Conference Publication Details
Mandatory Fields
Haque R.;Naskar S.;Ma Y.;Way A.
Proceedings of the 13th Annual Conference of the European Association for Machine Translation, EAMT 2009
Using supertags as source language context in SMT
2009
December
Published
1
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Optional Fields
234
241
Recent research has shown that Phrase-Based Statistical Machine Translation (PB-SMT) systems can benefit from two enhancements: (i) using words and POS tags as context-informed features on the source side; and (ii) incorporating lexical syntactic descriptions in the form of su-pertags on the target side. In this work we present a novel PB-SMT model that combines these two aspects by using su-pertags as source language context-informed features. These features enable us to exploit source similarity in addition to target similarity, as modelled by the language model. In our experiments two kinds of supertags are employed: those from Lexicalized Tree-Adjoining Grammar and Combinatory Categorial Grammar. We use a memory-based classification framework that enables the estimation of these features while avoiding problems of sparseness. Despite the differences between these two approaches, the supertaggers give similar improvements. We evaluate the performance of our approach on an English-to-Chinese translation task using a state-of-the-art phrase-based SMT system, and report an improvement of 7.88% BLEU score in translation quality when adding supertags as context-informed features. © 2009 European Association for Machine Translation.
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