EuroVisShort2025
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Browsing EuroVisShort2025 by Subject "CCS Concepts: Human-centered computing → Graph drawings"
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Item NFGD: Neighborhood-Faithful Graph Drawing(The Eurographics Association, 2025) Fan, Yuming; Hong, Seok-Hee; Meidiana, Amyra; El-Assady, Mennatallah; Ottley, Alvitta; Tominski, ChristianNeighborhood faithfulness metrics measure how faithfully the ground truth neighbors of vertices in a graph G are represented as the geometric neighbors of vertices in a drawing D of G. In this paper, we present NFGD, a post-processing algorithm for optimizing the neighborhood faithfulness of graph drawings. Experiments demonstrate the effectiveness of NFGD for computing neighbor-faithful drawings, on average 320% improvement over the popular graph drawing algorithms: 425% over Stress Majorization (SM) and 215% over force-directed algorithm Fruchterman-Reingold (FR). In particular, for scale-free graphs, NFGD-SM achieves 776% improvement over SM and NFGD-FR obtains 597% improvement over FR.