The Contextual Turn: from Context-Aware to Context-Driven Recommender Systems

Roberto Pagano, P. Cremonesi, M. Larson, Balázs Hidasi, D. Tikk, Alexandros Karatzoglou, Massimo Quadrana
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引用次数: 41

Abstract

A critical change has occurred in the status of context in recommender systems. In the past, context has been considered 'additional evidence'. This past picture is at odds with many present application domains, where user and item information is scarce. Such domains face continuous cold start conditions and must exploit session rather than user information. In this paper, we describe the `Contextual Turn?: the move towards context-driven recommendation algorithms for which context is critical, rather than additional. We cover application domains, algorithms that promise to address the challenges of context-driven recommendation, and the steps that the community has taken to tackle context-driven problems. Our goal is to point out the commonalities of context-driven problems, and urge the community to address the overarching challenges that context-driven recommendation poses.
情境转向:从情境感知到情境驱动的推荐系统
在推荐系统中,上下文的状态发生了重大变化。过去,语境被认为是“附加证据”。过去的情况与许多当前的应用领域不一致,在这些领域中,用户和项目信息是稀缺的。这些域面临连续冷启动条件,必须利用会话而不是用户信息。在本文中,我们描述了“语境转向?”转向上下文驱动的推荐算法,其中上下文是至关重要的,而不是附加的。我们涵盖了应用领域、有望解决上下文驱动推荐挑战的算法,以及社区为解决上下文驱动问题所采取的步骤。我们的目标是指出上下文驱动问题的共性,并敦促社区解决上下文驱动推荐所带来的总体挑战。
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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