Statistical machine translation (SMT) systems use statistical learning methods to learn how to translate from large amounts of parallel training data. Unfortunately, SMT systems are tuned to the domain of the training data and need to be adapted before they can be used to translate data in a different domain. First, we consider a semi-supervised technique to perform model adaptation. We explore new feature extraction techniques, feature combinations and their effects on performance. In addition, we introduce an unsupervised variant of Minimum Error Rate Training (MERT), which can be used to tune the SMT model parameters. We do this by using another SMT model that translates in the reverse direction. We apply this variant of MERT to the mode...
A novel variation of modified KNESER-NEY model using monomial discounting is presented and integrate...
Machine translation is the application of machines to translate text or speech from one natural lang...
A data-driven approach to model translation suffers from the data mismatch problem and demands domai...
Statistical machine translation systems are usually trained on large amounts of bilingual text (used...
© Cambridge University Press, 2015.Statistical machine translation (SMT) is gaining interest given t...
We explore unsupervised language model adaptation techniques for Statistical Machine Translation. Th...
Previous research on domain adaptation (DA) for statistical machine translation (SMT) has mainly foc...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
Parallel corpus is an indispensable resource for translation model training in statistical machine t...
In this work, we tackle the problem of language and translation models domain-adaptation without exp...
While statistical machine translation (SMT) has advanced significantly with better modeling techniqu...
Abstract. Statistical Machine Translation (SMT) systems are usually trained on large amounts of bili...
Current state-of-the-art Statistical Machine Translation systems are based on log-linear models that...
This paper proposes a new approach to domain adaptation in statistical machine translation (SMT) bas...
The problem of language model adaptation in statistical machine translation is considered. A mixtur...
A novel variation of modified KNESER-NEY model using monomial discounting is presented and integrate...
Machine translation is the application of machines to translate text or speech from one natural lang...
A data-driven approach to model translation suffers from the data mismatch problem and demands domai...
Statistical machine translation systems are usually trained on large amounts of bilingual text (used...
© Cambridge University Press, 2015.Statistical machine translation (SMT) is gaining interest given t...
We explore unsupervised language model adaptation techniques for Statistical Machine Translation. Th...
Previous research on domain adaptation (DA) for statistical machine translation (SMT) has mainly foc...
In this thesis we develop and evaluate a general framework for domain-adaptation of statistical mach...
Parallel corpus is an indispensable resource for translation model training in statistical machine t...
In this work, we tackle the problem of language and translation models domain-adaptation without exp...
While statistical machine translation (SMT) has advanced significantly with better modeling techniqu...
Abstract. Statistical Machine Translation (SMT) systems are usually trained on large amounts of bili...
Current state-of-the-art Statistical Machine Translation systems are based on log-linear models that...
This paper proposes a new approach to domain adaptation in statistical machine translation (SMT) bas...
The problem of language model adaptation in statistical machine translation is considered. A mixtur...
A novel variation of modified KNESER-NEY model using monomial discounting is presented and integrate...
Machine translation is the application of machines to translate text or speech from one natural lang...
A data-driven approach to model translation suffers from the data mismatch problem and demands domai...