We explore unsupervised language model adaptation techniques for Statistical Machine Translation. The hypotheses from the machine translation output are converted into queries at different levels of representation power and used to extract similar sentences from very large monolingual text collection. Specific language models are then build from the retrieved data and interpolated with a general background model. Experiments show significant improvements when translating with these adapted language models.
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
We propose a domain specific model for statistical machine translation. It is well-known that domain...
Abstract. In this paper, we investigate the language model (LM) adaptation issue for Statis-tical Ma...
Language modeling is an important part for both speech recognition and machine translation systems. ...
Abstract. In this paper we present experiments concerning translation model adaptation for statistic...
Statistical machine translation (SMT) systems use statistical learning methods to learn how to trans...
This paper describes a novel target-side syntactic language model for phrase-based statistical machi...
The problem of language model adaptation in statistical machine translation is considered. A mixtur...
In this work, we tackle the problem of language and translation models domain-adaptation without exp...
A novel variation of modified KNESER-NEY model using monomial discounting is presented and integrate...
Language modeling is critical and indispensable for many natural language ap-plications such as auto...
Domain adaptation has recently gained interest in statistical machine translation to cope with the p...
Traditionally, statistical machine translation systems have relied on parallel bi-lingual data to tr...
Statistical machine translation systems are usually trained on large amounts of bilingual text (used...
Current state-of-the-art Statistical Machine Translation systems are based on log-linear models that...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
We propose a domain specific model for statistical machine translation. It is well-known that domain...
Abstract. In this paper, we investigate the language model (LM) adaptation issue for Statis-tical Ma...
Language modeling is an important part for both speech recognition and machine translation systems. ...
Abstract. In this paper we present experiments concerning translation model adaptation for statistic...
Statistical machine translation (SMT) systems use statistical learning methods to learn how to trans...
This paper describes a novel target-side syntactic language model for phrase-based statistical machi...
The problem of language model adaptation in statistical machine translation is considered. A mixtur...
In this work, we tackle the problem of language and translation models domain-adaptation without exp...
A novel variation of modified KNESER-NEY model using monomial discounting is presented and integrate...
Language modeling is critical and indispensable for many natural language ap-plications such as auto...
Domain adaptation has recently gained interest in statistical machine translation to cope with the p...
Traditionally, statistical machine translation systems have relied on parallel bi-lingual data to tr...
Statistical machine translation systems are usually trained on large amounts of bilingual text (used...
Current state-of-the-art Statistical Machine Translation systems are based on log-linear models that...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
We propose a domain specific model for statistical machine translation. It is well-known that domain...
Abstract. In this paper, we investigate the language model (LM) adaptation issue for Statis-tical Ma...