In information theory and statistics, Kullback's inequality is a lower bound on the Kullback–Leibler divergence expressed in terms of the large deviations rate function.[1] If P and Q are probability distributions on the real line, such that P is absolutely continuous with respect to Q, i.e. P << Q, and whose first moments exist, then

where is the rate function, i.e. the convex conjugate of the cumulant-generating function, of , and is the first moment of

The Cramér–Rao bound is a corollary of this result.

Proof edit

Let P and Q be probability distributions (measures) on the real line, whose first moments exist, and such that P << Q. Consider the natural exponential family of Q given by

 
for every measurable set A, where   is the moment-generating function of Q. (Note that Q0 = Q.) Then
 
By Gibbs' inequality we have   so that
 
Simplifying the right side, we have, for every real θ where  
 
where   is the first moment, or mean, of P, and   is called the cumulant-generating function. Taking the supremum completes the process of convex conjugation and yields the rate function:
 

Corollary: the Cramér–Rao bound edit

Start with Kullback's inequality edit

Let Xθ be a family of probability distributions on the real line indexed by the real parameter θ, and satisfying certain regularity conditions. Then

 

where   is the convex conjugate of the cumulant-generating function of   and   is the first moment of  

Left side edit

The left side of this inequality can be simplified as follows:

 
which is half the Fisher information of the parameter θ.

Right side edit

The right side of the inequality can be developed as follows:

 
This supremum is attained at a value of t=τ where the first derivative of the cumulant-generating function is   but we have   so that
 
Moreover,
 

Putting both sides back together edit

We have:

 
which can be rearranged as:
 

See also edit

Notes and references edit

  1. ^ Fuchs, Aimé; Letta, Giorgio (1970). "L'inégalité de Kullback. Application à la théorie de l'estimation". Séminaire de Probabilités de Strasbourg. Séminaire de probabilités. 4. Strasbourg: 108–131.