160 The Basics of financial economeTrics
Thus far we have discussed methods to ascertain regression robustness.
Let’s now discuss methods to “robustify” the regression estimates, namely,
methods based on M-estimators and W-estimators.
Robust Regressions Based on M-Estimators
Let’s first discuss how to make robust regressions with Huber M-estimators.
The LS estimators are M-estimators because they are obtained by minimiz-
ing the sum of the squared residuals. However they are not robust. We can
generalize equation (8.3) by introducing the weighting function:
ρρ=−β
=
YXtj∑ tj
j
N
1
(8.6)
We rewrite the M-estimator as follows:
MYNt X
t
T
tjtj
j
N
t
ββ 0 ρε ρβ
11
(),,... = ()=−
==
∑∑
==
∑
1
T
And we generalize the LS by minimizing the M-estimator with respect to
the coefficients β. To determine the minimum, we equate to zero the partial
derivatives of the M-estimator. If we define the functions:
ψ
ρψ
x
dx
dx
wx
x
x
()=
()
()=
()
,
We can write the following conditions:
∂
∂
=
∂−
∂
=−
=
=
∑
∑
θ
β
ρβ
β
ψβ
k
tjtj
j
N
t k
T
tj
YX
YX
1
1
ttj
j
N
t
T
Xktk N
= =
∑∑
==
1 1
00 ,,..., 1
ψβYXtjtj XwYXβ
j
N
t
T
tk tjtj
j
N
−
=−
===
∑∑∑
111
−
=
==
∑∑
t
T
tjtj
j
N
YXXtk
11
β 0
or, in matrix form
X′WXβ = X′WY
where W is a diagonal matrix.
The above is not a linear system because the weighting function is in
general a nonlinear function of the data. A typical approach is to determine