This paper considers discriminative training of language models for large vocabulary continuous speech recognition. The minimum word error (MWE) criterion was explored to make use of the word confusion information as well as the local lexical constraints inherent in the acoustic training corpus, in conjunction with those constraints obtained from the background text corpus, for properly guiding the speech recognizer to separate the correct hypothesis from the competing ones. The underlying characteristics of the MWE-based approach were extensively investigated, and its performance was verified by comparison with the conventional maximum likelihood (ML) approaches as well. The speech recognition experiments were performed on the broadcast ne...
AbstractIn this paper, the use of discriminative criteria such as minimum phone error (MPE) and maxi...
This paper presents a comparative study of two discriminative methods, i.e., Rival Penalized Competi...
Abstract. The Minimum Phone Error (MPE) criterion for discriminative training was shown to be able t...
Abstract—The minimum classification error (MCE) framework for discriminative training is a simple an...
[[abstract]]Discriminative training of acoustic models has been an active focus of much current rese...
This paper presents an empirical study of word error minimization approaches for Mandarin large voca...
This paper presents an empirical study of word error minimization approaches for Mandarin large voca...
In this work, a framework for efficient discriminative training and modeling is developed and implem...
In this paper we propose discriminative training of hierarchical acoustic models for large vocabular...
Summarization: The present thesis investigates the use of discriminative training on continuous Lang...
Discriminative training has become an important means for estimating model parameters in many statis...
The model training algorithm is a critical component in the statistical pattern recognition approach...
Recently, we have developed a novel discriminative training method named large-margin minimum classi...
This paper presents a comparative study of two discriminative methods, i.e., Rival Penalized Competi...
This paper proposes two methods for identifying recognition error. The first method is a two-level s...
AbstractIn this paper, the use of discriminative criteria such as minimum phone error (MPE) and maxi...
This paper presents a comparative study of two discriminative methods, i.e., Rival Penalized Competi...
Abstract. The Minimum Phone Error (MPE) criterion for discriminative training was shown to be able t...
Abstract—The minimum classification error (MCE) framework for discriminative training is a simple an...
[[abstract]]Discriminative training of acoustic models has been an active focus of much current rese...
This paper presents an empirical study of word error minimization approaches for Mandarin large voca...
This paper presents an empirical study of word error minimization approaches for Mandarin large voca...
In this work, a framework for efficient discriminative training and modeling is developed and implem...
In this paper we propose discriminative training of hierarchical acoustic models for large vocabular...
Summarization: The present thesis investigates the use of discriminative training on continuous Lang...
Discriminative training has become an important means for estimating model parameters in many statis...
The model training algorithm is a critical component in the statistical pattern recognition approach...
Recently, we have developed a novel discriminative training method named large-margin minimum classi...
This paper presents a comparative study of two discriminative methods, i.e., Rival Penalized Competi...
This paper proposes two methods for identifying recognition error. The first method is a two-level s...
AbstractIn this paper, the use of discriminative criteria such as minimum phone error (MPE) and maxi...
This paper presents a comparative study of two discriminative methods, i.e., Rival Penalized Competi...
Abstract. The Minimum Phone Error (MPE) criterion for discriminative training was shown to be able t...