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COLT
1995
Springer

A Comparison of New and Old Algorithms for a Mixture Estimation Problem

13 years 8 months ago
A Comparison of New and Old Algorithms for a Mixture Estimation Problem
We investigate the problem of estimating the proportion vector which maximizes the likelihood of a given sample for a mixture of given densities. We adapt a framework developed for supervised learning and give simple derivations for many of the standard iterative algorithms like gradient projection and EM. In this framework, the distance between the new and old proportion vectors is used as a penalty term. The square distance leads to the gradient projection update, and the relative entropy to a new update which we call the exponentiated gradient update (EGη). Curiously, when a second order Taylor expansion of the relative entropy is used, we arrive at an update EMη which, for η = 1, gives the usual EM update. Experimentally, both the EMη-update and the EGη-update for η > 1 outperform the EM algorithm and its variants. We also prove a polynomial bound on the rate of convergence of the EGη algorithm.
David P. Helmbold, Yoram Singer, Robert E. Schapir
Added 25 Aug 2010
Updated 25 Aug 2010
Type Conference
Year 1995
Where COLT
Authors David P. Helmbold, Yoram Singer, Robert E. Schapire, Manfred K. Warmuth
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