FINANCE 8. Capital Markets and The Pricing of Risk Professor André Farber Solvay Business School...

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FINANCE8. Capital Markets and The Pricing of Risk

Professor André Farber

Solvay Business SchoolUniversité Libre de BruxellesFall 2007

MBA 2007 Risk and return |2April 18, 2023

Introduction to risk

• Objectives for this session :

– 1. Review the problem of the opportunity cost of capital

– 2. Analyze return statistics

– 3. Introduce the variance or standard deviation as a measure of risk for a portfolio

– 4. See how to calculate the discount rate for a project with risk equal to that of the market

– 5. Give a preview of the implications of diversification

MBA 2007 Risk and return |3April 18, 2023

Setting the discount rate for a risky project

• Stockholders have a choice:

– either they invest in real investment projects of companies

– or they invest in financial assets (securities) traded on the capital market

• The cost of capital is the opportunity cost of investing in real assets

• It is defined as the forgone expected return on the capital market with the same risk as the investment in a real asset

MBA 2007 Risk and return |4April 18, 2023

Uncertainty: 1952 – 1973- the Golden Years

• 1952: Harry Markowitz*

– Portfolio selection in a mean –variance framework

• 1953: Kenneth Arrow*

– Complete markets and the law of one price

• 1958: Franco Modigliani* and Merton Miller*

– Value of company independant of financial structure

• 1963: Paul Samuelson* and Eugene Fama

– Efficient market hypothesis

• 1964: Bill Sharpe* and John Lintner

– Capital Asset Price Model

• 1973: Myron Scholes*, Fisher Black and Robert Merton*

– Option pricing model

MBA 2007 Risk and return |5April 18, 2023

Three key ideas

• 1. Returns are normally distributed random variables

• Markowitz 1952: portfolio theory, diversification

• 2. Efficient market hypothesis

• Movements of stock prices are random

• Kendall 1953

• 3. Capital Asset Pricing Model

• Sharpe 1964 Lintner 1965

• Expected returns are function of systematic risk

MBA 2007 Risk and return |6April 18, 2023

Preview of what follow

• First, we will analyze past markets returns.• We will:

– compare average returns on common stocks and Treasury bills

– define the variance (or standard deviation) as a measure of the risk of a portfolio of common stocks

– obtain an estimate of the historical risk premium (the excess return earned by investing in a risky asset as opposed to a risk-free asset)

• The discount rate to be used for a project with risk equal to that of the market will then be calculated as the expected return on the market:

Expected return on the market

Current risk-free rate

Historical risk premium

= +

MBA 2007 Risk and return |7April 18, 2023

Implications of diversification

• The next step will be to understand the implications of diversification.

• We will show that:

– diversification enables an investor to eliminate part of the risk of a stock held individually (the unsystematic - or idiosyncratic risk).

– only the remaining risk (the systematic risk) has to be compensated by a higher expected return

– the systematic risk of a security is measured by its beta (), a measure of the sensitivity of the actual return of a stock or a portfolio to the unanticipated return in the market portfolio

– the expected return on a security should be positively related to the security's beta

MBA 2007 Risk and return |8April 18, 2023

Capital Asset Pricing Model

Expected return

Beta

Risk free interest rate

r

rM

)( FMF rrrrBeta (equity)

Nov. 27, 2006

Source: fi nance.yahoo.com (in key statistics)

Ticker Company Beta

WMT Wal-Mart 0.06

BUD Budweiser 0.32

KO Coca-Cola 0.76

MSFT Microsof t 0.79

SPX S&P 500 I ndex 1.00

SBUX Starbucks 1.17

I NTC I ntel 1.66

ADBE Adobe 1.81

AAPL Apple 2.03

F Ford 2.27

MBA 2007 Risk and return |9April 18, 2023

Returns

• The primitive objects that we will manipulate are percentage returns over a period of time:

• The rate of return is a return per dollar (or £, DEM,...) invested in the asset, composed of

– a dividend yield

– a capital gain

• The period could be of any length: one day, one month, one quarter, one year.

