring Road,
Surat - 395 001
Tel : +91 97243 20636
Jaipur Office:
Karmayog, A-8, Metal Colony,
Sikar Road,
Jaipur - 302 023
Tel : +91 141 233 5892
Global Offices:
New York Office:
212 Eastgate Dr.
Monmouth Junction
NJ 08852 , USA
Tel: +1 813 751 6474
Email: newyork@rbsa.in
Dubai Office :
ABCN, P. O. Box 183125
4th Floor, Block-B, Business Village, Deira
Dubai U.A.E.
Tel : +971 4 230 6084 / 85
Mob : +971 55 478 6464
+971 52 617 3699
Email: dubai@rbsa.in
Singapore Office:
17,Phillip Street ,
#05-01,Grand Building,
Singapore-048 695
Email: singapore@rbsa.in
Management:
Rajeev R. Shah | Managing Director & CEO Manish Kaneria | Director Gautam Mirchandani | Director
+91 79 4050 6070 +91 79 4050 6090 +91 22 6130 6000
rajeev@rbsa.in manish@rbsa.in gautam.mirchandani@rbsa.in