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Lecture 18: Testing CAPM. The following topics will be covered: Time Series Tests Sharpe (1964)/Litner (1965) version Black (1972) version Cross Sectional Tests Fama-MacBeth (1973) Approach. Review of CAPM. Let there be N risky assets with mean µ and variance Ω. Review of CAPM.
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Lecture 18: Testing CAPM • The following topics will be covered: • Time Series Tests • Sharpe (1964)/Litner (1965) version • Black (1972) version • Cross Sectional Tests • Fama-MacBeth (1973) Approach L18: CAPM
Review of CAPM • Let there be N risky assets with mean µ and variance Ω L18: CAPM
Review of CAPM • This is the case without risk free asset • We have • And • µop is the return of the zero beta portfolio • This is the Black version of CAPM L18: CAPM
Review of CAPM L18: CAPM
Review of CAPM L18: CAPM
Test of Sharpe-Lintner CAMP L18: CAPM
Time-Series Tests: Maximum Likelihood Approach • There are N assets and hence, N equations. • For each equation, we can run OLS and obtain estimates of i and i, I = 1,…,N. • We could also estimate the equations jointly. • Is there any advantage to doing this, that is, run the “seemingly unrelated” regression on the system? • As it turns out, joint estimation is useless if we only need estimates for ’s and ’s. • However, for our joint test, it’s not useless. We need the covariance matrix for our joint test. L18: CAPM
The Likelihood Function • We will assume that the distribution for excess returns are jointly normal. This is critical for the maximum likelihood approach. However, if we use Quasi ML, or GMM, we do not need normality assumption. • Given joint normality of excess returns, the likelihood function for the cross-section of excess returns in a single period is: L18: CAPM
The Likelihood Function • With T i.i.d. (over time) observations, the likelihood function is: L18: CAPM
MLE Estimates of Parameters • Why do it this way? Because if you know the distribution, MLE’s are • Consistent • Asymptotically efficient • Asymptotically normal • The log of the joint pdf viewed as a function of the unkown parameters, , , and . L18: CAPM
First Order Conditions • The ML parameter estimates maximize L. To find the estimators, set the FOCs to zero: • There are N of these derivataives one for each i. • There are N of these as well, one for each i. Finally, L18: CAPM
Solution • These are just OLS parameters for , and . L18: CAPM
Distributions of the Point Estimates • The distributions of the MLE’s conditional on the excess return of the market follows from the assumed joint normality of the excess returns and the i.i.d. assumption. • The variances and covariances of the estimators can be derived using the Fisher Information Matrix. • The information matrix is minus the matrix of second partials of the log-likelihood function with respect to the parameter vector. evaluated at the point estimates. L18: CAPM
Asymptotic Properties of Estimators • The estimators are consistent and have the distributions: • WN(T-2, ) indicates that the NxN covariance matrix T has a Wishart distribution with T-2 degrees of freedom, a multivariate generalization of the chi-squared distribution. • Note that is independent of both L18: CAPM
The Test Statistic • We estimated the unconstrained market model to obtain the MLEs. • Now, we impose the CAPM restrictions. • If the CAPM is true, under the null: H0: = 0 and under the alternative: HA: 0 • From your previous econometrics course, you probably remember that there are three ways of testing this. • If we only estimate the unconstrained model, we can the Wald test. • We will also consider likelihood ratio and Lagrangian multiplier tests. L18: CAPM
The Wald Test • A straightforward application (see Greene or earlier notes). which equals where we’ve substituted in for • Under the null, J0~2(N). • Note that is unknown. • Substitute a consistent estimate of it into the statistic and then under the null the distribution is asymptotically chi-squared. • The MLE of is a consistent estimator. L18: CAPM
We Can Do Better • The Wald test is an asymptotic test. • We, however, know the finite sample distribution. • We can use this to do the Gibbons Ross and Shaken (1989) test. • To do so, we will need the following theorem from Muirhead (1983). • Theorem: Let the m-vector x be distributed N(0,), let the (mxm) matrix A be distributed Wm(n,) with nm, and let x and A be independent. Then: L18: CAPM
GRS Statistic • Let • Applying the theorem, • Under the null, J1 ~ F(N,T-N-1). • We can construct J1 (and J0) using only the estimators from the unconstrained model. L18: CAPM
