A machine learning approach to textual entailment recognition

Designing models for learning textual entailment recognizers from annotated examples is not an easy task, as it requires modeling the semantic relations and interactions involved between two pairs of text fragments. In this paper, we approach the problem by first introducing the class of pair featur...

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Veröffentlicht in:Natural language engineering 2009-10, Vol.15 (4), p.551-582
Hauptverfasser: ZANZOTTO, FABIO MASSIMO, PENNACCHIOTTI, MARCO, MOSCHITTI, ALESSANDRO
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Sprache:eng
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Zusammenfassung:Designing models for learning textual entailment recognizers from annotated examples is not an easy task, as it requires modeling the semantic relations and interactions involved between two pairs of text fragments. In this paper, we approach the problem by first introducing the class of pair feature spaces, which allow supervised machine learning algorithms to derive first-order rewrite rules from annotated examples. In particular, we propose syntactic and shallow semantic feature spaces, and compare them to standard ones. Extensive experiments demonstrate that our proposed spaces learn first-order derivations, while standard ones are not expressive enough to do so.
ISSN:1351-3249
1469-8110
DOI:10.1017/S1351324909990143