More bang for your research buck: toward recommender systems for visual analytics

L. Blaha, Dustin L. Arendt, Fairul Mohd-Zaid
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引用次数: 5

Abstract

We propose a set of common sense steps required to develop a recommender system for visual analytics. Such a system is an essential way to get additional mileage out of costly user studies, which are typically archived post publication. Crucially, we propose conducting user studies in a manner that allows machine learning techniques to elucidate relationships between experimental data (i.e., user performance) and metrics about the data being visualized and candidate visual representations. We execute a case study within our framework to extract simple rules of thumb that relate different data metrics and visualization characteristics to patterns of user errors on several network analysis tasks. Our case study suggests a research agenda supporting the development of general, robust visualization recommender systems.
我们提出了一套常识性的步骤,需要开发一个推荐系统的视觉分析。这种系统是从昂贵的用户研究中获得额外收益的重要途径,这些研究通常是在出版后存档的。至关重要的是,我们建议以一种允许机器学习技术阐明实验数据(即用户性能)与有关可视化数据和候选视觉表示的指标之间关系的方式进行用户研究。我们在我们的框架内执行了一个案例研究,以提取简单的经验规则,这些规则将不同的数据度量和可视化特征与几个网络分析任务中的用户错误模式联系起来。我们的案例研究提出了一个支持开发通用的、健壮的可视化推荐系统的研究议程。
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