一种具有注意机制的正则化超图推荐算法

Tingting Zhu, Jianrui Chen, Zhihui Wang, Meixia He
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引用次数: 0

摘要

协同过滤是推荐系统中最常用的推荐技术之一。但它存在评分数据稀疏、推荐准确率低等问题。为了解决这些问题,我们提出了一种带注意机制的正则化超图推荐算法。我们可以在不丢失信息的情况下充分挖掘超边中的高阶关系。此外,我们利用用户的属性信息来计算物品对属性的吸引力,从而得到物品之间的相似度。为了更准确地计算相似度,将物品与属性的关系分为喜欢和不喜欢两种情况。此外,根据用户对不同物品的不同关注,引入了注意机制。最后,构建并优化正则化函数,得到预测分数和推荐列表。在Movielens-100K和Movielens-1M上的实验结果证明了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Regularized Hypergraph Recommendation Algorithm with Attention Mechanism
Collaborative filtering is one of the most commonly used recommendation technologies in recommender systems. However, it has the problems of sparse score data and low recommendation accuracy. To address these problems, we propose a regularized hypergraph recommendation algorithm with attention mechanism. We can fully mine the high-order relationships in the hyperedges without loss of information. In addition, we apply users’ attributes information to calculate the attraction of an item to the attributes, and then get the similarity between items. In order to calculate the similarity more accurately, the relations of items to attributes are divided into two cases: likes and dislikes. Moreover, according to the different attention of users to different items, we introduce the attention mechanism. Finally, we build and optimize the regularization function to obtain the predictive scores and recommendation lists. Experimental results on Movielens-100K and Movielens-1M demonstrate the effectiveness of our proposed algorithm.
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