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Tolerance Methods in Graph Clustering: Application to Community Detection in Social Networks

机译:图形聚类中的公差方法:在社交网络中的社区检测中的应用

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This article introduces a novel approach to graph clustering based on tolerance spaces. From a graph theory perspective, a community is considered as a group or cluster of nodes with interconnections between them. The proposed approach to community detection uses a tolerance relation which provides a mechanism for clustering objects (nodes or vertices of a graph) into groups termed as tolerance classes inspired by near set theory. The proposed tolerance-based community detection (TCD) algorithm uses the shortest path as the distance function for creating tolerance classes, where a tolerance class represents members of the same community. For parameter selection, an objective function based on two well-known quality functions, modularity and coverage, is used. To demonstrate the robustness of the proposed method, sensitivity analysis of the parameters is given. The effectiveness of the TCD algorithm has been demonstrated by testing it on four real-world data sets. Experimental results include the comparison of the TCD algorithm with four other methods. TCD was able to achieve the best results with two data sets. The contribution of this work is a new tolerance-based method for community detection in social networks.
机译:本文介绍了基于公差空间的图形聚类方法。从图形理论的角度来看,一个社区被认为是一个组或节点的群集,它们之间是互连。所提出的社区检测方法使用公差关系,该公差关系提供了一种用于将对象(图的节点或顶点)的机制转换为被近集理论激发的容差类的组。基于公差的社区检测(TCD)算法使用最短路径作为创建容差类的距离函数,其中公差类表示同一社区的成员。对于参数选择,使用基于两个众所周知的质量功能,模块化和覆盖的目标函数。为了证明所提出的方法的鲁棒性,给出了参数的灵敏度分析。通过在四个现实数据集上测试它,已经证明了TCD算法的有效性。实验结果包括与另外四种方法的TCD算法的比较。 TCD能够通过两个数据集实现最佳结果。这项工作的贡献是社交网络中的社区检测的基于宽容的基于宽容方法。

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