Structural Bayesian Linear Regression for Hidden Markov Models

被引:0
作者
Shinji Watanabe
Atsushi Nakamura
Biing-Hwang (Fred) Juang
机构
[1] Mitsubishi Electric Research Laboratories (MERL),NTT Communication Science Laboratories
[2] NTT Corporation,Center for Signal and Image Processing
[3] Georgia Institute of Technology,undefined
来源
Journal of Signal Processing Systems | 2014年 / 74卷
关键词
Hidden Markov model; Linear regression; Variational bayes; Structural prior;
D O I
暂无
中图分类号
学科分类号
摘要
Linear regression for Hidden Markov Model (HMM) parameters is widely used for the adaptive training of time series pattern analysis especially for speech processing. The regression parameters are usually shared among sets of Gaussians in HMMs where the Gaussian clusters are represented by a tree. This paper realizes a fully Bayesian treatment of linear regression for HMMs considering this regression tree structure by using variational techniques. This paper analytically derives the variational lower bound of the marginalized log-likelihood of the linear regression. By using the variational lower bound as an objective function, we can algorithmically optimize the tree structure and hyper-parameters of the linear regression rather than heuristically tweaking them as tuning parameters. Experiments on large vocabulary continuous speech recognition confirm the generalizability of the proposed approach, especially when the amount of adaptation data is limited.
引用
收藏
页码:341 / 358
页数:17
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