在交互式混合社交推荐器中解释推荐

Chun-Hua Tsai, Peter Brusilovsky
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引用次数: 45

摘要

混合社会推荐系统利用来自多个来源的社会相关性向用户推荐相关的物品或人物。为了使混合推荐更加透明和可控,一些研究人员探索了交互式混合推荐界面,它允许用户驱动的推荐源融合。在这一领域的工作中,智能用户界面被研究作为一种增加透明度和改善用户体验的方法。在本文中,我们试图通过增加具有几种类型解释的交互式混合推荐界面来进一步提高推荐的透明度。我们通过主题内研究(N=33)评估用户行为模式和主观反馈。评价结果表明了所提解释模型的有效性。治疗后的调查结果表明,在可解释性感知显著改善,但这种改善是伴随着较低程度的可控性感知。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explaining recommendations in an interactive hybrid social recommender
Hybrid social recommender systems use social relevance from multiple sources to recommend relevant items or people to users. To make hybrid recommendations more transparent and controllable, several researchers have explored interactive hybrid recommender interfaces, which allow for a user-driven fusion of recommendation sources. In this field of work, the intelligent user interface has been investigated as an approach to increase transparency and improve the user experience. In this paper, we attempt to further promote the transparency of recommendations by augmenting an interactive hybrid recommender interface with several types of explanations. We evaluate user behavior patterns and subjective feedback by a within-subject study (N=33). Results from the evaluation show the effectiveness of the proposed explanation models. The result of post-treatment survey indicates a significant improvement in the perception of explainability, but such improvement comes with a lower degree of perceived controllability.
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