作者
Anthony J Bell, Terrence J Sejnowski
发表日期
1995/11
期刊
Neural computation
卷号
7
期号
6
页码范围
1129-1159
出版商
MIT Press
简介
We derive a new self-organizing learning algorithm that maximizes the information transferred in a network of nonlinear units. The algorithm does not assume any knowledge of the input distributions, and is defined here for the zero-noise limit. Under these conditions, information maximization has extra properties not found in the linear case (Linsker 1989). The nonlinearities in the transfer function are able to pick up higher-order moments of the input distributions and perform something akin to true redundancy reduction between units in the output representation. This enables the network to separate statistically independent components in the inputs: a higher-order generalization of principal components analysis. We apply the network to the source separation (or cocktail party) problem, successfully separating unknown mixtures of up to 10 speakers. We also show that a variant on the network architecture is able to …
引用总数
1996199719981999200020012002200320042005200620072008200920102011201220132014201520162017201820192020202120222023202463150191247272404380546510533581597462522513432465496497461484467493481456470439402197
学术搜索中的文章
A Bell, J Dziegiel, L Tebboth, E Weiss, M Hardman… - PSYCHOLOGIST, 2005