塑造它:基于经验的形状调色板设计方法》。

Chin Tseng, Arran Zeyu Wang, Ghulam Jilani Quadri, Danielle Albers Szafir
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引用次数: 0

摘要

形状通常用于区分多类别散点图中的类别。然而,现有的选择有效形状调色板的指南主要依靠直觉,并没有考虑随着类别数量的增加,这些需求会如何变化。与颜色不同,形状不能用数字空间来表示,因此很难提出有效使用形状的通用指南或设计启发式方法。本文介绍了一系列四项实验,评估了 39 种形状在三项任务中的效率:相对平均值判断任务、专家偏好和相关性估计。我们的结果表明,对形状进行推理的传统方法,如填充与非填充,不足以指导有效的调色板设计。此外,即使是专家调色板,在使用形状和相应的有效性方面也存在很大差异。为了支持有效的形状调色板设计,我们根据实验中形状之间的配对关系以及特定设计所需的形状数量开发了一个模型。我们将这一模型嵌入到调色板设计工具中,使设计者能够自主选择形状,同时将我们研究中捕捉到的感知性能的经验要素纳入其中。我们的模型加深了人们对可视化环境中形状感知的理解,并提供了有助于改进分类数据编码的实用设计指南。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shape It Up: An Empirically Grounded Approach for Designing Shape Palettes.

Shape is commonly used to distinguish between categories in multi-class scatterplots. However, existing guidelines for choosing effective shape palettes rely largely on intuition and do not consider how these needs may change as the number of categories increases. Unlike color, shapes can not be represented by a numerical space, making it difficult to propose general guidelines or design heuristics for using shape effectively. This paper presents a series of four experiments evaluating the efficiency of 39 shapes across three tasks: relative mean judgment tasks, expert preference, and correlation estimation. Our results show that conventional means for reasoning about shapes, such as filled versus unfilled, are insufficient to inform effective palette design. Further, even expert palettes vary significantly in their use of shape and corresponding effectiveness. To support effective shape palette design, we developed a model based on pairwise relations between shapes in our experiments and the number of shapes required for a given design. We embed this model in a palette design tool to give designers agency over shape selection while incorporating empirical elements of perceptual performance captured in our study. Our model advances understanding of shape perception in visualization contexts and provides practical design guidelines that can help improve categorical data encodings.

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