论文标题

保留图形采样中的少数族裔结构

Preserving Minority Structures in Graph Sampling

论文作者

Zhao, Ying, Jiang, Haojin, Chen, Qi'an, Qin, Yaqi, Xie, Huixuan, Liu, Yitao Wu Shixia, Zhou, Zhiguang, Xia, Jiazhi, Zhou, Fangfang

论文摘要

采样是一种广泛使用的图形技术,可加速图表计算并简化图形可视化。通过全面分析图形采样的文献,我们假设现有算法无法有效地保留图中罕见且较小的少数族裔结构,但在图形分析中非常重要。在这项工作中,我们最初进行了一项试点用户研究,以调查最吸引人类观众的众多少数群体结构。然后,我们进行了一项实验研究,以评估有关少数族裔结构保存的现有图形采样算法的性能。结果证实了我们的假设,并提出了设计一种新的图形采样方法的关键点,名为MINO-CONTRIC图采样(MCGS)。在这种方法中,提出了一种基于三角形的算法和基于切点的算法,以有效地识别少数群体结构。一组重要的评估标准旨在指导重要的少数群体结构。将三个优化目标引入了一种贪婪的策略中,以平衡少数族裔和多数结构之间的保存并抑制新的少数族裔结构的产生。进行了一系列实验和案例研究,以评估所提出的MCG的有效性。

Sampling is a widely used graph reduction technique to accelerate graph computations and simplify graph visualizations. By comprehensively analyzing the literature on graph sampling, we assume that existing algorithms cannot effectively preserve minority structures that are rare and small in a graph but are very important in graph analysis. In this work, we initially conduct a pilot user study to investigate representative minority structures that are most appealing to human viewers. We then perform an experimental study to evaluate the performance of existing graph sampling algorithms regarding minority structure preservation. Results confirm our assumption and suggest key points for designing a new graph sampling approach named mino-centric graph sampling (MCGS). In this approach, a triangle-based algorithm and a cut-point-based algorithm are proposed to efficiently identify minority structures. A set of importance assessment criteria are designed to guide the preservation of important minority structures. Three optimization objectives are introduced into a greedy strategy to balance the preservation between minority and majority structures and suppress the generation of new minority structures. A series of experiments and case studies are conducted to evaluate the effectiveness of the proposed MCGS.

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