指数梯度下降算法的分析

S. I. Hill, R. C. Williamson
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引用次数: 4

摘要

本文分析了目前计算学习理论界研究的三种算法:梯度下降(GD)算法、正负权指数梯度算法(EG/spl plusmn/ algorithm)和非归一化正负权指数梯度算法(EGU/spl plusmn/ algorithm)。分析是在信号处理社区使用的形式,是在均方误差方面。对于这类算法,发现了学习率与预测均方误差(MSE)之间的关系。涉及模拟声学回波消除的试验进行了,其中选择了算法的学习率,使它们收敛到相同的稳态MSE。这些试验表明,在目标稀疏的情况下,EG/spl plusmn/算法通常比执行非常相似的GD或EGU/spl plusmn/算法收敛得更快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An analysis of the exponentiated gradient descent algorithm
This paper analyses three algorithms previously studied in the computational learning theory community: the gradient descent (GD) algorithm, the exponentiated gradient algorithm with positive and negative weights (EG/spl plusmn/ algorithm) and the exponentiated gradient algorithm with unnormalised positive and negative weights (EGU/spl plusmn/ algorithm). The analysis is of the form used in the signal processing community and is in terms of the mean square error. A relationship between the learning rate and the mean squared error (MSE) of predictions is found for the family of algorithms. Trials involving simulated acoustic echo cancellation are conducted whereby learning rates for the algorithms are selected such that they converge to the same steady state MSE. These trials demonstrate that, in the case that the target is sparse, the EG/spl plusmn/ algorithm typically converges more quickly than the GD or EGU/spl plusmn/ algorithms which perform very similarly.
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