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Machine learning / Ranking function / Discounted cumulative gain / Pairwise / Google Search / Relevance feedback / Ranking / Information science / Information retrieval / Learning to rank
Date: 2010-11-09 19:32:34
Machine learning
Ranking function
Discounted cumulative gain
Pairwise
Google Search
Relevance feedback
Ranking
Information science
Information retrieval
Learning to rank

Learning to Re-rank Web Search Results with Multiple Pairwise Features Changsung Kang† , Xuanhui Wang† , Jiang Chen‡ , Ciya Liao§ , Yi Chang† , Belle Tseng† , Zhaohui Zheng† †

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