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A sub-one quasi-norm-based similarity measure for collaborative filtering in recommender systems

机译:用于推荐系统中的协作滤波的基于次级标准的相似度量

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摘要

Collaborative filtering (CF) is one of the most successful approaches for an online store to make personalized recommendations through its recommender systems. A neighbor-hoodbased CF method makes recommendations to a target customer based on the similar preference of the target customer and those in the database. Similarity measuring between users directly contributes to an effective recommendation. In this paper, we propose a sub-one quasi-norm-based similarity measure for collaborative filtering in a recommender system. The proposed similarity measure shows its advantages over those commonly used similarity measures in the literature by making better use of rating values and deemphasizing the dissimilarity between users. Computational experiments using various real-life datasets clearly indicate the superiority of the proposed similarity measure, no matter in fully co-rated, sparsely co-rated or cold-start scenarios. (C) 2019 Elsevier Inc. All rights reserved.
机译:协作过滤(CF)是通过推荐系统进行个性化建议的在线商店最成功的方法之一。 邻居遗址的CF方法基于目标客户的相似偏好和数据库中的相似偏好向目标客户提出建议。 用户之间的相似性直接衡量有效的建议。 在本文中,我们提出了一种基于次级的基于准规范的相似度,用于在推荐系统中的协同滤波。 所提出的相似度措施通过更好地利用评级值并深入化用户之间的不相似性,显示其优于文献中的常用相似性措施的优点。 使用各种实际数据集的计算实验清楚地表明了所提出的相似度措施的优越性,无论完全共同,稀疏的共同评级还是冷启动情景。 (c)2019 Elsevier Inc.保留所有权利。

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