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Spectral based hypothesis testing for community detection in complex networks

机译:复杂网络社区检测的基于光谱的假设检测

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Network analysis is one of the most important branches in modern science, it has brought great advances which help us better understanding complex systems. Recently, detecting community structure within networks has played a more and more critical role in network analysis, due to the fact that it has many crucial applications in a wide range of disciplines, such as sociology, biology, computer science, and other disciplines which can be represented as graphs, hence the problem of detecting communities in networks has attracted a lot of attention from researchers in different areas. However, most of existing algorithms and approaches are built on an assumption that the number of communities in a network is prior known, whereas in many cases, we do not know too much information about this vital quantity. In this work, by fitting networks with stochastic block model, we put forward a novel hypothesis testing framework which can automatically determine the number of communities in various networks. By combining our hypothesis testing method with a motif based clustering approach, we design a recursive bipartitioning algorithm which can fast detect community structure in simulated networks, as well as various real networks. (C) 2019 Elsevier Inc. All rights reserved.
机译:网络分析是现代科学中最重要的分支之一,它带来了巨大的进步,帮助我们更好地了解复杂的系统。最近,由于它在广泛的学科中具有许多重要应用,例如社会学,生物学,计算机科学以及可以的其他学科,因此在网络分析中检测网络内的社区结构在网络分析中发挥了越来越重要的作用作为图形表示,因此检测网络中社区的问题引起了不同领域的研究人员的注意。然而,大多数现有算法和方法都是基于假设网络中的社区数量先发表所知的,而在许多情况下,我们不知道关于这种重要数量的太多信息。在这项工作中,通过用随机块模型拟合网络,我们提出了一种新颖的假设测试框架,可以自动确定各种网络中的社区数量。通过将我们的假设检测方法与基于主题的聚类方法相结合,我们设计了一种递归双产出算法,可以在模拟网络中快速检测社区结构,以及各种真实网络。 (c)2019 Elsevier Inc.保留所有权利。

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