The subject matter of any conversation or document can typically be described as some combination of elemental topics. We have developed a language model adaptation scheme that takes a piece of text, chooses the most similar topic clusters from a set of over 5000 elemental topics, and uses topic specific language models built from the topic clusters to rescore N-best lists. We are able to achieve a 15 % reduction in perplexity and a small improvement in WER by using this adaptation. We also investigate the use of a topic tree, where the amount of training data for a specific topic can be judiciously increased in cases where the elemental topic cluster has too few word tokens to build a reliably smoothed and representative language model. Ou...
This paper introduces a selection-based LM using topic modeling for the purpose of domain adaptation...
Topic models, an unsupervised technique for inferring translation domains improve machine translatio...
Topic models, an unsupervised technique for inferring translation domains improve machine translatio...
The subject matter of any conversation or document can typically be described as some combination of...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language m...
Topic adaptation for language modeling is concerned with ad-justing the probabilities in a language ...
We present a novel topic mixture-based language model adaptation approach that uses La-tent Dirichle...
In this paper, we present novel techniques for performing topic adaptation on an n-gram language mod...
In this paper, we present novel techniques for performing topic adaptation on an -gram language mode...
This paper presents an unsupervised topic-based language model adaptation method which specializes t...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language ...
Language models (LMs) are used in Statistical Machine Translation (SMT) to improve the fluency of tr...
This paper presents a dynamic LM adaptation based on the topic that has been identified on a speech ...
Topic detection is concerned with the unsupervised clustering of news stories over time. The TNO top...
Language model (LM) adaptation is im-portant for both speech and language processing. It is often ac...
This paper introduces a selection-based LM using topic modeling for the purpose of domain adaptation...
Topic models, an unsupervised technique for inferring translation domains improve machine translatio...
Topic models, an unsupervised technique for inferring translation domains improve machine translatio...
The subject matter of any conversation or document can typically be described as some combination of...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language m...
Topic adaptation for language modeling is concerned with ad-justing the probabilities in a language ...
We present a novel topic mixture-based language model adaptation approach that uses La-tent Dirichle...
In this paper, we present novel techniques for performing topic adaptation on an n-gram language mod...
In this paper, we present novel techniques for performing topic adaptation on an -gram language mode...
This paper presents an unsupervised topic-based language model adaptation method which specializes t...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language ...
Language models (LMs) are used in Statistical Machine Translation (SMT) to improve the fluency of tr...
This paper presents a dynamic LM adaptation based on the topic that has been identified on a speech ...
Topic detection is concerned with the unsupervised clustering of news stories over time. The TNO top...
Language model (LM) adaptation is im-portant for both speech and language processing. It is often ac...
This paper introduces a selection-based LM using topic modeling for the purpose of domain adaptation...
Topic models, an unsupervised technique for inferring translation domains improve machine translatio...
Topic models, an unsupervised technique for inferring translation domains improve machine translatio...