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Boolean kernels for collaborative filtering in top-N item recommendation

机译:在前N个项目推荐中用于协作过滤的布尔核

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摘要

In many personalized recommendation problems available data consists only of positive interactions (implicit feedback) between users and items. This problem is also known as One-Class Collaborative Filtering (OC-CF). Linear models usually achieve state-of-the-art performances on OC-CF problems and many efforts have been devoted to build more expressive and complex representations able to improve the recommendations. Recent analysis show that collaborative filtering (CF) datasets have peculiar characteristics such as high sparsity and a long tailed distribution of the ratings. In this paper we propose a boolean kernel, called Disjunctive kernel, which is less expressive than the linear one but it is able to alleviate the sparsity issue in CF contexts. The embedding of this kernel is composed by all the combinations of a certain arity d of the input variables, and these combined features are semantically interpreted as disjunctions of the input variables. Experiments on several CF datasets show the effectiveness and the efficiency of the proposed kernel. (c) 2018 Elsevier B.V. All rights reserved.
机译:在许多个性化推荐问题中,可用数据仅由用户和项目之间的积极交互(隐式反馈)组成。此问题也称为一类协作过滤(OC-CF)。线性模型通常可以解决OC-CF问题方面的最新问题,并且已经进行了许多努力来构建能够改进建议的更具表现力和复杂性的表示形式。最近的分析表明,协作过滤(CF)数据集具有奇特的特性,例如稀疏性高,评分的长尾分布。在本文中,我们提出了一个布尔核,称为Disjunctive核,它比线性核的表达性差,但能够缓解CF上下文中的稀疏性问题。该内核的嵌入由输入变量的某个单位d的所有组合组成,并且这些组合的特征在语义上被解释为输入变量的析取。在几个CF数据集上进行的实验证明了所提出内核的有效性和效率。 (c)2018 Elsevier B.V.保留所有权利。

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