Listwise Multi-Kernel Similarity Learning Algorithm for Similar Mobile App Recommendation
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    Abstract:

    Similar App recommendation is useful for helping users to discover their interested Apps.Different from existing similarity learning algorithms, the similar App recommendation focuses on presenting a ranking list of similar Apps for each App.In this paper, we put emphasis on how to learn a similarity function in a ranking scenario.Previous studies model the relative similarity in the form of triplets.Instead of triplets, we model the ranking list as a whole in the loss function, and propose a listwise multi-kernel similarity learning method, referred as SimListMKL.Experimental results on real world data set show that our proposed method SimListMKL outperforms the baselines approaches based on triplets.

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卜宁,牛树梓,马文静,龙国平.面向相似App推荐的列表式多核相似性学习算法.计算机系统应用,2017,26(1):116-121

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  • Received:April 14,2016
  • Revised:May 12,2016
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  • Online: January 14,2017
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