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Behavior-driven visualization recommendation

机译:行为驱动的可视化推荐

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We present a novel approach to visualization recommendation that monitors user behavior for implicit signals of user intent to provide more effective recommendation. This is in contrast to previous approaches which are either insensitive to user intent or require explicit, user specified task information. Our approach, called Behavior-Driven Visualization Recommendation (BDVR), consists of two distinct phases: (1) pattern detection, and (2) visualization recommendation. In the first phase, user behavior is analyzed dynamically to find semantically meaningful interaction patterns using a library of pattern definitions developed through observations of real-world visual analytic activity. In the second phase, our BDVR algorithm uses the detected patterns to infer a user's intended visual task. It then automatically suggests alternative visualizations that support the inferred visual task more directly than the user's current visualization. We present the details of BDVR and describe its implementation within our lab's prototype visual analysis system. We also present study results that demonstrate that our approach shortens task completion time and reduces error rates when compared to behavior-agnostic recommendation.
机译:我们提出了一种新颖的方法,可视化建议,监控用户行为的用户行为,以提供用户意图的隐式信号,以提供更有效的推荐。这与先前的方法形成对比,这对用户意图不敏感或需要显式用户指定的任务信息。我们的方法,称为行为驱动的可视化建议(BDVR)包括两个不同的阶段:(1)模式检测,和(2)可视化推荐。在第一阶段,使用通过观察现实世界视觉分析活动的观察来动态地分析用户行为以查找语义有意义的交互模式。在第二阶段,我们的BDVR算法使用检测到的模式来推断用户的预期视觉任务。然后,它自动提出替代可视化,这些可视化比用户的当前可视化更直接地支持推断的视觉任务。我们介绍了BDVR的详细信息,并在实验室的原型视觉分析系统中描述了其实现。我们还提出了研究结果,表明我们的方法缩短了任务完成时间并与行为无关推荐相比减少了错误率。

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