We introduce a method for learning to reorder source sentences. In our approach, sentences are transformed into new sequences of words aimed at reducing non-local reorderings in phrase translation. The method involves automatically extracting instances of structural divergences from sentence pairs, and automatically learning lexicalized grammatical rules probabilistically encoded with bilingual word-order relations. At run-time, source sentences are reordered by applying the rules prior to phrase-based machine translation systems. Experiments show that our method cleanly captures systematic similarities and differences in languages ’ grammars, resulting in substantial improvement over state-of-the-art phrase-based translation systems
We propose a distance phrase reordering model (DPR) for statistical machine translation (SMT), where...
While phrase-based statistical machine trans-lation systems currently deliver state-of-the-art perfo...
Most natural language applications have some degree of preprocessing of data: tokenisation, stemming...
[[abstract]]We introduce a method for learning to reorder source sentences. In our approach, sentenc...
This paper presents novel approaches to reordering in phrase-based statistical machine translation...
This paper presents novel approaches to reordering in phrase-based statistical ma-chine translation....
Word reordering is a difficult task for decoders when the languages involved have a significant diff...
This paper proposes a novel method for long distance, clause-level reordering in statistical machine...
In this paper, we start with the existing idea of taking reordering rules automatically derived from...
The paper presents a new method for reordering in phrase based statistical machine translation (PBMT...
Lexicalized reordering model plays a central role in phrase-based statistical machine translation sy...
In this paper, we describe a novel phrase reordering model based on predicate-argument structure. Ou...
We describe an approach to word ordering using modelling techniques from statistical machine transla...
We propose a distance phrase reordering model (DPR) for statistical machine trans-lation (SMT), wher...
[[abstract]]In this paper, we propose a method for learning reordering model for BTG-based statistic...
We propose a distance phrase reordering model (DPR) for statistical machine translation (SMT), where...
While phrase-based statistical machine trans-lation systems currently deliver state-of-the-art perfo...
Most natural language applications have some degree of preprocessing of data: tokenisation, stemming...
[[abstract]]We introduce a method for learning to reorder source sentences. In our approach, sentenc...
This paper presents novel approaches to reordering in phrase-based statistical machine translation...
This paper presents novel approaches to reordering in phrase-based statistical ma-chine translation....
Word reordering is a difficult task for decoders when the languages involved have a significant diff...
This paper proposes a novel method for long distance, clause-level reordering in statistical machine...
In this paper, we start with the existing idea of taking reordering rules automatically derived from...
The paper presents a new method for reordering in phrase based statistical machine translation (PBMT...
Lexicalized reordering model plays a central role in phrase-based statistical machine translation sy...
In this paper, we describe a novel phrase reordering model based on predicate-argument structure. Ou...
We describe an approach to word ordering using modelling techniques from statistical machine transla...
We propose a distance phrase reordering model (DPR) for statistical machine trans-lation (SMT), wher...
[[abstract]]In this paper, we propose a method for learning reordering model for BTG-based statistic...
We propose a distance phrase reordering model (DPR) for statistical machine translation (SMT), where...
While phrase-based statistical machine trans-lation systems currently deliver state-of-the-art perfo...
Most natural language applications have some degree of preprocessing of data: tokenisation, stemming...