Relaxed selection techniques for querying time-series graphs

Christian Holz, Steven K. Feiner
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引用次数: 46

Abstract

Time-series graphs are often used to visualize phenomena that change over time. Common tasks include comparing values at different points in time and searching for specified patterns, either exact or approximate. However, tools that support time-series graphs typically separate query specification from the actual search process, allowing users to adapt the level of similarity only after specifying the pattern. We introduce relaxed selection techniques, in which users implicitly define a level of similarity that can vary across the search pattern, while creating a search query with a single-gesture interaction. Users sketch over part of the graph, establishing the level of similarity through either spatial deviations from the graph, or the speed at which they sketch (temporal deviations). In a user study, participants were significantly faster when using our temporally relaxed selection technique than when using traditional techniques. In addition, they achieved significantly higher precision and recall with our spatially relaxed selection technique compared to traditional techniques.
查询时间序列图的轻松选择技术
时间序列图通常用于可视化随时间变化的现象。常见的任务包括比较不同时间点的值和搜索指定的模式,无论是精确的还是近似的。但是,支持时间序列图的工具通常将查询规范与实际搜索过程分开,允许用户仅在指定模式之后调整相似度。我们引入了轻松的选择技术,其中用户隐式地定义了可以在搜索模式中变化的相似程度,同时使用单手势交互创建搜索查询。用户绘制部分图形,通过与图形的空间偏差或绘制速度(时间偏差)建立相似程度。在一项用户研究中,参与者在使用我们暂时放松的选择技术时比使用传统技术时明显更快。此外,与传统方法相比,我们的空间放松选择技术获得了更高的精度和召回率。
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