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Locally Adaptive Neighborhood Selection for Collaborative Filtering Recommendations

机译:协作过滤建议的本地自适应邻域选择

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摘要

User-to-user similarity is a fundamental component of Collaborative Filtering (CF) recommender systems. In user-to-user similarity the ratings assigned by two users to a set of items are pairwise compared and averaged (correlation). In this paper we make user-to-user similarity adaptive, i.e., we dynamically change the computation depending on the profiles of the compared users and the target item whose rating prediction is sought. We propose to base the similarity between two users only on the subset of co-rated items which best describes the taste of the users with respect to the target item. These are the items which have the highest correlation with the target item. We have evaluated the proposed method using a range of error measures and showed that the proposed locally adaptive neighbor selection, via item selection, can significantly improve the recommendation accuracy compared to standard CF.
机译:用户之间的相似性是协作过滤(CF)推荐系统的基本组成部分。在用户与用户之间的相似性中,将两个用户分配给一组项目的评分进行成对比较和平均(相关)。在本文中,我们使用户与用户之间的相似性具有自适应性,即我们根据比较用户的配置文件和寻求评级预测的目标项目来动态更改计算。我们建议仅基于共同评分项目的子集来建立两个用户之间的相似度,这最能描述用户相对于目标项目的口味。这些是与目标项目相关性最高的项目。我们已经使用一系列误差度量评估了该建议方法,并表明与标准CF相比,该建议的局部自适应邻居选择(通过项目选择)可以显着提高推荐准确性。

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