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Stepping community detection algorithm based on label propagation and similarity

机译:基于标签传播和相似性的河流社区检测算法

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Community or module structure is one of the most common features in complex networks. The label propagation algorithm (LPA) is a near linear time algorithm that is able to detect community structure effectively. Nevertheless, when labeling a node, the LPA adopts the label belonging to the majority of its neighbors, which means that it treats all neighbors equally in spite of their different effects on the node. Another disadvantage of LPA is that the results it generates are not unique. In this paper, we propose a modified LPA called Stepping LPA-S, in which labels are propagated by similarity. Furthermore, our algorithm divides networks using a stepping framework, and uses an evaluation function proposed in this paper to select the final unique partition. We tested this algorithm on several artificial and real-world networks. The results show that Stepping LPA-S can, obtain accurate and meaningful community structure without priori information. (C) 2017 Elsevier B.V. All rights reserved.
机译:社区或模块结构是复杂网络中最常见的功能之一。标签传播算法(LPA)是能够有效检测社区结构的近线时间算法。然而,在标记节点时,LPA采用属于其大多数邻居的标签,这意味着它尽管对节点的影响不同,但它同样对待所有邻居。 LPA的另一个缺点是它产生的结果不是唯一的。在本文中,我们提出了一种被称为踩踏LPA-S的改性LPA,其中标记由相似性传播。此外,我们的算法使用踩踏框架划分网络,并使用本文提出的评估功能来选择最终的唯一分区。我们在几个人工和真实网络上测试了该算法。结果表明,逐步的LPA-S可以获得准确和有意义的社区结构,而无需先验信息。 (c)2017年Elsevier B.V.保留所有权利。

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