Recommender systems are important and powerful tools for various personalized services. Traditionally, these systems use data mining and machine learning techniques to make recommendations based on correlations found in the data. However, relying solely on correlation without considering the underlying causal mechanism may lead to various practical issues such as fairness, explainability, robustness, bias, echo chamber and controllability problems. Therefore, researchers in related area have begun incorporating causality into recommendation systems to address these issues. In this survey, we review the existing literature on causal inference in recommender systems. We discuss the fundamental concepts of both recommender systems and causal inference as well as their relationship, and review the existing work on causal methods for different problems in recommender systems. Finally, we discuss open problems and future directions in the field of causal inference for recommendations.
翻译:这些建议系统是各种个性化服务的重要而有力的工具。传统上,这些系统使用数据挖掘和机器学习技术,根据数据中发现的相关性提出建议。然而,仅仅依靠相关性而不考虑根本因果机制可能导致各种实际问题,如公平性、可解释性、稳健性、偏见、回声室和可控性问题。因此,相关领域的研究人员已开始将因果关系纳入建议系统,以解决这些问题。在这次调查中,我们审查了关于建议系统中因果推断的现有文献。我们讨论了建议系统的基本概念和因果推断及其关系,并审查了关于建议系统中不同问题的因果方法的现有工作。最后,我们讨论了建议中因果推断领域的公开问题和未来方向。