dGG, dRNG, DSC:基于度的基于形状的大型复杂图形可视化信誉度度量

Seok-Hee Hong, A. Meidiana, James Wood, J. P. Ataides, P. Eades, Kunsoo Park
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引用次数: 0

摘要

基于形状的度量通过比较G和从D计算的接近图S之间的相似性来衡量大图G的绘图D对图结构的忠实程度。尽管这些度量可以成功地评估大图的绘图,但它们仅限于相对稀疏的图,因为现有度量使用平面接近图GG (Gabriel图)和RNG(相对邻近图)。本文使用高阶接近图k-GG和k-RNG提出了新的基于形状的信誉度指标,用于评估大型和复杂图的绘图。大量的实验表明,我们使用基于度的接近图dGG和dRNG的新的基于形状的度量可以更准确地测量大型和复杂图形的绘图的忠实度,平均而言,比使用GG和RNG的现有基于形状的度量提高了100%以上。此外,我们提出了一种新的形状变化忠实度度量DSC,通过测量动态图形中几何形状变化与动态图形中地面真值变化的比例来评估动态图形的图形。变形实验验证了DSC可以准确测量动态图形绘制中形状变化的忠实度。此外,我们使用我们新的基于形状的指标dGG, dRNG和DSC对十种流行的图形布局进行了广泛的比较实验,以推荐哪种布局可以为大型和复杂的图形提供更好的形状忠实图形绘制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
dGG, dRNG, DSC: New Degree-based Shape-based Faithfulness Metrics for Large and Complex Graph Visualization
Shape-based metrics measure how faithfully a drawing D of a large graph G shows the structure of graph, by comparing the similarity between G and a proximity graph S computed from D. Although these metrics can successfully evaluate drawings of large graphs, they are limited to relatively sparse graphs, since existing metrics use planar proximity graphs GG (Gabriel Graph) and RNG (Relative Neighbourhood Graph). This paper presents new shape-based faithfulness metrics for evaluating drawings of large and complex graphs, using high-order prox-imity graphs k-GG and k-RNG. Extensive experiments demonstrate that our new shape-based metrics using degree-based proximity graphs dGG and dRNG can more accurately measure the faithful-ness of drawings of large and complex graphs, with a significant improvement of over 100% better, on average, than the existing shape-based metrics using GG and RNG. Moreover, we present a new shape change faithfulness metric DSC for evaluating drawings of dynamic graphs, by measuring how proportional the geometric shape change in the drawings of dynamic graphs is to the ground truth change in dynamic graphs. Validation using deformation experiments support that DSC can accurately measure shape change faithfulness in dynamic graph drawing. Furthermore, we present extensive comparison experiments of ten popular graph layouts using our new shape-based metrics dGG, dRNG and DSC, to recommend which layouts can give a better shape-faithful graph drawing for large and complex graphs.
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