时间序列可视化中聚合的任务驱动评价。

Danielle Albers, Michael Correll, Michael Gleicher
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引用次数: 92

摘要

许多可视化任务要求查看者对数据的聚合属性做出判断。最近的研究表明,观众可以有效地执行这些任务,例如,有效地比较数据范围内的最大值或平均值。然而,这项工作也表明,这种有效性取决于显示器的设计。本文探讨聚合任务与可视化设计之间的关系,为任务与设计的匹配提供指导。我们将感知科学和图形感知的先前结果结合起来,提出了一组影响各种汇总比较任务性能的设计变量。我们将描述这些变量中的选择如何导致与特定任务相匹配的设计。我们使用这些变量来评估一组8个不同的设计,预测它们将如何支持一组6个聚合时间序列比较任务。一项众包评估证实了这些预测。这些结果不仅为特定的可视化如何支持各种任务提供了证据,而且还建议使用已确定的设计变量作为设计适合各种任务类型的可视化的工具。
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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Task-Driven Evaluation of Aggregation in Time Series Visualization.

Many visualization tasks require the viewer to make judgments about aggregate properties of data. Recent work has shown that viewers can perform such tasks effectively, for example to efficiently compare the maximums or means over ranges of data. However, this work also shows that such effectiveness depends on the designs of the displays. In this paper, we explore this relationship between aggregation task and visualization design to provide guidance on matching tasks with designs. We combine prior results from perceptual science and graphical perception to suggest a set of design variables that influence performance on various aggregate comparison tasks. We describe how choices in these variables can lead to designs that are matched to particular tasks. We use these variables to assess a set of eight different designs, predicting how they will support a set of six aggregate time series comparison tasks. A crowd-sourced evaluation confirms these predictions. These results not only provide evidence for how the specific visualizations support various tasks, but also suggest using the identified design variables as a tool for designing visualizations well suited for various types of tasks.

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