Building a stochastic language model (LM) for speech recog-nition requires a large corpus of target tasks. For some tasks no enough large corpus is available and this is an obstacle to achieving high recognition accuracy. In this paper, we propose a method for building an LM with a higher prediction power using large corpora from different tasks rather than an LM estimated from a small corpus for a specific target task. In our experiment, we used transcriptions of air university lectures and articles from Nikkei newspaper and compared an existing interpolation-based method and our new method. The results show that our new method reduces perplexity by 9.71%. 1
[[abstract]]Statistical language modeling, which aims to capture the regularities in human natural l...
Topic adaptation for language modeling is concerned with ad-justing the probabilities in a language ...
We are interested in the problem of learning stochastic language models on-line (without speech tran...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
In a human-machine interaction (dialog) the statistical lan-guage variations are large among differe...
Language modeling is critical and indispensable for many natural language ap-plications such as auto...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
In this paper, we discuss language model adaptation methods given a word list and a raw corpus. In t...
[[abstract]]N-gram language modeling is a crucial component in any speech recognizer since it is exp...
Copyright © 2015 ISCA. Direct integration of translation model (TM) probabilities into a language mo...
Language modeling is an important part for both speech recognition and machine translation systems. ...
Speech recognition performance is severely affected when the lexical, syntactic, or semantic charact...
(Now with TEMIC SDS GmbH, Ulm, Germany). It has been demonstrated repeatedly that the acoustic model...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language m...
In this paper we address the issue of building language models for very small training sets by adapt...
[[abstract]]Statistical language modeling, which aims to capture the regularities in human natural l...
Topic adaptation for language modeling is concerned with ad-justing the probabilities in a language ...
We are interested in the problem of learning stochastic language models on-line (without speech tran...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
In a human-machine interaction (dialog) the statistical lan-guage variations are large among differe...
Language modeling is critical and indispensable for many natural language ap-plications such as auto...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
In this paper, we discuss language model adaptation methods given a word list and a raw corpus. In t...
[[abstract]]N-gram language modeling is a crucial component in any speech recognizer since it is exp...
Copyright © 2015 ISCA. Direct integration of translation model (TM) probabilities into a language mo...
Language modeling is an important part for both speech recognition and machine translation systems. ...
Speech recognition performance is severely affected when the lexical, syntactic, or semantic charact...
(Now with TEMIC SDS GmbH, Ulm, Germany). It has been demonstrated repeatedly that the acoustic model...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language m...
In this paper we address the issue of building language models for very small training sets by adapt...
[[abstract]]Statistical language modeling, which aims to capture the regularities in human natural l...
Topic adaptation for language modeling is concerned with ad-justing the probabilities in a language ...
We are interested in the problem of learning stochastic language models on-line (without speech tran...