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Scalable Hypergraph Visualization

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arxiv 2308.05043 v1 pith:UHWSRVHM submitted 2023-08-09 cs.GR

Scalable Hypergraph Visualization

classification cs.GR
keywords hypergraphlayoutapproachsimplificationapplicationsatomicoperationspolygon-based
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Hypergraph visualization has many applications in network data analysis. Recently, a polygon-based representation for hypergraphs has been proposed with demonstrated benefits. However, the polygon-based layout often suffers from excessive self-intersections when the input dataset is relatively large. In this paper, we propose a framework in which the hypergraph is iteratively simplified through a set of atomic operations. Then, the layout of the simplest hypergraph is optimized and used as the foundation for a reverse process that brings the simplest hypergraph back to the original one, but with an improved layout. At the core of our approach is the set of atomic simplification operations and an operation priority measure to guide the simplification process. In addition, we introduce necessary definitions and conditions for hypergraph planarity within the polygon representation. We extend our approach to handle simultaneous simplification and layout optimization for both the hypergraph and its dual. We demonstrate the utility of our approach with datasets from a number of real-world applications.

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