Sciweavers

CORR
2006
Springer

PAC Classification based on PAC Estimates of Label Class Distributions

13 years 5 months ago
PAC Classification based on PAC Estimates of Label Class Distributions
A standard approach in pattern classification is to estimate the distributions of the label classes, and then to apply the Bayes classifier to the estimates of the distributions in order to classify unlabeled examples. As one might expect, the better our estimates of the label class distributions, the better the resulting classifier will be. In this paper we make this observation precise by identifying risk bounds of a classifier in terms of the quality of the estimates of the label class distributions. We show how PAC learnability relates to estimates of the distributions that have a PAC guarantee on their L1 distance from the true distribution, and we bound the increase in negative log likelihood risk in terms of PAC bounds on the KL-divergence. We give an inefficient but generalpurpose smoothing method for converting an estimated distribution that is good under the L1 metric into a distribution that is good under the KL-divergence. keywords. Bayes error, Bayes classifier, plug-in de...
Nick Palmer, Paul W. Goldberg
Added 11 Dec 2010
Updated 11 Dec 2010
Type Journal
Year 2006
Where CORR
Authors Nick Palmer, Paul W. Goldberg
Comments (0)