A survey on heterogeneous information network based recommender systems: Concepts, methods, applications and resources

Jiawei Liu , Chuan Shi , Cheng Yang , Zhiyuan Lu , Philip S. Yu
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引用次数: 12

Abstract

As an important way to alleviate information overload, a recommender system aims to filter out irrelevant information for users and provides them items that they may be interested in. In recent years, an increasing amount of works have been proposed to introduce auxiliary information in recommender systems to alleviate data sparsity and cold-start problems. Among them, heterogeneous information networks (HIN)-based recommender systems provide a unified approach to fuse various auxiliary information, which can be combined with mainstream recommendation algorithms to effectively enhance the performance and interpretability of models, and thus have been applied in many kinds of recommendation tasks. This paper provides a comprehensive and systematic survey of HIN-based recommender systems, including four aspects: concepts, methods, applications, and resources. Specifically, we firstly introduce the concepts related to recommender systems, heterogeneous information networks and HIN-based recommendation. Secondly, we present more than 70 methods categorized according to models or application scenarios, and describe representative methods symbolically. Thirdly, we summarize the benchmark datasets and open source code. Finally, we discuss several potential research directions and conclude our survey.

基于异构信息网络的推荐系统综述:概念、方法、应用和资源
作为缓解信息过载的一种重要方式,推荐系统旨在为用户过滤掉不相关的信息,并为他们提供他们可能感兴趣的项目。近年来,越来越多的工作被提出在推荐系统中引入辅助信息,以缓解数据稀疏和冷启动问题。其中,基于异构信息网络(HIN)的推荐系统提供了一种融合各种辅助信息的统一方法,可以与主流推荐算法相结合,有效地提高模型的性能和可解释性,并已应用于多种推荐任务。本文对基于HIN的推荐系统进行了全面、系统的综述,包括概念、方法、应用和资源四个方面。具体来说,我们首先介绍了推荐系统、异构信息网络和基于HIN的推荐的相关概念。其次,我们提出了70多种根据模型或应用场景分类的方法,并象征性地描述了具有代表性的方法。第三,我们总结了基准数据集和开源代码。最后,我们讨论了几个潜在的研究方向,并总结了我们的调查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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