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An approach to the perceptual optimization of complex visualizations

机译:复杂可视化的感知优化方法

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This paper proposes a new experimental framework within which evidence regarding the perceptual characteristics of a visualization method can be collected, and describes how this evidence can be explored to discover principles and insights to guide the design of perceptually near-optimal visualizations. We make the case that each of the current approaches for evaluating visualizations is limited in what it can tell us about optimal tuning and visual design. We go on to argue that our new approach is better suited to optimizing the kinds of complex visual displays that are commonly created in visualization. Our method uses human-in-the-loop experiments to selectively search through the parameter space of a visualization method, generating large databases of rated visualization solutions. Data mining is then used to extract results from the database, ranging from highly specific exemplar visualizations for a particular data set, to more broadly applicable guidelines for visualization design. We illustrate our approach using a recent study of optimal texturing for layered surfaces viewed in stereo and in motion. We show that a genetic algorithm is a valuable way of guiding the human-in-the-loop search through visualization parameter space. We also demonstrate several useful data mining methods including clustering, principal component analysis, neural networks, and statistical comparisons of functions of parameters.
机译:本文提出了一个新的实验框架,可在其中收集有关可视化方法的感知特性的证据,并描述如何探索该证据以发现原理和见解,以指导感知性接近最佳的可视化设计。我们认为,当前用于评估可视化效果的每种方法在告诉我们有关最佳调整和视觉设计方面都受到限制。我们继续争论说,我们的新方法更适合于优化可视化中通常创建的复杂视觉显示的种类。我们的方法使用在环实验来选择性地搜索可视化方法的参数空间,从而生成具有额定可视化解决方案的大型数据库。然后使用数据挖掘从数据库中提取结果,范围从针对特定数据集的高度特定的示例性可视化到可视化设计的更广泛适用的指南。我们使用对立体和运动中观察到的分层表面的最佳纹理的最新研究来说明我们的方法。我们证明了遗传算法是通过可视化参数空间指导在环搜索的一种有价值的方法。我们还演示了几种有用的数据挖掘方法,包括聚类,主成分分析,神经网络以及参数功能的统计比较。

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