This paper presents a comparative study of two discriminative methods, i.e., Rival Penalized Competitive Learning (RPCL) and Minimum Classification Error (MCE), for the tasks of Large Vocabulary Continuous Speech Recognition (LVCSR). MCE aims at minimizing a smoothed sentence error on training data, while RPCL focuses on avoiding misclassification through enforcing the learning of correct class and de-learning its best rival class. For a fair comparison, both the two discriminative mechanisms are implemented at the levels of phones and/or hidden Markov states using the same training corpus. The results show that both the MCE and RPCL based methods perform better than the Maximum Likelihood Estimation (MLE) based method. Comparing with the M...
This paper compares the performance of Boosting and non-Boosting training algorithms in large vocabu...
AbstractIn this paper, the use of discriminative criteria such as minimum phone error (MPE) and maxi...
[[abstract]]Discriminative training of acoustic models has been an active focus of much current rese...
This paper presents a comparative study of two discriminative methods, i.e., Rival Penalized Competi...
Abstract. This paper presents a comparative study of two discrimina-tive methods, i.e., Rival Penali...
This paper presents a new discriminative approach for training Gaussian mixture models (GMMs)of hidd...
This paper is an empirical study on the performance of different discriminative approaches to rerank...
In this work, a framework for efficient discriminative training and modeling is developed and implem...
Abstract—The minimum classification error (MCE) framework for discriminative training is a simple an...
Recently, we have developed a novel discriminative training method named large-margin minimum classi...
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...
This paper considers discriminative training of language models for large vocabulary continuous spee...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
This paper compares the performance of Boosting and non-Boosting training algorithms in large vocabu...
AbstractIn this paper, the use of discriminative criteria such as minimum phone error (MPE) and maxi...
[[abstract]]Discriminative training of acoustic models has been an active focus of much current rese...
This paper presents a comparative study of two discriminative methods, i.e., Rival Penalized Competi...
Abstract. This paper presents a comparative study of two discrimina-tive methods, i.e., Rival Penali...
This paper presents a new discriminative approach for training Gaussian mixture models (GMMs)of hidd...
This paper is an empirical study on the performance of different discriminative approaches to rerank...
In this work, a framework for efficient discriminative training and modeling is developed and implem...
Abstract—The minimum classification error (MCE) framework for discriminative training is a simple an...
Recently, we have developed a novel discriminative training method named large-margin minimum classi...
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...
This paper considers discriminative training of language models for large vocabulary continuous spee...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
Discriminative training techniques for Hidden-Markov Models were recently proposed and successfully ...
This paper compares the performance of Boosting and non-Boosting training algorithms in large vocabu...
AbstractIn this paper, the use of discriminative criteria such as minimum phone error (MPE) and maxi...
[[abstract]]Discriminative training of acoustic models has been an active focus of much current rese...