This paper describes our work on applying ensembles of acoustic models to the problem of large vocabulary continuous speech recognition (LVCSR). We propose three algorithms for constructing ensembles. The first two have their roots in bagging algorithms; however, instead of randomly sampling examples our algorithms construct training sets based on the word error rate. The third one is a boosting style algorithm. Different from other boosting methods which demand large resources for computation and storage, our method present a more efficient solution suitable for acoustic model training. We also investigate a method that seeks optimal combination for models. We report experimental results on a large real world corpus collected from the Car...
In this paper an effective technique to train an acoustic model from large and unsynchronized audio ...
In this paper an effective technique to train an acoustic model from large and unsynchronized audio ...
In this paper we propose discriminative training of hierarchical acoustic models for large vocabular...
This paper compares the performance of Boosting and nonBoosting training algorithms in large vocabu...
This paper compares the performance of Boosting and non-Boosting training algorithms in large vocabu...
This paper summarizes part of SRI's effort to improve acoustic modeling in the context of the L...
In this paper we investigate a number of ensemble methods for improving the performance of connectio...
The CUHTK evaluation systsms typically make use of a multiple pass, multiple branch, framework. This...
This paper investigates two important issues in constructing and combining ensembles of acoustic mo...
This paper describes a new approach to acoustic modeling for large vocabulary continuous speech reco...
Thanks to recent research in neural network based acoustic modeling, Large Vocabulary Continuous Spe...
This paper investigates two important issues in constructing and combining ensembles of acoustic mod...
Thanks to recent research in neural network based acoustic modeling, Large Vocabulary Continuous Spe...
We show that an elaborate linguistic model of a natural lan-guage can be a valuable knowledge source...
In this paper an effective technique to train an acoustic model from large and unsynchronized audio ...
In this paper an effective technique to train an acoustic model from large and unsynchronized audio ...
In this paper an effective technique to train an acoustic model from large and unsynchronized audio ...
In this paper we propose discriminative training of hierarchical acoustic models for large vocabular...
This paper compares the performance of Boosting and nonBoosting training algorithms in large vocabu...
This paper compares the performance of Boosting and non-Boosting training algorithms in large vocabu...
This paper summarizes part of SRI's effort to improve acoustic modeling in the context of the L...
In this paper we investigate a number of ensemble methods for improving the performance of connectio...
The CUHTK evaluation systsms typically make use of a multiple pass, multiple branch, framework. This...
This paper investigates two important issues in constructing and combining ensembles of acoustic mo...
This paper describes a new approach to acoustic modeling for large vocabulary continuous speech reco...
Thanks to recent research in neural network based acoustic modeling, Large Vocabulary Continuous Spe...
This paper investigates two important issues in constructing and combining ensembles of acoustic mod...
Thanks to recent research in neural network based acoustic modeling, Large Vocabulary Continuous Spe...
We show that an elaborate linguistic model of a natural lan-guage can be a valuable knowledge source...
In this paper an effective technique to train an acoustic model from large and unsynchronized audio ...
In this paper an effective technique to train an acoustic model from large and unsynchronized audio ...
In this paper an effective technique to train an acoustic model from large and unsynchronized audio ...
In this paper we propose discriminative training of hierarchical acoustic models for large vocabular...