Introduction to the Mathematical and Statistical Foundations of Econometrics
First — and Second-Order Conditions
The following conditions guarantee that the first - and second-order conditions for a maximum hold.
Assumption 8.1: The parameter space © is convex and в0 is an interior point of ©. The likelihood function L n (в) is, with probability 1, twice continuously differentiable in an open neighborhood ©0 of в0, and, for i, i2 = 1, 2, 3,...,m,
and
Theorem 8.2: Under Assumption 8.1,
= —Var
Proof: For notational convenience I will prove this theorem for the univariate parameter case m = 1 only. Moreover, I will focus on the case that Z = (zT, •••, zT )T is a random sample from an absolutely continuous distribution with density f (z^0).
Observe that
1 n f
E [ln( L n (в ))/n] = -£> [ln( f( Zj |в))] = Ы(/^в ))f(z^o)dz,
n j=i J
(8.23)
It follows from Taylor’s theorem that, for в e ©0 and every 8 = 0 for which
в + 8 e ©0, there exists a A.(z, 8) e [0, 1] such that
ln(f (z^ + 8)) — ln(f (z|в))
= 8 d ln(f(z |в)) 1 82 d 2ln(f (z6 + k(z,8)8))
d в + 2 8 (d (в + Mz,8)8))2
Note that, by the convexity of ©, в0 + A.(z, 8)8 e ©• Therefore, it follows from condition (8.22), the definition of a derivative, and the dominated convergence theorem that
d f f d ln( [Ш))
d^j Щ/^в))f(z|вo)dz = j -------------- f(z|вo)dz• (8.25)
Similarly, it follows from condition (8.21), Taylor’s theorem, and the dominated convergence theorem that
Moreover,
The first part of Theorem 8.2 now follows from (8.23) through (8.27).
As is the case for (8.25) and (8.26), it follows from the mean value theorem and conditions (8.21) and (8.22) that
and
[(dAz^ )/d в2„m4J| [d2 f (z^ ),,
- Д-№|в»)'4' - = ! - wdA
- f (d ln(f(z|9)) d)2/(-іво)^г|в.»o.
The adaptation of the proof to the general case is reasonably straightforward and is therefore left as an exercise. Q. E.D.
The matrix
H = Var (9 ln( L n (в ))/дв T|в =во) (8.30)
is called the Fisher information matrix. As we have seen in Chapter 5, the inverse of the Fisher information matrix is just the Cramer-Rao lower bound of the variance matrix of an unbiased estimator of в0.