In this paper, we present novel techniques for performing topic adaptation on an -gram language model. Given training text la-beled with topic information, we automatically identify the most relevant topics for new text. We adapt our language model toward these topics using an exponential model, by adjusting probabilities in our model to agree with those found in the topical subset of the training data. For efficiency, we do not normalize the model; that is, we do not require that the “probabilities ” in the language model sum to 1. With these techniques, we were able to achieve a modest reduction in speech recognition word-error rate in the Broadcast News domain. 1
This paper presents two techniques for language model (LM) adaptation. The first aims to build a mor...
(Now with TEMIC SDS GmbH, Ulm, Germany). It has been demonstrated repeatedly that the acoustic model...
This paper introduces a selection-based LM using topic modeling for the purpose of domain adaptation...
In this paper, we present novel techniques for performing topic adaptation on an n-gram language mod...
Topic adaptation for language modeling is concerned with ad-justing the probabilities in a language ...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language m...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language ...
This paper presents an unsupervised topic-based language model adaptation method which specializes t...
The subject matter of any conversation or document can typically be described as some combination of...
Language modeling is critical and indispensable for many natural language ap-plications such as auto...
The subject matter of any conversation or document can typically be described as some combination of...
We present a computationally inexpensive technique to perform style adaptation: a general training t...
Minimum Classification Error (MCE) training is difficult to apply to language modeling due to inhere...
International audienceWhereas topic-based adaptation of language models (LM) claims to increase the ...
This paper presents a dynamic LM adaptation based on the topic that has been identified on a speech ...
This paper presents two techniques for language model (LM) adaptation. The first aims to build a mor...
(Now with TEMIC SDS GmbH, Ulm, Germany). It has been demonstrated repeatedly that the acoustic model...
This paper introduces a selection-based LM using topic modeling for the purpose of domain adaptation...
In this paper, we present novel techniques for performing topic adaptation on an n-gram language mod...
Topic adaptation for language modeling is concerned with ad-justing the probabilities in a language ...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language m...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language ...
This paper presents an unsupervised topic-based language model adaptation method which specializes t...
The subject matter of any conversation or document can typically be described as some combination of...
Language modeling is critical and indispensable for many natural language ap-plications such as auto...
The subject matter of any conversation or document can typically be described as some combination of...
We present a computationally inexpensive technique to perform style adaptation: a general training t...
Minimum Classification Error (MCE) training is difficult to apply to language modeling due to inhere...
International audienceWhereas topic-based adaptation of language models (LM) claims to increase the ...
This paper presents a dynamic LM adaptation based on the topic that has been identified on a speech ...
This paper presents two techniques for language model (LM) adaptation. The first aims to build a mor...
(Now with TEMIC SDS GmbH, Ulm, Germany). It has been demonstrated repeatedly that the acoustic model...
This paper introduces a selection-based LM using topic modeling for the purpose of domain adaptation...