166 The Basics of financial economeTrics
We can conclude that all regression slope estimates are highly significant; the
intercept estimates are insignificant in all cases. There is a considerable differ-
ence between the robust (0.40) and the nonrobust (0.45) regression coefficient.
Robust Estimation of Covariance and Correlation Matrices
Variance-covariance matrices are central to financial modeling. In fact, the
estimation of the variance-covariance matrices is critical for portfolio man-
agement and asset allocation. Suppose the logarithm of returns is a multi-
variate random vector written as
rt = μ + εt
The random disturbances εt is characterized by a covariance matrix Ω.
The correlation coefficient between two variables X and Y is defined as:
ρ
σ
σσ
XY
XY
X
XY
XY
XY
,
,
(,)
(,)
() ()
=
==
corr
cov
varvar YY
The correlation coefficient fully represents the dependence structure of
multivariate normal distribution. More in general, the correlation coeffi-
cient is a valid measure of dependence for elliptical distributions (i.e., distri-
butions that are constants on ellipsoids). In other cases, different measures
of dependence are needed (e.g., copula functions).^3
The empirical covariance between two variables, X and Y, is defined as
σˆXY, ()i ()
i
N
=N− XX−−YYi
=
∑
1
(^11)
where Xi and Yi are N samples of the variables X and Y and:
X
N
XY
N
iiY
i
N
i
N
==
= =
∑∑
11
1 1
are the empirical means of the variables.
(^3) Paul Embrechts, Filip Lindskog, and Alexander McNeil, “Modelling Dependence
with Copulas and Applications to Risk Management,” in Handbook of Heavy
Tailed Distributions in Finance, ed. S. T. Rachev (Amsterdam: Elsevier/North-
Holland, 2003).