In recent years, sequential recommender systems (SRSs) and session-based recommender systems (SBRSs) have emerged as a new paradigm of RSs to capture users' short-term but dynamic preferences for enabling more timely and accurate recommendations. Although SRSs and SBRSs have been extensively studied, there are many inconsistencies in this area caused by the diverse descriptions, settings, assumptions and application domains. There is no work to provide a unified framework and problem statement to remove the commonly existing and various inconsistencies in the area of SR/SBR. There is a lack of work to provide a comprehensive and systematic demonstration of the data characteristics, key challenges, most representative and state-of-the-art approaches, typical real-world applications and important future research directions in the area. This work aims to fill in these gaps so as to facilitate further research in this exciting and vibrant area.
翻译:近年来,相继建议系统(SRS)和基于届会的建议系统(SBRS)已成为登记册系统的新范例,用以捕捉用户的短期但动态的偏好,以便提出更及时和更准确的建议。虽然对SRS和SRBS进行了广泛研究,但由于描述、设置、假设和应用领域各不相同,这一领域存在许多不一致之处。没有努力提供一个统一的框架和问题说明,以消除SR/SRR领域现有的和各种常见的不一致之处。缺乏全面、系统地展示数据特征、关键挑战、最具代表性和最先进的方法、典型的现实世界应用以及该领域的重要未来研究方向的工作。这项工作旨在填补这些空白,以便推动在这一令人振奋和充满活力的领域开展进一步研究。