抄録
A new likelihood maximization algorithm called the α-EM algorithm (α-Expectation-Maximization algorithm) is presented. This algorithm outperforms the traditional or logarithmic EM algorithm in terms of convergence speed for an appropriate range of the design parameter α. The log-EM algorithm is a special case corresponding to α = -1. The main idea behind the α-EM algorithm is to search for an effective surrogate function or a minorizer for the maximization of the observed data's likelihood ratio. The surrogate function adopted in this paper is based upon the α-logarithm which is related to the convex divergence. The convergence speed of the α-EM algorithm is theoretically analyzed through α-dependent update matrices and illustrated by numerical simulations. Finally, general guidelines for using the α-logarithmic methods are given. The choice of alternative surrogate functions is also discussed.
本文言語 | English |
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ページ(範囲) | 692-706 |
ページ数 | 15 |
ジャーナル | IEEE Transactions on Information Theory |
巻 | 49 |
号 | 3 |
DOI | |
出版ステータス | Published - 2003 3月 |
ASJC Scopus subject areas
- 情報システム
- 電子工学および電気工学