Solving Diversity-Aware Maximum Inner Product Search Efficiently and Effectively

Kohei Hirata, Daichi Amagata, Sumio Fujita, Takahiro Hara
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引用次数: 9

Abstract

Maximum inner product search (or k-MIPS) is a fundamental operation in recommender systems that infer preferable items for users. To support large-scale recommender systems, existing studies designed scalable k-MIPS algorithms. However, these studies do not consider diversity, although recommending diverse items is important to improve user satisfaction. We therefore formulate a new problem, namely diversity-aware k-MIPS. In this problem, users can control the degree of diversity in their recommendation lists through a parameter. However, exactly solving this problem is unfortunately NP-hard, so it is challenging to devise an efficient, effective, and practical algorithm for the diversity-aware k-MIPS problem. This paper overcomes this challenge and proposes IP-Greedy, which incorporates new early termination and skipping techniques into a greedy algorithm. We conduct extensive experiments on real datasets, and the results demonstrate the efficiency and effectiveness of our algorithm. Also, we conduct a case study of the diversity-aware k-MIPS problem on a real dataset. We confirm that this problem can make recommendation lists diverse while preserving high inner products of user and item vectors in the lists.
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高效地求解多样性感知的最大内积搜索
最大内积搜索(k-MIPS)是推荐系统中的一个基本操作,它为用户推断出更喜欢的商品。为了支持大规模推荐系统,现有研究设计了可扩展的k-MIPS算法。然而,这些研究没有考虑多样性,尽管推荐多样化的项目对提高用户满意度很重要。因此,我们提出了一个新的问题,即多样性感知k-MIPS。在这个问题中,用户可以通过参数控制推荐列表的多样性程度。然而,不幸的是,准确地解决这个问题是np困难的,因此为多样性感知的k-MIPS问题设计一个高效、有效和实用的算法是一项挑战。本文克服了这一挑战,提出了IP-Greedy算法,该算法将新的早期终止和跳过技术融入到贪心算法中。我们在真实数据集上进行了大量的实验,结果证明了我们的算法的效率和有效性。此外,我们还在真实数据集上对多样性感知k-MIPS问题进行了案例研究。我们证实,该问题可以使推荐列表多样化,同时保持列表中用户向量和项目向量的高内积。
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