Paraphrase Generation from Latent-Variable PCFGs for Semantic Parsing
January 22, 2016 ยท Declared Dead ยท ๐ International Conference on Natural Language Generation
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Authors
Shashi Narayan, Siva Reddy, Shay B. Cohen
arXiv ID
1601.06068
Category
cs.CL: Computation & Language
Citations
37
Venue
International Conference on Natural Language Generation
Last Checked
4 months ago
Abstract
One of the limitations of semantic parsing approaches to open-domain question answering is the lexicosyntactic gap between natural language questions and knowledge base entries -- there are many ways to ask a question, all with the same answer. In this paper we propose to bridge this gap by generating paraphrases of the input question with the goal that at least one of them will be correctly mapped to a knowledge-base query. We introduce a novel grammar model for paraphrase generation that does not require any sentence-aligned paraphrase corpus. Our key idea is to leverage the flexibility and scalability of latent-variable probabilistic context-free grammars to sample paraphrases. We do an extrinsic evaluation of our paraphrases by plugging them into a semantic parser for Freebase. Our evaluation experiments on the WebQuestions benchmark dataset show that the performance of the semantic parser significantly improves over strong baselines.
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