Maximum Entropy Context Models for Ranking Biographical Answers to Open-Domain Definition Questions

Authors

  • Alejandro Figueroa Yahoo! Research Latin America
  • John Atkinson Universidad de Concepcion

DOI:

https://doi.org/10.1609/aaai.v25i1.8071

Abstract

In the context of question-answering systems, there are several strategies for scoring candidate answers to definition queries including centroid vectors, bi-term and context language models. These techniques use only positive examples (i.e., descriptions) when building their models. In this work, a maximum entropy based extension is proposed for context language models so as to account for regularities across non-descriptions mined from web-snippets. Experiments show that this extension outperforms other strategies increasing the precision of the top five ranked answers by more than 5%. Results suggest that web-snippets are a cost-efficient source of non-descriptions, and that some relationships extracted from dependency trees are effective to mine for candidate answer sentences.

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Published

2011-08-04

How to Cite

Figueroa, A., & Atkinson, J. (2011). Maximum Entropy Context Models for Ranking Biographical Answers to Open-Domain Definition Questions. Proceedings of the AAAI Conference on Artificial Intelligence, 25(1), 1173–1179. https://doi.org/10.1609/aaai.v25i1.8071