HMM training based on CV-EM and CV Gaussian mixture optimization

T. Shinozaki, Tatsuya Kawahara
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引用次数: 3

Abstract

A combination of the cross-validation EM (CV-EM) algorithm and the cross-validation (CV) Gaussian mixture optimization method is explored. CV-EM and CV Gaussian mixture optimization are our previously proposed training algorithms that use CV likelihood instead of the conventional training set likelihood for robust model estimation. Since CV-EM is a parameter optimization method and CV Gaussian mixture optimization is a structure optimization algorithm, these methods can be combined. Large vocabulary speech recognition experiments are performed on oral presentations. It is shown that both CV-EM and CV Gaussian mixture optimization give lower word error rates than the conventional EM, and their combination is effective to further reduce the word error rate.
基于CV- em和CV高斯混合优化的HMM训练
探讨了交叉验证EM算法与交叉验证高斯混合优化方法的结合。CV- em和CV高斯混合优化是我们之前提出的训练算法,它们使用CV似然而不是传统的训练集似然进行鲁棒模型估计。由于CV- em是一种参数优化方法,而CV高斯混合优化是一种结构优化算法,因此这两种方法可以结合使用。在口头报告中进行了大词汇语音识别实验。结果表明,CV-EM和CV高斯混合优化均比传统EM具有更低的单词错误率,并且两者的结合可以有效地进一步降低单词错误率。
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