基于布隆过滤器的推荐系统的项目/用户表示

Manuel Pozo, Raja Chiky, F. Meziane, Elisabeth Métais
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引用次数: 8

摘要

本文主要研究推荐系统领域中的物品/用户表示问题。这些系统计算物品(和/或用户)之间的相似性,根据用户以前的偏好向他们推荐新物品。考虑项目和/或用户的特征(又名特征或属性)通常是有用的。它通过向量表示项目/用户,这些向量可能非常大,稀疏且占用空间。在本文中,我们提出了一种新的精确方法来表示具有低尺寸数据结构的项目/用户,它依赖于两个概念:(1)项目/用户表示基于bloom过滤器向量,以及(2)使用这些过滤器来计算位与相似度和位异或相似度。这项工作的动机有三个想法:(1)详细的向量表示是大而稀疏的;(2)比较物品/用户的更多特征可能会获得更好的物品相似度准确性;(3)相似度不仅存在于共同的现有方面,也存在于共同的缺失方面。我们已经在公开可用的MovieLens数据集上试验了这种方法。与现有的标准向量表示和奇异值分解(SVD)方法相比,该方法具有良好的性能。
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An item/user representation for recommender systems based on bloom filters
This paper focuses on the items/users representation in the domain of recommender systems. These systems compute similarities between items (and/or users) to recommend new items to users based on their previous preferences. It is often useful to consider the characteristics (a.k.a features or attributes) of the items and/or users. This represents items/users by vectors that can be very large, sparse and space-consuming. In this paper, we propose a new accurate method for representing items/users with low size data structures that relies on two concepts: (1) item/user representation is based on bloom filter vectors, and (2) the usage of these filters to compute bitwise AND similarities and bitwise XNOR similarities. This work is motivated by three ideas: (1) detailed vector representations are large and sparse, (2) comparing more features of items/users may achieve better accuracy for items similarities, and (3) similarities are not only in common existing aspects, but also in common missing aspects. We have experimented this approach on the publicly available MovieLens dataset. The results show a good performance in comparison with existing approaches such as standard vector representation and Singular Value Decomposition (SVD).
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