Browser-based Hyperbolic Visualization of Graphs

2022 IEEE 15th Pacific Visualization Symposium (PacificVis)(2022)

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摘要
Hyperbolic geometry offers a natural ‘focus+context’ for data visualization and has been shown to underlie real-world complex networks. However, current hyperbolic network visualization approaches are limited to special types of networks and do not scale to large datasets. With this in mind, we designed, implemented, and analyzed three methods for hyperbolic visualization of networks in the browser based on inverse projections, generalized force-directed algorithms, and hyperbolic multi-dimensional scaling (H-MDS). A comparison with Euclidean MDS shows that H - MDS produces embeddings with lower distortion for several types of networks. All three methods can handle node-link representations and are available in fully functional web-based systems.
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关键词
Graph drawing,Hyperbolic geometry,Non-Euclidean embedding,Stochastic gradient descent
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