多边缘网络的视觉编码

Athanasios Vogogias, D. Archambault, Benjamin Bach, J. Kennedy
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引用次数: 6

摘要

本文报道了邻接矩阵中多边类型网络视觉编码的形式化用户研究。我们的任务和条件是受到计算生物学实际问题的启发。我们专注于邻接矩阵的编码,从潜在巨大的视觉编码设计空间中选择了四种设计。然后,我们在一项有159名参与者的众包研究中确定了三个视觉变量来评估:方向、位置和颜色。最佳编码被整合到一个可视化分析工具中,用于推断动态贝叶斯网络,并由计算生物学家评估额外的证据。我们发现编码根据任务的不同而不同,然而,颜色被发现在所有任务中都有帮助,除了试图找到具有最多边缘类型的边缘。在我们所有的任务中,方向通常比位置要好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Encodings for Networks with Multiple Edge Types
This paper reports on a formal user study on visual encodings of networks with multiple edge types in adjacency matrices. Our tasks and conditions were inspired by real problems in computational biology. We focus on encodings in adjacency matrices, selecting four designs from a potentially huge design space of visual encodings. We then settle on three visual variables to evaluate in a crowdsourcing study with 159 participants: orientation, position and colour. The best encodings were integrated into a visual analytics tool for inferring dynamic Bayesian networks and evaluated by computational biologists for additional evidence. We found that the encodings performed differently depending on the task, however, colour was found to help in all tasks except when trying to find the edge with the largest number of edge types. Orientation generally outperformed position in all of our tasks.
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