Community detection: Comparison of state of the art algorithms

J. Mothe, K. Mkhitaryan, M. Haroutunian
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引用次数: 16

Abstract

Real world complex networks may contain hidden structures called communities or groups. They are composed of nodes being tightly connected within those groups and weakly connected between them. Detecting communities has numerous applications in different sciences such as biology, social network analysis, economics and computer science. Since there is no universally accepted definition of community, it is a complicated task to distinguish community detection algorithms as each of them use a different approach, resulting in different outcomes. Thus large number of articles are devoted to investigating community detection algorithms, implementation on both real world and artificial data sets and development of evaluation measures. In this article several state of the art algorithms and evaluation measures are studied which are used in clustering and community detection literature. The main focus of this article is to survey recent work and evaluate community detection algorithms using stochastic block model.
社区检测:比较最先进的算法
现实世界的复杂网络可能包含被称为社区或群体的隐藏结构。它们由组内紧密连接的节点和组间弱连接的节点组成。探测社区在生物学、社会网络分析、经济学和计算机科学等不同的科学领域有许多应用。由于社区的定义没有被普遍接受,因此区分社区检测算法是一项复杂的任务,因为每种算法使用不同的方法,导致不同的结果。因此,大量的文章致力于研究社区检测算法,在现实世界和人工数据集上的实现以及评估措施的发展。本文对聚类和社区检测文献中常用的几种算法和评价方法进行了研究。本文的主要重点是调查最近的工作和评估社区检测算法使用随机块模型。
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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