In this paper, we propose a novel lattice-based MT combination methodology that we call Target-to-Target Decoding (TTD). The combination process is carried out as a “translation” from backbone to the combination result. This perspective suggests the use of existing phrase-based MT techniques in the combination framework. We show how phrase extraction rules and confidence estimations inspired from machine translation improve results. We also propose system-specific LMs for estimating N-gram consensus. Our results show that our approach yields a strong improvement over the best single MT system and competes with other state-of-the-art combination systems
Conventional confusion network based system combination for machine translation (MT) heavily relies ...
International audienceThe machine translation systems usually build an initialword-to-word alignment...
Machine translation of spoken language is a challenging task that involves several natural language ...
In this paper, we propose a novel lattice-based MT combination methodology that we call Target-to-Ta...
Machine translation is a task in the field of natural language processing whose objective is to tran...
Every machine translation system has some advantages. We propose an improved statistical system comb...
In this paper, we introduce a novel translation system combination framework using a text-to-text ge...
This article addresses the development of statistical models for phrase-based machine translation (M...
Constrained translation has improved statistical machine translation (SMT) by combining it with tran...
International audienceCurrent statistical machine translation systems usually build an initial word-...
This paper describes an approach for computing a consensus translation from the outputs of multiple ...
Statistical Machine Translation (SMT) developed in the late 1980s, based initially upon a word-to-wo...
Constrained translation has improved statistical machine translation (SMT) by combining it with tra...
In this paper, we propose a paraphrasing model to address the task of system com-bination for machin...
This paper describes a recently developed method for computing a consensus translation from the outp...
Conventional confusion network based system combination for machine translation (MT) heavily relies ...
International audienceThe machine translation systems usually build an initialword-to-word alignment...
Machine translation of spoken language is a challenging task that involves several natural language ...
In this paper, we propose a novel lattice-based MT combination methodology that we call Target-to-Ta...
Machine translation is a task in the field of natural language processing whose objective is to tran...
Every machine translation system has some advantages. We propose an improved statistical system comb...
In this paper, we introduce a novel translation system combination framework using a text-to-text ge...
This article addresses the development of statistical models for phrase-based machine translation (M...
Constrained translation has improved statistical machine translation (SMT) by combining it with tran...
International audienceCurrent statistical machine translation systems usually build an initial word-...
This paper describes an approach for computing a consensus translation from the outputs of multiple ...
Statistical Machine Translation (SMT) developed in the late 1980s, based initially upon a word-to-wo...
Constrained translation has improved statistical machine translation (SMT) by combining it with tra...
In this paper, we propose a paraphrasing model to address the task of system com-bination for machin...
This paper describes a recently developed method for computing a consensus translation from the outp...
Conventional confusion network based system combination for machine translation (MT) heavily relies ...
International audienceThe machine translation systems usually build an initialword-to-word alignment...
Machine translation of spoken language is a challenging task that involves several natural language ...