Statistical machine translation is often faced with the problem of combining training data from many diverse sources into a single translation model which then has to translate sentences in a new domain. We propose a novel approach, ensemble decoding, which combines a number of translation systems dynamically at the decoding step. In this paper, we evaluate performance on a domain adaptation setting where we translate sentences from the medical domain. Our experimental results show that ensemble decoding outperforms various strong baselines including mixture models, the current state-of-the-art for domain adaptation in machine translation.Peer reviewed: YesNRC publication: Ye
Statistical machine translation (SMT) systems use statistical learning methods to learn how to trans...
The problem of language model adaptation in statistical machine translation is considered. A mixtur...
Globalization suddenly brings many people from different country to interact with each other, requir...
This paper presents a set of experiments on Domain Adaptation of Statistical Machine Translation sys...
Previous research on domain adaptation (DA) for statistical machine translation (SMT) has mainly foc...
Previous research on domain adaptation (DA) for statistical machine translation (SMT) has mainly foc...
This paper presents a set of experiments on Domain Adaptation of Statistical Machine Translation sys...
While statistical machine translation (SMT) has advanced significantly with better modeling techniqu...
A data-driven approach to model translation suffers from the data mismatch problem and demands domai...
Abstract. Statistical Machine Translation (SMT) systems are usually trained on large amounts of bili...
We propose a domain specific model for statistical machine translation. It is well-known that domain...
In this article we address the issue of generating diversified translation systems from a single Sta...
In this article we address the issue of generating diversified translation systems from a single Sta...
We investigate adaptive ensemble weighting for Neural Machine Translation, addressing the case of im...
Our previous work focuses on combining translation memory (TM) and statistical machine translation (...
Statistical machine translation (SMT) systems use statistical learning methods to learn how to trans...
The problem of language model adaptation in statistical machine translation is considered. A mixtur...
Globalization suddenly brings many people from different country to interact with each other, requir...
This paper presents a set of experiments on Domain Adaptation of Statistical Machine Translation sys...
Previous research on domain adaptation (DA) for statistical machine translation (SMT) has mainly foc...
Previous research on domain adaptation (DA) for statistical machine translation (SMT) has mainly foc...
This paper presents a set of experiments on Domain Adaptation of Statistical Machine Translation sys...
While statistical machine translation (SMT) has advanced significantly with better modeling techniqu...
A data-driven approach to model translation suffers from the data mismatch problem and demands domai...
Abstract. Statistical Machine Translation (SMT) systems are usually trained on large amounts of bili...
We propose a domain specific model for statistical machine translation. It is well-known that domain...
In this article we address the issue of generating diversified translation systems from a single Sta...
In this article we address the issue of generating diversified translation systems from a single Sta...
We investigate adaptive ensemble weighting for Neural Machine Translation, addressing the case of im...
Our previous work focuses on combining translation memory (TM) and statistical machine translation (...
Statistical machine translation (SMT) systems use statistical learning methods to learn how to trans...
The problem of language model adaptation in statistical machine translation is considered. A mixtur...
Globalization suddenly brings many people from different country to interact with each other, requir...