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Query Expansion in Information Retrieval Systems using a Bayesian Network-Based Thesaurus (1301.7364v1)

Published 30 Jan 2013 in cs.IR and cs.AI

Abstract: Information Retrieval (IR) is concerned with the identification of documents in a collection that are relevant to a given information need, usually represented as a query containing terms or keywords, which are supposed to be a good description of what the user is looking for. IR systems may improve their effectiveness (i.e., increasing the number of relevant documents retrieved) by using a process of query expansion, which automatically adds new terms to the original query posed by an user. In this paper we develop a method of query expansion based on Bayesian networks. Using a learning algorithm, we construct a Bayesian network that represents some of the relationships among the terms appearing in a given document collection; this network is then used as a thesaurus (specific for that collection). We also report the results obtained by our method on three standard test collections.

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Authors (3)
  1. Luis M. de Campos (12 papers)
  2. Juan F. Huete (9 papers)
  3. Juan M. Fernandez-Luna (1 paper)
Citations (38)