Language modeling is critical and indispensable for many natural language ap-plications such as automatic speech recognition and machine translation. Due to the complexity of natural language grammars, it is almost impossible to construct language models by a set of linguistic rules; therefore statistical techniques have been dominant for language modeling over the last few decades. All statistical modeling techniques, in principle, work under some conditions: 1) a reasonable amount of training data is available and 2) the training data comes from the same population as the test data to which we want to apply our model. Based on observations from the training data, we build statistical models and therefore, the success of a statistical mode...
Statistical machine translation (SMT) systems use statistical learning methods to learn how to trans...
A novel variation of modified KNESER-NEY model using monomial discounting is presented and integrate...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
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...
Speech recognition performance is severely aected when the lexical, syntactic, or semantic character...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
We explore unsupervised language model adaptation techniques for Statistical Machine Translation. Th...
(Now with TEMIC SDS GmbH, Ulm, Germany). It has been demonstrated repeatedly that the acoustic model...
The problem of language model adaptation in statistical machine translation is considered. A mixtur...
Building a stochastic language model (LM) for speech recog-nition requires a large corpus of target ...
Copyright © 2015 ISCA. Direct integration of translation model (TM) probabilities into a language mo...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
Spoken language translation (SLT) exists within one of the most challenging intersections of speech ...
One particular problem in large vocabulary continuous speech recognition for low-resourced languages...
Statistical machine translation (SMT) systems use statistical learning methods to learn how to trans...
A novel variation of modified KNESER-NEY model using monomial discounting is presented and integrate...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
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...
Speech recognition performance is severely aected when the lexical, syntactic, or semantic character...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...
We explore unsupervised language model adaptation techniques for Statistical Machine Translation. Th...
(Now with TEMIC SDS GmbH, Ulm, Germany). It has been demonstrated repeatedly that the acoustic model...
The problem of language model adaptation in statistical machine translation is considered. A mixtur...
Building a stochastic language model (LM) for speech recog-nition requires a large corpus of target ...
Copyright © 2015 ISCA. Direct integration of translation model (TM) probabilities into a language mo...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
Spoken language translation (SLT) exists within one of the most challenging intersections of speech ...
One particular problem in large vocabulary continuous speech recognition for low-resourced languages...
Statistical machine translation (SMT) systems use statistical learning methods to learn how to trans...
A novel variation of modified KNESER-NEY model using monomial discounting is presented and integrate...
Stochastic n-gram language models have been successfully applied in continuous speech recognition fo...