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SELP: Semi-supervised evidential label propagation algorithm for graph data clustering

机译:SELP:用于图数据聚类的半监督证据标签传播算法

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摘要

With the increasing size of social networks in the real world, community detection approaches should be fast and accurate. The label propagation algorithm is known to be one of the near-linear solutions which is easy to implement. However, it is not stable and it cannot take advantage of the prior information about the network structure which is very common in real applications. In this paper, a new Semi-supervised clustering approach based on an Evidential Label Propagation strategy (SELP) is proposed to incorporate limited domain knowledge into the community detection model. The main advantage of SELP is that it can effectively use limited supervised information to guide the detection process. The prior information about the labels of nodes in the graph, including the labeled nodes and the unlabeled ones, is initially expressed in the form of mass functions. Then the evidential label propagation rule is designed to propagate the labels from the labeled nodes to the unlabeled ones. The communities of each node can be identified after the propagation process becomes stable. The outliers can be identified to be in a special class. Experimental results demonstrate the effectiveness of SELP on both graphs and classical data sets. (C) 2017 Elsevier Inc. All rights reserved.
机译:随着现实世界中社交网络规模的扩大,社区检测方法应该快速而准确。标签传播算法是易于实现的近线性解决方案之一。但是,它不是稳定的,并且不能利用在实际应用中非常常见的有关网络结构的现有信息。在本文中,提出了一种新的基于证据标签传播策略(SELP)的半监督聚类方法,以将有限的领域知识纳入社区检测模型。 SELP的主要优点是它可以有效地使用有限的监督信息来指导检测过程。关于图中节点的标签的先验信息(包括已标记的节点和未标记的节点)首先以质量函数的形式表示。然后设计证据标签传播规则,以将标签从已标记节点传播到未标记节点。传播过程变得稳定之后,可以标识每个节点的社区。可以将异常值识别为特殊类。实验结果证明了SELP在图形和经典数据集上的有效性。 (C)2017 Elsevier Inc.保留所有权利。

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