4.7 Article

Visual Cascade Analytics of Large-Scale Spatiotemporal Data

期刊

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TVCG.2021.3071387

关键词

Spatial cascade; pattern mining; spatiotemporal data

资金

  1. National Natural Science Foundation of China [62072400, 61822701]
  2. Zhejiang Provincial Natural Science Foundation [LR18F020001]
  3. 100 Talents Program of Zhejiang University

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The article introduces a visual analytics system called VisCas, which aims to mine and interpret cascading patterns in urban contexts. The system combines an inference model with interactive visualizations to empower analysts to infer and interpret latent cascading patterns. It addresses challenges in generalized pattern inference, implicit influence visualization, and multifaceted cascade analysis. The effectiveness of VisCas is demonstrated through case studies on real-world traffic congestion and air pollution datasets.
Many spatiotemporal events can be viewed as contagions. These events implicitly propagate across space and time by following cascading patterns, expanding their influence, and generating event cascades that involve multiple locations. Analyzing such cascading processes presents valuable implications in various urban applications, such as traffic planning and pollution diagnostics. Motivated by the limited capability of the existing approaches in mining and interpreting cascading patterns, we propose a visual analytics system called VisCas. VisCas combines an inference model with interactive visualizations and empowers analysts to infer and interpret the latent cascading patterns in the spatiotemporal context. To develop VisCas, we address three major challenges 1) generalized pattern inference; 2) implicit influence visualization; and 3) multifaceted cascade analysis. For the first challenge, we adapt the state-of-the-art cascading network inference technique to general urban scenarios, where cascading patterns can be reliably inferred from large-scale spatiotemporal data. For the second and third challenges, we assemble a set of effective visualizations to support location navigation, influence inspection, and cascading exploration, and facilitate the in-depth cascade analysis. We design a novel influence view based on a three-fold optimization strategy for analyzing the implicit influences of the inferred patterns. We demonstrate the capability and effectiveness of VisCas with two case studies conducted on real-world traffic congestion and air pollution datasets with domain experts.

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