再论推荐系统中的语境识别

Yong Zheng
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引用次数: 30

摘要

与传统的推荐系统(RS)相比,上下文感知推荐系统(CARS)的出现是为了适应用户在各种上下文情况下的偏好。这些年来,不同的上下文感知推荐算法已经被开发出来,它们能够证明CARS的有效性。然而,该领域尚未就上下文的定义达成一致,研究人员可能会将多种变量(例如用户配置文件或项目特征)纳入其中,这进一步造成了基于内容的RS和基于上下文的RS之间的混淆,并将上下文识别问题定位在CARS中。在本文中,我们重新审视了推荐系统中语境的定义,并提出了一个语境识别框架来澄清语境变量的初步选择,这可能进一步有助于解释推荐系统中的语境效应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Revisit to The Identification of Contexts in Recommender Systems
In contrast to traditional recommender systems (RS), context-aware recommender systems (CARS) emerged to adapt to users' preferences in various contextual situations. During those years, different context-aware recommendation algorithms have been developed and they are able to demonstrate the effectiveness of CARS. However, this field has yet to agree on the definition of context, where researchers may incorporate diversified variables (e.g., user profiles or item features), which further creates confusions between content-based RS and context-based RS, and positions the problem of context identification in CARS. In this paper, we revisit the definition of contexts in recommender systems, and propose a context identification framework to clarify the preliminary selection of contextual variables, which may further assist interpretation of contextual effects in RS.
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