Title :
Functional Bregman Divergence and Bayesian Estimation of Distributions
Author :
Frigyik, B?©la A. ; Srivastava, Santosh ; Gupta, Maya R.
Author_Institution :
Dept. of Math., Purdue Univ., Lafayette, IN
Abstract :
A class of distortions termed functional Bregman divergences is defined, which includes squared error and relative entropy. A functional Bregman divergence acts on functions or distributions, and generalizes the standard Bregman divergence for vectors and a previous pointwise Bregman divergence that was defined for functions. A recent result showed that the mean minimizes the expected Bregman divergence. The new functional definition enables the extension of this result to the continuous case to show that the mean minimizes the expected functional Bregman divergence over a set of functions or distributions. It is shown how this theorem applies to the Bayesian estimation of distributions. Estimation of the uniform distribution from independent and identically drawn samples is presented as a case study.
Keywords :
Bayes methods; least squares approximations; Bayesian estimation; functional Bregman divergence; uniform distribution estimation; Bayesian methods; Data processing; Distortion measurement; Entropy; Estimation theory; Information theory; Inverse problems; Logistics; Mathematics; Statistical learning; Bayesian estimation; Bregman divergence; FrÉchet derivative; convexity; uniform distribution;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2008.929943