基于图神经网络的协同过滤推荐算法综述
A Survey of Collaborative Filtering Recommender Algorithms Based on Graph Neural Networks
-
摘要: 推荐系统因可有效解决信息过载问题而受到学术界与工业界的广泛关注。基于图神经网络的协同过滤推荐算法可有效表征用户和项目特征, 并可学习用户和项目间的复杂关系, 成为近年来推荐系统中广泛使用的一种技术。作者首先根据拟解决问题的不同对算法进行分类, 然后对每个类别下的代表性算法进行比较与分析;其次, 对实验中常用的数据集进行分类汇总, 并对常用的评价指标进行简要介绍;最后, 给出该领域面临的挑战和未来可能的研究方向。Abstract: Recommendation system can effectively address the problem of information overload, attracting extensive attention from both academia and industry. Collaborative filtering recommender algorithms based on graph neural networks have emerged as a widely adopted technique in recent years. These algorithms can effectively represent user and item features and learn intricate relationships between users and items. Therefore, they have become prevalent in the field of recommendation system. Firstly, the paper categorizes the algorithms based on the problems that they aim to solve and then provides a comparison and analysis of representative algorithms within each category. The paper also summarize commonly used datasets in experiments and briefly introduce the key evaluation metrics. Finally, the paper discuss the challenges and potential research directions.