See what you want to see: visual user-driven approach for hybrid recommendation

Denis Parra, Peter Brusilovsky, C. Trattner
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引用次数: 95

Abstract

Research in recommender systems has traditionally focused on improving the predictive accuracy of recommendations by developing new algorithms or by incorporating new sources of data. However, several studies have shown that accuracy does not always correlate with a better user experience, leading to recent research that puts emphasis on Human-Computer Interaction in order to investigate aspects of the interface and user characteristics that influence the user experience on recommender systems. Following this new research this paper presents SetFusion, a visual user-controllable interface for hybrid recommender system. Our approach enables users to manually fuse and control the importance of recommender strategies and to inspect the fusion results using an interactive Venn diagram visualization. We analyze the results of two field studies in the context of a conference talk recommendation system, performed to investigate the effect of user controllability in a hybrid recommender. Behavioral analysis and subjective evaluation indicate that the proposed controllable interface had a positive effect on the user experience.
看到你想看到的:混合推荐的可视化用户驱动方法
传统上,推荐系统的研究主要集中在通过开发新的算法或结合新的数据源来提高推荐的预测准确性。然而,一些研究表明,准确性并不总是与更好的用户体验相关,导致最近的研究将重点放在人机交互上,以调查影响推荐系统用户体验的界面和用户特征方面。在此基础上,本文提出了一种用于混合推荐系统的可视化用户可控界面SetFusion。我们的方法使用户能够手动融合和控制推荐策略的重要性,并使用交互式维恩图可视化检查融合结果。我们在会议演讲推荐系统的背景下分析了两个实地研究的结果,以调查用户可控性在混合推荐系统中的影响。行为分析和主观评价表明,提出的可控界面对用户体验产生了积极的影响。
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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