Personalized recommendations have become a common feature of modern online services, including most major e-commerce sites, media platforms and social networks. Today, due to their high practical relevance, research in the area of recommender systems is flourishing more than ever. However, with the new application scenarios of recommender systems that we observe today, constantly new challenges arise as well, both in terms of algorithmic requirements and with respect to the evaluation of such systems. In this paper, we first provide an overview of the traditional formulation of the recommendation problem. We then review the classical algorithmic paradigms for item retrieval and ranking and elaborate how such systems can be evaluated. Afterwards, we discuss a number of recent developments in recommender systems research, including research on session-based recommendation, biases in recommender systems, and questions regarding the impact and value of recommender systems in practice.
翻译:个人化建议已成为现代在线服务,包括大多数主要电子商务网站、媒体平台和社交网络的共同特征。今天,由于它们具有高度的实际相关性,对推荐人系统领域的研究比以往任何时候更加蓬勃发展。然而,随着我们今天所观察到的建议人系统的新应用情景,在算法要求和这类系统评价方面也不断出现新的挑战。在本文件中,我们首先概述建议问题的传统表述方式。然后我们审查项目检索和排位的传统算法模式,并阐述如何评价这类系统。随后,我们讨论了建议人系统研究方面的一些最新动态,包括会议建议研究、建议人系统的偏向以及建议人系统在实践中的影响和价值问题。