International audienceIn this paper, we study the feasibility of using a neural network to learn a fitness function for a machine translation system based on a genetic algorithm termed GAMaT. The neural network is learned on features extracted from pairs of source sentences and their translations. The fitness function is trained in order to estimate the BLEU of a translation as precisely as possible. The estimator has been trained on a corpus of more than 1.3 million data. The performance is very promising: the difference between the real BLEU and the one given by the estimator is equal to 0.12 in terms of Mean Absolute Error
Deep neural models tremendously improved machine translation. In this context, we investigate whethe...
Neural Machine Translation (NMT) is a new approach to machine translation that has made great progre...
In this dissertation, we examine applications of neural machine translation to computer aided transl...
Different components of statistical machine translation systems are considered as optimization probl...
The quality of translations produced by statistical machine translation (SMT) systems crucially depe...
Différentes composantes des systèmes de traduction automatique statistique sont considérées comme de...
AbstractThe quality of machine translation is rapidly evolving. Today one can find several machine t...
Machine Translation is the translation of text or speech by a computer with no human involvement. It...
Previous neural machine translation models used some heuristic search algorithms (e.g., beam search)...
International audienceStatistical phrase-based approach was dominating researches in the field of ma...
With economic globalization and the rapid development of the Internet, the connections between diffe...
Achieving high accuracy in automatic translation tasks has been one of the challenging goals for res...
International audienceWe propose a new algorithm for decoding on machine translation process. This a...
�� 2015 The Authors. Published by Association for Computational Linguistics. This is an open access ...
In this paper we present how to estimate a continuous space Language Model with a Neural Network to ...
Deep neural models tremendously improved machine translation. In this context, we investigate whethe...
Neural Machine Translation (NMT) is a new approach to machine translation that has made great progre...
In this dissertation, we examine applications of neural machine translation to computer aided transl...
Different components of statistical machine translation systems are considered as optimization probl...
The quality of translations produced by statistical machine translation (SMT) systems crucially depe...
Différentes composantes des systèmes de traduction automatique statistique sont considérées comme de...
AbstractThe quality of machine translation is rapidly evolving. Today one can find several machine t...
Machine Translation is the translation of text or speech by a computer with no human involvement. It...
Previous neural machine translation models used some heuristic search algorithms (e.g., beam search)...
International audienceStatistical phrase-based approach was dominating researches in the field of ma...
With economic globalization and the rapid development of the Internet, the connections between diffe...
Achieving high accuracy in automatic translation tasks has been one of the challenging goals for res...
International audienceWe propose a new algorithm for decoding on machine translation process. This a...
�� 2015 The Authors. Published by Association for Computational Linguistics. This is an open access ...
In this paper we present how to estimate a continuous space Language Model with a Neural Network to ...
Deep neural models tremendously improved machine translation. In this context, we investigate whethe...
Neural Machine Translation (NMT) is a new approach to machine translation that has made great progre...
In this dissertation, we examine applications of neural machine translation to computer aided transl...