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Drawing clustered graphs by preserving neighborhoods

机译:通过保留邻域来绘制聚类图

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Weighted graphs with presumed cluster structure are challenging to many existing graph drawing methods, even though ways of visualizing such graphs would be much needed in complex networks research. In the field of dimension reduction, t-distibuted stochastic neighbor embedding (t-SNE) has proven successful in visualizing clustered data. Here, we extend t-SNE into graph-SNE (GSNE). Our method builds on the sensitivity of random walks to cluster structure in graphs. We use random walks to define a neighborhood probability that realizes the properties behind the success of t-SNE in visualizing clustered data sets: Gaussian-like behavior of neighborhood probabilities, adaptation to local edge density, and an adjustable granularity scale. We show that GSNE correctly visualizes artificial graphs where ground-truth cluster structure is known. Using real-world networks, we show that GSNE is able to produce meaningful visualizations that display plausible cluster structure which is not captured by state-of-the-art visualization methods. (C) 2017 Elsevier B.V. All rights reserved.
机译:尽管在复杂的网络研究中非常需要可视化这些图的方法,但是具有假定的簇结构的加权图对许多现有的图绘制方法都具有挑战性。在降维领域,已证明t分布随机邻居嵌入(t-SNE)在可视化聚类数据方面是成功的。在这里,我们将t-SNE扩展为图SNE(GSNE)。我们的方法建立在随机游动对图形中簇结构的敏感性上。我们使用随机游走来定义邻域概率,该概率实现了t-SNE成功实现可视化聚类数据集后的属性:邻域概率的高斯行为,对局部边缘密度的适应性以及可调整的粒度尺度。我们表明,GSNE可以正确地可视化已知真实地面簇结构的人工图形。使用现实世界的网络,我们表明GSNE能够产生有意义的可视化效果,显示出可能的簇结构,而最新的可视化方法无法捕获这种结构。 (C)2017 Elsevier B.V.保留所有权利。

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