相似或相关:基于频谱的项目关系挖掘与图卷积网络互补推荐

Gang-Feng Ma;Xu-Hua Yang;Haixia Long;Yujiao Huang
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引用次数: 0

摘要

补充推荐,即向用户推荐经常购买的商品,已经得到了极大的关注。与传统的基于相似性的推荐不同,互补推荐侧重于相关但不一定相似的项目(例如,计算机和键盘),这符合用户的购买习惯。然而,目前大多数互补推荐系统无法有效区分或衡量这两种类型的关系。在本文中,我们提出了类似的或相关的:基于频谱的项目关系挖掘与图卷积网络互补推荐(SR-Rec)。首先,我们设计了两个基于光谱的滤波器,充分挖掘物品的相似度和相关性信息,从而实现两类关系的有效区分。然后,我们分别计算条目之间的相似性和相关性得分,并采用两两自注意机制来衡量这些关系对最终推荐的影响。在三个公共开源数据集上的实验结果表明,SR-Rec在互补推荐方面优于最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Similar or Related: Spectral-Based Item Relationship Mining With Graph Convolutional Network for Complementary Recommendation
Complementary recommendation, which aims to recommend frequently copurchased items to users, has gained significant attention. Unlike traditional similarity-based recommendations, complementary recommendation focus on items that are related but not necessarily similar (e.g., computers and keyboards), that aligns with users’ purchasing habits. However, most of current complementary recommendation systems fail to effectively differentiate or measure these two types of relationships. In this article, we propose similar or related: spectral-based item relationship mining with graph convolutional network for complementary recommendation (SR-Rec). First, we design two spectral-based filters to fully mine the similarity and relevance information of items, thereby achieving effective discrimination between the two types of relationships. Then, we compute similarity and relevance scores between items separately, and employ a pairwise self-attention mechanism to measure the impact of these relationships on the final recommendations. Experimental results on three public open-source datasets demonstrate that SR-Rec outperforms state-of-the-art performance in complementary recommendation.
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CiteScore
7.70
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