Publication | Open Access
Comparing and Combining Methods for Automatic Query Expansion
27
Citations
1
References
2008
Year
EngineeringIntelligent Information RetrievalQuery ModelSemantic WebCorpus LinguisticsQuery SuggestionText MiningNatural Language ProcessingQuery TermsInformation RetrievalData ScienceData MiningComputational LinguisticsRelevance FeedbackData RetrievalQuery ExpansionKnowledge DiscoveryComputer ScienceQuery AnalysisNaïve CombinationCandidate Query TermsAutomatic Query Expansion
Query expansion is a well known method to improve the performance of information retrieval systems. In this work we have tested different approaches to extract the candidate query terms from the top ranked documents returned by the first-pass retrieval. One of them is the cooccurrence approach, based on measures of cooccurrence of the candidate and the query terms in the retrieved documents. The other one, the probabilistic approach, is based on the probability distribution of terms in the collection and in the top ranked set. We compare the retrieval improvement achieved by expanding the query with terms obtained with different methods belonging to both approaches. Besides, we have developed a naïve combination of both kinds of method, with which we have obtained results that improve those obtained with any of them separately. This result confirms that the information provided by each approach is of a different nature and, therefore, can be used in a combined manner.
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