群体推荐系统中基于社会选择的解释

Thi Ngoc Trang Tran, Müslüm Atas, A. Felfernig, Viet-Man Le, Ralph Samer, Martin Stettinger
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引用次数: 27

摘要

解释可以帮助用户更好地理解为什么推荐一组项目。与单用户推荐系统相比,群推荐系统中的解释有更长远的目标。其中的例子是公平性,它有助于尽可能多地考虑到群体成员的偏好和共识,它说服群体成员同意一个决定。本文提出了不同的解释类型,并研究了哪种解释最有助于提高小组成员对小组建议的公平感知、共识感知和满意度。我们进行了一项用户研究来评估提出的解释。结果表明,考虑到所有或大多数群体成员的偏好的解释在上述方面取得了最好的结果。此外,这些方面之间存在正相关关系,即随着解释的感知公平性(或感知共识)的增加,用户对群体推荐的满意度也会增加。此外,在重复决策的背景下,在解释中加入小组成员对先前决策的满意度有助于提高用户对小组推荐的公平性感知。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Social Choice-based Explanations in Group Recommender Systems
Explanations help users to better understand why a set of items has been recommended. Compared to single user recommender systems, explanations in group recommender systems have further goals. Examples thereof are fairness which helps to take into account as much as possible group members' preferences and consensus which persuades group members to agree on a decision. This paper proposes different explanation types and investigates which explanation best helps to increase the fairness perception, consensus perception, and satisfaction of group members with regard to group recommendations. We conducted a user study to evaluate the proposed explanations. The results show that explanations which take into account preferences of all or the majority of group members achieve the best results in terms of the mentioned aspects. Moreover, there exist positive correlations among these aspects, i.e., as the perceived fairness (or the perceived consensus) of explanations increases, so does the satisfaction of users with regard to group recommendations. In addition, in the context of repeated decisions, the inclusion of group members' satisfaction from previous decisions in the explanations helps to improve the fairness perception of users with regard to group recommendations.
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