• In what follow, we will consider yearly returns

1

1

1

t

tt

t

tt P

PP

P

divR

MBA 2007 Risk and return |10April 18, 2023

Ex post and ex ante returns

• Ex post returns are calculated using realized prices and dividends

• Ex ante, returns are random variables

– several values are possible

– each having a given probability of occurence

• The frequency distribution of past returns gives some indications on the probability distribution of future returns

MBA 2007 Risk and return |11April 18, 2023

Frequency distribution

• Suppose that we observe the following frequency distribution for past annual returns over 50 years. Assuming a stable probability distribution, past relative frequencies are estimates of probabilities of future possible returns .

Realized Return Absolutefrequency

Relativefrequency

-20% 2 4%

-10% 5 10%

0% 8 16%

+10% 20 40%

+20% 10 20%

+30% 5 10%

50 100%

MBA 2007 Risk and return |12April 18, 2023

Mean/expected return

• Arithmetic Average (mean)

– The average of the holding period returns for the individual years

• Expected return on asset A:

– A weighted average return : each possible return is multiplied or weighted by the probability of its occurence. Then, these products are summed to get the expected return.

N

RRRRMean N

...21

1...

return ofy probabilit with

...)(

21

2211

n

ii

nn

ppp

Rp

RpRpRpRE

MBA 2007 Risk and return |13April 18, 2023

Variance -Standard deviation

• Measures of variability (dispersion)

• Variance

• Ex post: average of the squared deviations from the mean

• Ex ante: the variance is calculated by multiplying each squared deviation from the expected return by the probability of occurrence and summing the products

• Unit of measurement : squared deviation units. Clumsy..

• Standard deviation : The square root of the variance

• Unit :return

VarR R R R R R

TT

2 12

22 2

1( ) ( ) ... ( )

Var R Expected RA A A( ) ) 2 2 val ue of (RA

Var R p R R p R R p R RA A A A A A N A N A( ) ( ) ( ) ... ( ), , , 21 1

22 2

2 2

SD R Var RA A A( ) ( )

MBA 2007 Risk and return |14April 18, 2023

Return Statistics - Example

Return Proba Squared Dev-20% 4% 0.08526-10% 10% 0.03686

0% 16% 0.0084610% 40% 0.0000620% 20% 0.0116630% 10% 0.04326

Exp.Return 9.20%Variance 0.01514Standard deviation 12.30%

MBA 2007 Risk and return |15April 18, 2023

Normal distribution

• Realized returns can take many, many different values (in fact, any real number > -100%)

• Specifying the probability distribution by listing:

– all possible values

– with associated probabilities

• as we did before wouldn't be simple.

• We will, instead, rely on a theoretical distribution function (the Normal distribution) that is widely used in many applications.

• The frequency distribution for a normal distribution is a bellshaped curve.

• It is a symetric distribution entirely defined by two parameters

• – the expected value (mean)

• – the standard deviation

MBA 2007 Risk and return |16April 18, 2023

Belgium - Monthly returns 1951 - 1999

Bourse de Bruxelles 1951-1999

0.00

20.00

40.00

60.00

80.00

100.00

120.00

140.00

160.00

180.00

-20.

00

-18.

00

-16.

00

-14.

00

-12.

00

-10.

00

-8.0

0

-6.0

0

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00

2.00

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00

6.00

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00

10.0

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12.0

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14.0

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16.0

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20.0

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22.0

0

24.0

0

26.0

0

28.0

0

30.0

0

Rentabilité mensuelle

Fré

qu

en

ce

MBA 2007 Risk and return |17April 18, 2023

S&P 500

S&P 500 Daily returns (June 96 - Nov 04) StDev = 1.23% n=2,122

0

50

100

150

200

250

300

350

400

450

-8.0

0%

-7.5

0%

-7.0

0%

-6.5

0%

-6.0

0%

-5.5

0%

-5.0

0%

-4.5

0%

-4.0

0%

-3.5

0%

-3.0

0%

-2.5

0%

-2.0

0%

-1.5

0%

-1.0

0%

-0.5

0%0.

