Inspired by previous source-side syntactic reordering methods for SMT, this paper focuses on using automatically learned syntactic reordering patterns with functional words which indicate structural reorderings between the source and target language. This approach takes advantage of phrase alignments and source-side parse trees for pattern extraction, and then filters out those patterns without functional words. Word lattices transformed by the generated patterns are fed into PBSMT systems to incorporate potential reorderings from the inputs. Experiments are carried out on a medium-sized corpus for a Chinese–English SMT task. The proposed method outperforms the baseline system by 1.38% relative on a randomly selected testset and 10.45% rela...
This paper addresses the problem of word re-ordering in statistical machine translation. We follow a...
We propose the use of WordNet synsets in a syntax-based reordering model for hierarchical statistic...
This paper presents a reordering model us-ing syntactic information of a source tree for phrase-base...
Inspired by previous source-side syntactic reordering methods for SMT, this paper focuses on using a...
In this paper, we present a novel approach to incorporate source-side syntactic reordering patterns ...
In this paper, we present a novel approach to incorporate source-side syntactic reorder-ing patterns...
Syntactic reordering has been demonstrated to be helpful and effective for handling different word...
Syntactic reordering has been demon-strated to be helpful and effective for han-dling different word...
Syntactic reordering approaches are an effective method for handling word-order differences between ...
Syntactic reordering approaches are an ef-fective method for handling word-order dif-ferences betwee...
Reordering model is important for the sta-tistical machine translation (SMT). Current phrase-based S...
We present a novel approach to word reordering which successfully integrates syntactic structural kn...
This paper addresses the problem of word re-ordering in statistical machine translation. We follow a...
Reordering model is important for the sta-tistical machine translation (SMT). Current phrase-based S...
Syntactic reordering on the source-side is an effective way of handling word order differences. Th...
This paper addresses the problem of word re-ordering in statistical machine translation. We follow a...
We propose the use of WordNet synsets in a syntax-based reordering model for hierarchical statistic...
This paper presents a reordering model us-ing syntactic information of a source tree for phrase-base...
Inspired by previous source-side syntactic reordering methods for SMT, this paper focuses on using a...
In this paper, we present a novel approach to incorporate source-side syntactic reordering patterns ...
In this paper, we present a novel approach to incorporate source-side syntactic reorder-ing patterns...
Syntactic reordering has been demonstrated to be helpful and effective for handling different word...
Syntactic reordering has been demon-strated to be helpful and effective for han-dling different word...
Syntactic reordering approaches are an effective method for handling word-order differences between ...
Syntactic reordering approaches are an ef-fective method for handling word-order dif-ferences betwee...
Reordering model is important for the sta-tistical machine translation (SMT). Current phrase-based S...
We present a novel approach to word reordering which successfully integrates syntactic structural kn...
This paper addresses the problem of word re-ordering in statistical machine translation. We follow a...
Reordering model is important for the sta-tistical machine translation (SMT). Current phrase-based S...
Syntactic reordering on the source-side is an effective way of handling word order differences. Th...
This paper addresses the problem of word re-ordering in statistical machine translation. We follow a...
We propose the use of WordNet synsets in a syntax-based reordering model for hierarchical statistic...
This paper presents a reordering model us-ing syntactic information of a source tree for phrase-base...