An Interpretation of J1 • GRS show that • q is the ex-post tangency portfolio constructed from the N assets plus the market portfolio. • The portfolio with the maximum (squared) Sharpe ratio must be the tangency portfolio. • When the ex-post q is m, J1 = 0. • As m’s squared SR decreases, J1 increases – evidence against the efficiency of m. L18: CAPM
The Likelihood Ratio Test • For the LR test, we must also estimate the constrained model, which is the S-L CAPM (=0). • FOCs: L18: CAPM
The Constrained Estimators • The estimators are consistent and have the following distributions (why T-1?): L18: CAPM
The LR Test • We know from econometrics (CLM p194) that • This test is based on the fact that –2 times the log of the likelihood ratio is asymptotically ~ 2 with d.f. equal to the number of restrictions under the null. • The test statistic is • CLM (p195) show that there is a monotonic relationship between J1 and J2 • Therefore we can derive finite sample distribution for J2 based on the finite sample distribution of J1 L18: CAPM
Jobson and Korkie (1982) Adjustment which is also asymptotically distributed as a • Why do we need different statistics? • Because although their asymptotic properties are similar, they may have different small-sample properties. L18: CAPM
Black version of CAMP L18: CAPM
Testable Implication • This is a nonlinear constraint. It may looks more complicated. But if you remember from your econometrics course, all three statsistics (Wald, Likelihood Ratio, Lagrangian Multiplier) can easily test nonlinear restrictions. • CLM construct test statistics J4, J5, and J6 to test the Black CAPM. See CLM p199-203. L18: CAPM
Size and Power • They also use simulations to compare small sample properties of all the statistics (Section 5.4 and 5.5 ) • Size simulation: simulate under the null, and compare the rejection rates under simulation with the theoretical rejection rates • Power simulation: simulate under the alternative, and see if rejection rate is high enough. L18: CAPM
Further Issues • What if assets returns are not normal? • One alternative approach is to use quasi-maximum likelihood. Under certain regularity conditions you can estimate the model as if the returns were normally distributed, and the Wald, Likelihood ratio, and Lagrangian multiplier tests are still valid (after adjusting for the covariance matrix for the errors). • However, small sample properties of QMLE are of serious concern. • Another alternative is to use GMM, which only rely on a few momentum conditions. L18: CAPM
Cross-sectional Test • Consider the cross-sectional model (Security Market Line): E(Ri) = Rf + βi (E(Rm) – Rf ) or, replacing expected returns with average returns, ave(Ri) = Rf + βi (E(Rm) – Rf ) + ei ave(Ri) = α + γβi+ ei • Sharpe-Lintner CAPM says that in the above cross-sectional regression, α should equal Rf and γ should equal E(Rm) – Rf . • To perform the above regression, we use βi as a regressor. However, βi is not directly observed. We can estimate βi using a market model (using time series observations) for each stock. But if we use the estimated βi , there is an error-in-variable problem for the above regression. • What’s the consequence of error-in-variable problem? • α upward biased and γ downward biased L18: CAPM
Issues with Cross-sectional Tests • To alleviate the error-in-variable problem, BJS and FM group stocks into equally weighted portfolios (betas of portfolios are more accurate) • But an arbitrarily formed portfolio tends to have beta = 1. • The maximize the power of test, group stocks into portfolios based on stocks’ betas. • Unsolved problems: errors ei are correlated across stocks. This causes problems for estimating standard deviations of coefficient estimates. • Fama and MacBeth: use a procedure that is now known as the “Fama-MacBeth regression” L18: CAPM
Fama and MacBeth (1973) • Perform the cross-sectional regression in each month, to obtain rolling estimates for α and γ. Call them αt and γt . Then, calculate the time series means and time series t-stats for αt and γt . • Test: ave(αt )= ave(Rf); and ave(γt ) >0 t-stat: ave(γt)/std(γt)*sqrt(T) • Discussion: under what assumptions is this t test valid and why? • They also perform the test using an extended model: Ri = γ0 + γ1βi+ γ2βi2 + γ3 si2 + ei and test: ave(γ2) = ave(γ3) = 0 L18: CAPM
Results from Cross-sectional Tests • Estimated α seems too high, relative to the average riskfree rate. • Estimated γ too low, relative to the average market risk premium. • Black version of CAPM seems more consistent with the data. • Other variables, such as squared beta and the variance of idiosyncratic component of returns, do not have marginal power to explain average returns. • In other words, C1 and C2 seem to hold; C3 is rejected. L18: CAPM
Exercises • CLM L18: CAPM