Listwise Collaborative Ranking Based on the Assumption of Locally Low-Rank Rating Matrix
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    Abstract:

    Collaborative filtering (CF) is the core of most of today's recommender systems. Conventional CF models focus on the accuracy of predicted ratings, while the actual output of recommender systems is a list of ranked items. In response to this problem, this research introduces technologies in the field of learning to rank into recommendation algorithms and proposes a listed collaborative ranking algorithm based on the assumption that the rating matrix is locally low-rank. It directly uses list-wise ranking loss function to optimize the matrix factorization model. Significant improvement on operation speed is achieved and verified by experiment. Experiments on three real-world recommender system datasets show that the proposed algorithm is a viable approach compared with existing recommendation algorithms.

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刘海洋,王志海,黄丹,孙艳歌.基于评分矩阵局部低秩假设的成列协同排名算法.软件学报,2015,26(11):2981-2993

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  • Received:May 31,2015
  • Revised:August 26,2015
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  • Online: November 04,2015
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