The single-index model (SIM) is a simple asset pricing model to measure both the risk and the return of a stock. The model has been developed by William Sharpe in 1963 and is commonly used in the finance industry. Mathematically the SIM is expressed as:
rit-rf=\alphai+\betai(rmt-rf)+\epsilonit
\epsilonit\sim
2) | |
N(0,\sigma | |
i |
rit is return to stock i in period t
rf is the risk free rate (i.e. the interest rate on treasury bills)
rmt is the return to the market portfolio in period t
\alphai
\betai
Note that
rit-rf
rmt-rf
\epsilonit
\sigmai
These equations show that the stock return is influenced by the market (beta), has a firm specific expected value (alpha) and firm-specific unexpected component (residual). Each stock's performance is in relation to the performance of a market index (such as the All Ordinaries). Security analysts often use the SIM for such functions as computing stock betas, evaluating stock selection skills, and conducting event studies.
To simplify analysis, the single-index model assumes that there is only 1 macroeconomic factor that causes the systematic risk affecting all stock returns and this factor can be represented by the rate of return on a market index, such as the S&P 500.
According to this model, the return of any stock can be decomposed into the expected excess return of the individual stock due to firm-specific factors, commonly denoted by its alpha coefficient (α), the return due to macroeconomic events that affect the market, and the unexpected microeconomic events that affect only the firm.
The term
\betai(rm-rf)
\epsiloni
The index model is based on the following:
The single-index model assumes that once the market return is subtracted out the remaining returns are uncorrelated:
E((Ri,t-\betaimt)(Rk,t-\betakmt))=0,
which gives
Cov(Ri,Rk)=\betai\beta
2. | |
k\sigma |
This is not really true, but it provides a simple model. A more detailed model would have multiple risk factors. This would require more computation, but still less than computing the covariance of each possible pair of securities in the portfolio. With this equation, only the betas of the individual securities and the market variance need to be estimated to calculate covariance. Hence, the index model greatly reduces the number of calculations that would otherwise have to be made to model a large portfolio of thousands of securities.