Learning To Rank

时间:2011-10-22 08:21:14
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文件名称:Learning To Rank

文件大小:272KB

文件格式:PPTX

更新时间:2011-10-22 08:21:14

Rank

Learning to rank is a new statistical learning technology on creating a ranking model for sorting objects. The technology has been successfully applied to web search, and is becoming one of the key machineries for building search engines. Exist- ing approaches to learning to rank, however, did not consider the cases in which there exists relationship between the ob- jects to be ranked, despite of the fact that such situations are very common in practice. For example, in web search, given a query certain relationships usually exist among the the retrieved documents, e.g., URL hierarchy, similarity, etc., and sometimes it is necessary to utilize the information in ranking of the documents. This paper addresses the issue and formulates it as a novel learning problem, referred to as, `learning to rank relational objects'. In the new learning task, the ranking model is de¯ned as a function of not only the contents (features) of objects but also the relations be- tween objects. The paper further focuses on one setting of the learning problem in which the way of using relation in- formation is predetermined. It formalizes the learning task as an optimization problem in the setting. The paper then proposes a new method to perform the optimization task, particularly an implementation based on SVM. Experimen- tal results show that the proposed method outperforms the baseline methods for two ranking tasks (Pseudo Relevance Feedback and Topic Distillation) in web search, indicating that the proposed method can indeed make e®ective use of relation information and content information in ranking.


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