数据驱动的HMM统计依赖关系扩展

J. Bilmes
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引用次数: 23

摘要

本文提出了一种原则性地放宽HMM条件独立性假设的新方法。在不增加状态数量的情况下,HMM的建模能力通过只包括那些被认为既相关又有区别的额外概率依赖项(对周围观察上下文)来提高。条件互信息用于确定相关性和可辨别性。介绍了扩展的高斯混合hmm和新的EM更新方程。在一个孤立的单词语音数据库中,结果显示,与具有相同状态数的HMM相比,平均单词错误率提高了34%,与具有相同参数数的HMM相比,平均错误率提高了15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven extensions to HMM statistical dependencies
In this paper, a new technique is introduced that relaxes the HMM conditional independence assumption in a principled way. Without increasing the number of states, the modeling power of an HMM is increased by including only those additional probabilistic dependencies (to the surrounding observation context) that are believed to be both relevant and discriminative. Conditional mutual information is used to determine both relevance and discriminability. Extended Gaussian-mixture HMMs and new EM update equations are introduced. In an isolated word speech database, results show an average 34% word error improvement over an HMM with the same number of states, and a 15% improvement over an HMM with a comparable number of parameters.
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