The heuristic estimates of conditional phrase translation probabilities are based on frequency counts in a word-aligned parallel corpus. Earlier attempts at more principled estimation using Expectation-Maximization (EM) underperform this heuristic. This paper shows that a recently introduced novel estimator based on smoothing might provide a good alternative. When all phrase pairs are estimated (no length cut-off), this estimator slightly outperforms the heuristic estimator
We present a new phrase-based con-ditional exponential family translation model for statistical mach...
La date de publication ne nous a pas encore été communiquéeInternational audienceAs one of the most ...
In statistical machine translation, the currently best performing systems are based in some way on p...
The conditional phrase translation probabilities constitute the principal components of phrase-based...
The conditional phrase translation probabil-ities constitute the principal components of phrase-base...
This article addresses the development of statistical models for phrase-based machine translation (M...
We discuss different strategies for smooth-ing the phrasetable in Statistical MT, and give results o...
State of the art phrase-based statistical machine translation systems typically contain two features...
In statistical machine translation systems, phrases with similar meanings often have similar but not...
Attempts to estimate phrase translation probablities for statistical machine transla-tion using iter...
International audienceIn this paper, we consider a specific part of statistical machine translation:...
Machine translation is the application of machines to translate text or speech from one natural lang...
The joint probability model proposed by Marcu and Wong (2002) provides a strong probabilistic frame...
This paper describes how to cluster to-gether the phrases of a phrase-based sta-tistical machine tra...
Translation models used for statistical machine translation are compiled from parallel corpora that ...
We present a new phrase-based con-ditional exponential family translation model for statistical mach...
La date de publication ne nous a pas encore été communiquéeInternational audienceAs one of the most ...
In statistical machine translation, the currently best performing systems are based in some way on p...
The conditional phrase translation probabilities constitute the principal components of phrase-based...
The conditional phrase translation probabil-ities constitute the principal components of phrase-base...
This article addresses the development of statistical models for phrase-based machine translation (M...
We discuss different strategies for smooth-ing the phrasetable in Statistical MT, and give results o...
State of the art phrase-based statistical machine translation systems typically contain two features...
In statistical machine translation systems, phrases with similar meanings often have similar but not...
Attempts to estimate phrase translation probablities for statistical machine transla-tion using iter...
International audienceIn this paper, we consider a specific part of statistical machine translation:...
Machine translation is the application of machines to translate text or speech from one natural lang...
The joint probability model proposed by Marcu and Wong (2002) provides a strong probabilistic frame...
This paper describes how to cluster to-gether the phrases of a phrase-based sta-tistical machine tra...
Translation models used for statistical machine translation are compiled from parallel corpora that ...
We present a new phrase-based con-ditional exponential family translation model for statistical mach...
La date de publication ne nous a pas encore été communiquéeInternational audienceAs one of the most ...
In statistical machine translation, the currently best performing systems are based in some way on p...