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Web query classification / Tf*idf / Query expansion / Document retrieval / Euclidean vector / Rocchio Classification / Latent semantic indexing / Information science / Information retrieval / Vector space model
Date: 2005-02-10 13:20:37
Web query classification
Tf*idf
Query expansion
Document retrieval
Euclidean vector
Rocchio Classification
Latent semantic indexing
Information science
Information retrieval
Vector space model

Meiji University Web, Novelty and Genomics Track Experiments Tomoe Tomiyama, Kosuke Karoji, Takeshi Kondo, Yuichi Kakuta and Tomohiro Takagi Department of Computer Science, Meiji University {tomiyama, karoji, t-kondo, ka

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