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Learning to rank / Tf*idf / Precision and recall / Search engine indexing / Discounted cumulative gain / Document retrieval / PageRank / Supervised learning / Ranking SVM / Information science / Information retrieval / Ranking function
Date: 2009-11-23 17:29:18
Learning to rank
Tf*idf
Precision and recall
Search engine indexing
Discounted cumulative gain
Document retrieval
PageRank
Supervised learning
Ranking SVM
Information science
Information retrieval
Ranking function

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