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Detecting Community Structure by Using a Constrained Label Propagation Algorithm

机译:使用约束标签传播算法检测社区结构

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摘要

Community structure is considered one of the most interesting features in complex networks. Many real-world complex systems exhibit community structure, where individuals with similar properties form a community. The identification of communities in a network is important for understanding the structure of said network, in a specific perspective. Thus, community detection in complex networks gained immense interest over the last decade. A lot of community detection methods were proposed, and one of them is the label propagation algorithm (LPA). The simplicity and time efficiency of the LPA make it a popular community detection method. However, the LPA suffers from instability detection due to randomness that is induced in the algorithm. The focus of this paper is to improve the stability and accuracy of the LPA, while retaining its simplicity. Our proposed algorithm will first detect the main communities in a network by using the number of mutual neighbouring nodes. Subsequently, nodes are added into communities by using a constrained LPA. Those constraints are then gradually relaxed until all nodes are assigned into groups. In order to refine the quality of the detected communities, nodes in communities can be switched to another community or removed from their current communities at various stages of the algorithm. We evaluated our algorithm on three types of benchmark networks, namely the Lancichinetti-Fortunato-Radicchi (LFR), Relaxed Caveman (RC) and Girvan-Newman (GN) benchmarks. We also apply the present algorithm to some real-world networks of various sizes. The current results show some promising potential, of the proposed algorithm, in terms of detecting communities accurately. Furthermore, our constrained LPA has a robustness and stability that are significantly better than the simple LPA as it is able to yield deterministic results.
机译:社区结构被认为是复杂网络中最有趣的功能之一。许多现实世界中的复杂系统都具有社区结构,具有相似属性的个人组成社区。从特定的角度来看,网络中社区的标识对于理解该网络的结构很重要。因此,在过去的十年中,复杂网络中的社区检测引起了极大的兴趣。提出了许多社区检测方法,其中之一是标签传播算法(LPA)。 LPA的简单性和时间效率使其成为一种流行的社区检测方法。然而,由于算法中引起的随机性,LPA遭受不稳定检测。本文的重点是提高LPA的稳定性和准确性,同时保持其简单性。我们提出的算法将首先通过使用相互邻近节点的数量来检测网络中的主要社区。随后,通过使用受约束的LPA将节点添加到社区中。然后逐渐放宽这些约束,直到将所有节点分配到组中。为了改善检测到的社区的质量,可以在算法的各个阶段将社区中的节点切换到另一个社区或从其当前社区中删除。我们在三种基准网络上评估了我们的算法,即Lancichinetti-Fortunato-Radicchi(LFR),Relaxed Caveman(RC)和Girvan-Newman(GN)基准。我们还将本算法应用于各种大小的现实网络中。当前结果表明,在准确检测社区方面,该算法具有一定的发展潜力。此外,我们的受限LPA具有强大的鲁棒性和稳定性,因为它能够产生确定性的结果,因此明显优于简单的LPA。

著录项

  • 期刊名称 other
  • 作者

    Jia Hou Chin; Kuru Ratnavelu;

  • 作者单位
  • 年(卷),期 -1(11),5
  • 年度 -1
  • 页码 e0155320
  • 总页数 21
  • 原文格式 PDF
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