Recommender systems (RSs) have been playing an increasingly important role for informed consumption, services, and decision-making in the overloaded information era and digitized economy. In recent years, session-based recommender systems (SBRSs) have emerged as a new paradigm of RSs. Different from other RSs such as content-based RSs and collaborative filtering-based RSs which usually model long-term yet static user preferences, SBRSs aim to capture short-term but dynamic user preferences to provide more timely and accurate recommendations sensitive to the evolution of their session contexts. Although SBRSs have been intensively studied, neither unified problem statements for SBRSs nor in-depth elaboration of SBRS characteristics and challenges are available. It is also unclear to what extent SBRS challenges have been addressed and what the overall research landscape of SBRSs is. This comprehensive review of SBRSs addresses the above aspects by exploring in depth the SBRS entities (e.g., sessions), behaviours (e.g., users' clicks on items) and their properties (e.g., session length). We propose a general problem statement of SBRSs, summarize the diversified data characteristics and challenges of SBRSs, and define a taxonomy to categorize the representative SBRS research. Finally, we discuss new research opportunities in this exciting and vibrant area.
翻译:在信息超负荷的信息时代和数字化经济中,建议系统在知情的消费、服务和决策方面发挥着越来越重要的作用,近年来,会议建议系统(SBRS)已成为RS的新范例,不同于其他RS,例如基于内容的RS和基于合作过滤的RS,它们通常以长期而静态的用户偏好为模型,而这种系统的目的是获取短期但动态的用户偏好,以提供对其会议背景演变敏感的更及时和准确的建议。尽管对SRBS进行了深入研究,但既没有统一SRBS问题说明,也没有深入阐述SRBS的特点和挑战。目前还不清楚SBRS的挑战在多大程度上得到了解决,以及SBRS的总体研究环境是什么样的。对SRS的全面审查通过深入探索SRRS实体(例如会议)、行为(例如用户点击项目及其特性(例如会议长度),我们建议了SRS的动态研究领域的一般性问题说明、SBRAS的多样化研究领域、我们为SBRS的多样化研究领域定义了SRS的新机遇。