基于图像阈值算法的百万尺度网络恒定社区识别

Anjan Chowdhury, S. Srinivasan, S. Bhowmick, Animesh Mukherjee, K. Ghosh
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引用次数: 1

摘要

恒定社区,即始终聚在一起的一组顶点,独立于所使用的社区检测算法,是减少社区检测结果固有随机性的必要条件。当前用于识别恒定社区的方法需要多次运行社区检测算法。这个过程非常耗时,而且不能扩展到大型网络。我们提出了一种新的方法来寻找恒定群落,将问题转化为边缘的二值分类。我们应用图像阈值分割中的Otsu方法,根据边缘是否总是在一个群体内进行分类。我们的算法不需要任何明确的社区检测,因此可以扩展到数百万个顶点的非常大的网络。我们在真实世界图上的结果表明,我们的方法明显更快,并且产生的恒定社区比最先进的基线方法具有更高的准确性(根据F1和NMI分数)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constant community identification in million scale networks using image thresholding algorithms
Constant communities, i.e., groups of vertices that are always clustered together, independent of the community detection algorithm used, are necessary for reducing the inherent stochasticity of community detection results. Current methods for identifying constant communities require multiple runs of community detection algorithm(s). This process is extremely time consuming and not scalable to large networks. We propose a novel approach for finding the constant communities, by transforming the problem to a binary classification of edges. We apply the Otsu method from image thresholding to classify edges based on whether they are always within a community or not. Our algorithm does not require any explicit detection of communities and can thus scale to very large networks of the order of millions of vertices. Our results on real-world graphs show that our method is significantly faster and the constant communities produced have higher accuracy (as per F1 and NMI scores) than state-of-the-art baseline methods.
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