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基于经验分布和KL散度的协同过滤推荐质量评价研究
引用本文:张文,姜祎盼,张思光,崔杨波,杜宇航.基于经验分布和KL散度的协同过滤推荐质量评价研究[J].计算机应用研究,2019,36(9):2625-2630.
作者姓名:张文  姜祎盼  张思光  崔杨波  杜宇航
作者单位:北京化工大学经济管理学院,北京,100029;中国科学院科技战略咨询研究院,北京,100190
基金项目:国家自然科学基金资助项目(61379046);中央高校基本科研业务费(buctrc201504)
摘    要:提出了一种基于经验分布和KL散度的协同过滤推荐质量评价方法 RQE-EDKL(recommendation quality evaluation based on empirical distribution and KL divergence)。RQE-EDKL首先利用历史用户-商品数据生成不同商品数量下的商品历史使用概率分布;然后,利用该分布与各个协同过滤推荐方法得到的用户商品使用概率进行比较,计算其KL散度;最后,将KL散度最小的推荐结果视为最佳推荐结果并推送给用户。在Talking Data数据集上的实验结果表明,RQE-EDKL评价方法能够有效地在不同的推荐结果中选择更为切合用户真实需求的推荐结果,从而提高了协同过滤推荐的质量。

关 键 词:经验分布  推荐算法  KL散度  协同过滤
收稿时间:2018/2/23 0:00:00
修稿时间:2018/4/3 0:00:00

Study on recommendation quality evaluation based on empirical distribution and KL divergence
Zhang Wen,Jiang Yipan,Zhang Siguang,Cui Yangbo,Du Yuhang.Study on recommendation quality evaluation based on empirical distribution and KL divergence[J].Application Research of Computers,2019,36(9):2625-2630.
Authors:Zhang Wen  Jiang Yipan  Zhang Siguang  Cui Yangbo  Du Yuhang
Affiliation:(School of Economics & Management,Beijing University of Chemical Technology,Beijing 100029,China;Institutes of Science & Development,Chinese Academy of Sciences,Beijing 100190,China)
Abstract:This paper proposed an approach called RQE-EDKL(recommendation quality evaluation based on empirical distribution and KL divergence) to evaluate the recommendation quality based on empirical distribution and KL divergence. QE-EDKL firstly made use of historical user-item data to produce the historical usage probability distribution of items at different quantities. Secondly, it calculated the KL divergence based on the distributions of the historical usage probability and the usage probability of different recommendations. Thirdly, it regarded the recommendation with the minimum KL divergence as with the best quality and is recommended to the user. Experiments on TalkingData App data sets demonstrate that RQE-EDKL can effectively improve the quality of recommended results of collaborative filtering significantly on both accuracy and diversity.
Keywords:Empirical distribution  Recommendation algorithm  KL Divergence  Collaborative Filtering
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