A neighbor selection method based on network community detection for collaborative filtering

Lin-Rong Guo, Qinke Peng
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引用次数: 5

Abstract

The neighbor selection that determines which users are exploited to estimate a target user's ratings has an important influence on the accuracy of recommendations of collaborative filtering based recommender system. Two kinds of ways for neighbor selection: KNN and cluster-based, are lack of specificity which refers to selecting different appropriate neighbors for different given target users, and thus limit the accuracy of recommendation. Therefore, in this paper, firstly, we propose a method that employs the evolutionary algorithm to optimize neighbors for all target users. Secondly, overcoming the high time complexity of the first one, we present another approach in which community detection algorithm is utilized as a preprocessing, and then the evolution algorithm is employed to optimize the neighborhood size for every community. We present experiments on a standard benchmark data-set, and the results show that the two methods both realize the specificity in neighbor selection, and accordingly lead to a higher accuracy of recommendations. Besides, the second one makes a good compromise between the specificity and time complexity.
基于网络社区检测的协同过滤邻居选择方法
邻居选择决定了哪些用户被用来估计目标用户的评分,这对基于协同过滤的推荐系统的推荐准确性有重要影响。基于KNN和基于聚类的两种邻居选择方法缺乏特异性,即针对给定的不同目标用户选择不同合适的邻居,从而限制了推荐的准确性。因此,在本文中,我们首先提出了一种采用进化算法对所有目标用户进行邻居优化的方法。其次,克服了前一种方法的时间复杂度高的缺点,提出了一种利用社区检测算法进行预处理,然后利用进化算法对每个社区的邻域大小进行优化的方法。在一个标准的基准数据集上进行了实验,结果表明,两种方法都实现了邻居选择的特异性,从而提高了推荐的准确性。此外,第二种方法在特异性和时间复杂性之间取得了很好的折衷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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