Exploratory Community Detection: Finding Communities in Unknown Networks

Bo Yan, Fanku Meng, J. Liu, Yiping Liu, H. Su
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Abstract

Community detection amounts to one of the key methods in handling social networks with the aim of capturing global patterns of a network. This paper focuses on a situation where the network is unknown, which would render existing algorithms unusable. We propose exploratory community detection which aims to detect communities by utilizing samples taken from diffusion process over the network. For this problem, we propose a neural-based algorithm that develops a matrix representation of the network structure. This matrix is then the input of a spectral clustering algorithm to reveal communities in the network. We perform experiments on real-world and synthetic data sets with simulated diffusion samples.The results reveal that our algorithm has strong empirical performance.
探索性社区检测:在未知网络中发现社区
社区检测是处理社交网络的关键方法之一,其目的是捕获网络的全局模式。本文主要研究网络未知的情况,这种情况会使现有算法无法使用。我们提出了探索性社区检测,旨在利用从网络扩散过程中获取的样本来检测社区。对于这个问题,我们提出了一种基于神经的算法,该算法开发了网络结构的矩阵表示。然后,该矩阵是谱聚类算法的输入,以揭示网络中的社区。我们用模拟扩散样本在真实世界和合成数据集上进行实验。结果表明,该算法具有较强的经验性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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