隐马尔可夫模型的变分Kullback-Leibler散度

J. Hershey, P. Olsen, Steven J. Rennie
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引用次数: 22

摘要

散度度量是统计学和模式识别中广泛使用的工具。两个隐马尔可夫模型(hmm)之间的Kullback-Leibler (KL)散度在语音和图像识别领域特别有用。尽管KL散度对于许多分布(包括高斯分布)是可处理的,但对于混合模型或hmm来说,它通常是不可处理的。最近,变分近似被引入到有效地计算两个混合模型之间的KL散度和Bhattacharyya散度,通过将它们简化为混合组分之间的散度。在这里,我们推广这些技术,使用递归后向算法来处理hmm之间的散度。本文介绍了两种这样的方法,其中一种方法给出了KL散度的上界,另一种方法给出了一个递归的闭形式解。KL和Bhattacharyya分歧,以及加权编辑距离技术,用于预测单词对的混淆性的任务进行评估。
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Variational Kullback-Leibler divergence for Hidden Markov models
Divergence measures are widely used tools in statistics and pattern recognition. The Kullback-Leibler (KL) divergence between two hidden Markov models (HMMs) would be particularly useful in the fields of speech and image recognition. Whereas the KL divergence is tractable for many distributions, including Gaussians, it is not in general tractable for mixture models or HMMs. Recently, variational approximations have been introduced to efficiently compute the KL divergence and Bhattacharyya divergence between two mixture models, by reducing them to the divergences between the mixture components. Here we generalize these techniques to approach the divergence between HMMs using a recursive backward algorithm. Two such methods are introduced, one of which yields an upper bound on the KL divergence, the other of which yields a recursive closed-form solution. The KL and Bhattacharyya divergences, as well as a weighted edit-distance technique, are evaluated for the task of predicting the confusability of pairs of words.
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