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Relevance feedback / Learning to rank / Vector space model / Text Retrieval Conference / Tf*idf / Ranking SVM / Twitter / Relevance / Ranking function / Information science / Information retrieval / Science
Date: 2013-02-12 08:11:20
Relevance feedback
Learning to rank
Vector space model
Text Retrieval Conference
Tf*idf
Ranking SVM
Twitter
Relevance
Ranking function
Information science
Information retrieval
Science

PKUICST at TREC 2012 Microblog Track Feng Liang Runwei Qiang Yihong Hong Yue Fei Jianwu Yang {liangfeng,qiangrw,hongyihong,feiyue,yangjw}@pku.edu.cn ∗

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