桥接(联网)
计算机科学
可视化
数据可视化
网络科学
感知
以人为中心的计算
科学可视化
信息可视化
人机交互
视觉科学
数据科学
人工智能
复杂网络
情报学
万维网
神经科学
心理学
计算机网络
图书馆学
作者
S. Sandra Bae,Kyle R. Cave,Carsten Görg,Paul Rosen,Danielle Albers Szafir,Cindy Xiong
标识
DOI:10.1109/tvcg.2025.3541571
摘要
Network visualizations are understudied in graphical perception. As a result, most network visualization designs still largely rely on designer intuition and algorithm optimizations rather than being guided by knowledge of human perception. The lack of perceptual understanding of network visualizations also limits the generalizability of past empirical evaluations, given their focus on performance over causal interpretation. To bridge this gap between perception and network visualization, we introduce a framework highlighting five key perceptual mechanisms used in node-link diagrams and adjacency matrices: attention, visual search, perceptual organization, ensemble coding, and object recognition. Our framework describes the role these perceptual mechanisms play in common network analytical tasks. We use the framework to revisit four past empirical investigations and outline future design experiments that can help produce more perceptually effective network visualizations. We anticipate this connection will afford translational understanding to guide more effective network visualization design and offer hypotheses for perception-aware network visualizations.
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