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Relevance feedback / Text Retrieval Conference / Okapi BM25 / Query expansion / Relevance / Vector space model / Tf*idf / Language model / N-gram / Information science / Information retrieval / Science
Relevance feedback
Text Retrieval Conference
Okapi BM25
Query expansion
Relevance
Vector space model
Tf*idf
Language model
N-gram
Information science
Information retrieval
Science

Combining Methods for the TREC 2003 Robust Track James Mayfield and Paul McNamee Research and Technology Development Center The Johns Hopkins University Applied Physics LaboratoryJohns Hopkins Road, Laurel, Maryla

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