评估基于相似性的推荐的视觉解释:用户感知和性能

Chun-Hua Tsai, Peter Brusilovsky
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引用次数: 24

摘要

推荐系统帮助用户减少信息过载。近年来,增强推荐系统的可解释性越来越受到人机交互领域的关注。然而,当用户探索或比较推荐时,用户首选的解释界面是否能够保持相同的性能水平尚不清楚。在本文中,我们介绍了一个参与式的过程,为三个基于相似性的推荐模型设计具有多个解释目标的解释接口。我们通过两个用户研究来研究用户感知和性能的关系。在第一个研究中(N=15),我们通过卡片分类和半访谈来确定用户偏好的界面。在第二项研究中(N=18),我们对六个解释界面进行了以绩效为中心的评估。结果表明,用户首选的界面可能不能保证相同水平的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating Visual Explanations for Similarity-Based Recommendations: User Perception and Performance
Recommender system helps users to reduce information overload. In recent years, enhancing explainability in recommender systems has drawn more and more attention in the field of Human-Computer Interaction (HCI). However, it is not clear whether a user-preferred explanation interface can maintain the same level of performance while the users are exploring or comparing the recommendations. In this paper, we introduced a participatory process of designing explanation interfaces with multiple explanatory goals for three similarity-based recommendation models. We investigate the relations of user perception and performance with two user studies. In the first study (N=15), we conducted card-sorting and semi-interview to identify the user preferred interfaces. In the second study (N=18), we carry out a performance-focused evaluation of six explanation interfaces. The result suggests that the user-preferred interface may not guarantee the same level of performance.
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