MEANS: A medical question-answering system combining NLP techniques and semantic Web technologies

Auteurs

A. Ben Abacha and P. Zweigenbaum

Référence

Information Processing & Management, vol. 51, no. 5, pp. 570-594, 2015

Description

The Question Answering (QA) task aims to provide precise and quick answers to user questions from a collection of documents or a database. This kind of IR system is sorely needed with the dramatic growth of digital information. In this paper, we address the problem of QA in the medical domain where several specific conditions are met. We propose a semantic approach to QA based on (i) Natural Language Processing techniques, which allow a deep analysis of medical questions and documents and (ii) semantic Web technologies at both representation and interrogation levels. We present our Semantic Question-Answering System, called MEANS and our proposed method for “Answer Search” based on semantic search and query relaxation. We evaluate the overall system performance on real questions and answers extracted from MEDLINE articles. Our experiments show promising results and suggest that a query-relaxation strategy can further improve the overall performance.

Lien

doi:10.1016/j.ipm.2015.04.006

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