In this paper we propose discriminative training of hierarchical acoustic models for large vocabulary continuous speech recognition tasks. After presenting our hierarchical modeling framework, we describe how the models can be generated with either minimum classification error or large-margin training. Experiments on a large vocabulary lecture transcription task show that the hierarchical model can yield more than 1.0% absolute word error rate reduction over non-hierarchical models for both kinds of discriminative training.Taiwan Merit Scholarship (Number NSC-095- SAF-I-564-040-TMS
Recently there has been interest in structured discriminative models for speech recognition. In thes...
Recently there has been interest in structured discriminative models for speech recognition. In thes...
This report describes the implementation of a discriminative HMM parameter estimation technique know...
In this work, a framework for efficient discriminative training and modeling is developed and implem...
[[abstract]]This thesis sets the goal at investigating the consistency properties underlying the mos...
This paper considers discriminative training of language models for large vocabulary continuous spee...
Abstract—The minimum classification error (MCE) framework for discriminative training is a simple an...
Automatic speech recognition (ASR) depends critically on building acoustic models for linguistic uni...
This paper describes our work on applying ensembles of acoustic models to the problem of large voca...
This paper describes a new approach to acoustic modeling for large vocabulary continuous speech reco...
We present a proposal of a kernel-based model for large vocabulary continuous speech recognizer. The...
The CUHTK evaluation systsms typically make use of a multiple pass, multiple branch, framework. This...
Generative models, normally in the form of hidden Markov models, have been the dominant form of acou...
Generative models, normally in the form of hidden Markov models, have been the dominant form of acou...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
Recently there has been interest in structured discriminative models for speech recognition. In thes...
Recently there has been interest in structured discriminative models for speech recognition. In thes...
This report describes the implementation of a discriminative HMM parameter estimation technique know...
In this work, a framework for efficient discriminative training and modeling is developed and implem...
[[abstract]]This thesis sets the goal at investigating the consistency properties underlying the mos...
This paper considers discriminative training of language models for large vocabulary continuous spee...
Abstract—The minimum classification error (MCE) framework for discriminative training is a simple an...
Automatic speech recognition (ASR) depends critically on building acoustic models for linguistic uni...
This paper describes our work on applying ensembles of acoustic models to the problem of large voca...
This paper describes a new approach to acoustic modeling for large vocabulary continuous speech reco...
We present a proposal of a kernel-based model for large vocabulary continuous speech recognizer. The...
The CUHTK evaluation systsms typically make use of a multiple pass, multiple branch, framework. This...
Generative models, normally in the form of hidden Markov models, have been the dominant form of acou...
Generative models, normally in the form of hidden Markov models, have been the dominant form of acou...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer S...
Recently there has been interest in structured discriminative models for speech recognition. In thes...
Recently there has been interest in structured discriminative models for speech recognition. In thes...
This report describes the implementation of a discriminative HMM parameter estimation technique know...