Publication | Closed Access
Statistical cross-language information retrieval using n-best query translations
93
Citations
15
References
2002
Year
Unknown Venue
Natural Language ProcessingLanguage DocumentationInformation RetrievalEngineeringIntelligent Information RetrievalCorpus LinguisticsCross-language Information RetrievalComputational LinguisticsQuery ModelCross-language RetrievalQuery ExpansionLanguage StudiesNovel Statistical ModelN-best Query TranslationsLinguisticsSource LanguageText MiningMachine Translation
This paper presents a novel statistical model for cross-language information retrieval. Given a written query in the source language, documents in the target language are ranked by integrating probabilities computed by two statistical models: a query-translation model, which generates most probable term-by-term translations of the query, and a query-document model, which evaluates the likelihood of each document and translation. Integration of the two scores is performed over the set of N most probable translations of the query. Experimental results with values N=1, 5, 10 are presented on the Italian-English bilingual track data used in the CLEF 2000 and 2001 evaluation campaigns.
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