00%

0.50

%1.

00%

1.50

%2.

00%

2.50

%3.

00%

3.50

%4.

00%

4.50

%5.

00%

5.50

%6.

00%

6.50

%7.

00%

7.50

%8.

00%

MBA 2007 Risk and return |18April 18, 2023

Microsoft

Microsoft Daily 1996-2003 StDev=2.58% (n=1,850)

0

20

40

60

80

100

120

140

160

180

200

-10.

0%

-9.5

%

-9.0

%

-8.5

%

-8.0

%

-7.5

%

-7.0

%

-6.5

%

-6.0

%

-5.5

%

-5.0

%

-4.5

%

-4.0

%

-3.5

%

-3.0

%

-2.5

%

-2.0

%

-1.5

%

-1.0

%

-0.5

%

0.0%

0.5%

1.0%

1.5%

2.0%

2.5%

3.0%

3.5%

4.0%

4.5%

5.0%

5.5%

6.0%

6.5%

7.0%

7.5%

8.0%

8.5%

9.0%

9.5%

10.0

%

MBA 2007 Risk and return |19April 18, 2023

Normal distribution illustrated

Normal distribution

0.0000

0.0050

0.0100

0.0150

0.0200

0.0250

68.26%

95.44%

Standard deviation from mean

MBA 2007 Risk and return |20April 18, 2023

Risk premium on a risky asset

• The excess return earned by investing in a risky asset as opposed to a risk-free asset

• U.S.Treasury bills, which are a short-term, default-free asset, will be used a the proxy for a risk-free asset.

• The ex post (after the fact) or realized risk premium is calculated by substracting the average risk-free return from the average risk return.

• Risk-free return = return on 1-year Treasury bills

• Risk premium = Average excess return on a risky asset

MBA 2007 Risk and return |21April 18, 2023

Total returns US 1926-2002

Arithmetic Mean

Standard Deviation

Risk Premium

Common Stocks 12.2% 20.5% 8.4%

Small Company Stocks 16.9 33.2 13.1

Long-term Corporate Bonds 6.2 8.7 2.4

Long-term government bonds 5.8 9.4 2.0

Intermediate-term government bond (1926-1999)

5.4 5.8 1.6

U.S. Treasury bills 3.8 3.2

Inflation 3.1 4.4

Source: Ross, Westerfield, Jaffee (2005) Table 9.2

MBA 2007 Risk and return |22April 18, 2023

Market Risk Premium: The Very Long Run

1802-1870 1871-1925 1926-1999 1802-2002

Common Stock 6.8 8.5 12.2 9.7

Treasury Bills 5.4 4.1 3.8 4.3

Risk premium 1.4 4.4 8.4 5.4

Source: Ross, Westerfield, Jaffee (2005) Table 9A.1

The equity premium puzzle:

Was the 20th century an anomaly?

MBA 2007 Risk and return |23April 18, 2023

Diversification

Risk Reduction of Equally Weighted Portfolios

0.00%

5.00%

10.00%

15.00%

20.00%

25.00%

30.00%

35.00%

# stocks in portfolio

Po

rtfo

lio

sta

nd

ard

de

via

tio

n

Market risk

Unique risk

MBA 2007 Risk and return |24April 18, 2023

Conclusion

• 1. Diversification pays - adding securities to the portfolio decreases risk. This is because securities are not perfectly positively correlated

• 2. There is a limit to the benefit of diversification : the risk of the portfolio can't be less than the average covariance (cov) between the stocks

• The variance of a security's return can be broken down in the following way:

• The proper definition of the risk of an individual security in a portfolio M is the covariance of the security with the portfolio:

Total risk of individual security

Portfolio risk

Unsystematic or diversifiable risk

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