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Visual Interfaces for Recommendation Systems: Finding Similar and Dissimilar Peers

机译:推荐系统的可视界面:查找相似和不同的对等点

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Recommendation applications can guide users in making important life choices by referring to the activities of similar peers. For example, students making academic plans may learn from the data of similar students, while patients and their physicians may explore data from similar patients to select the best treatment. Selecting an appropriate peer group has a strong impact on the value of the guidance that can result from analyzing the peer group data. In this article, we describe a visual interface that helps users review the similarity and differences between a seed record and a group of similar records and refine the selection. We introduce the LikeMeDonuts, Ranking Glyph, and History Heatmap visualizations. The interface was refined through three rounds of formative usability evaluation with 12 target users, and its usefulness was evaluated by a case study with a student review manager using real student data. We describe three analytic workflows observed during use and summarize how users' input shaped the final design.
机译:推荐应用程序可以通过参考相似同行的活动来指导用户做出重要的生活选择。例如,制定学术计划的学生可能会从相似学生的数据中学习,而患者及其医师可能会从相似患者中探索数据以选择最佳治疗方法。选择适当的对等组对分析该对等组数据可能产生的指导价值有很大影响。在本文中,我们描述了一个可视界面,该界面可以帮助用户查看种子记录和一组相似记录之间的相似性和差异,并优化选择。我们介绍了LikeMeDonuts,等级字形和历史热图可视化。通过对12个目标用户的三轮格式化可用性评估来完善该界面,并通过与学生评论管理员一起使用真实学生数据进行的案例研究来评估其实用性。我们描述了在使用过程中观察到的三个分析工作流程,并总结了用户输入如何影响最终设计。

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