E-function for Fuzzy Clustering in Complex Networks

IF 0.4 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS IPSI BgD Transactions on Internet Research Pub Date : 2022-01-01 DOI:10.58245/ipsi.tir.22jr.04
Filip Vidojević, Dušan Džamić, M. Marić
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Abstract

In many real-life situations, data consists of entities and the connections between them, which are naturally described by a complex network (graph). The structure of the network is often such that it is possible to group nodes based on the existence of connections between them, where such groups are called clusters (communities, modules). If the nodes are allowed to partially belong to clusters, they are called fuzzy (overlapping) clusters. There is a huge number of algorithms in the literature that perform fuzzy clustering, that is finds overlapping clusters, so a mechanism is needed to evaluate such clustering. The function that assesses the quality of a performed clustering is called the cluster quality function. One of the latest proposed quality functions is the E-function. The E-function is based on a comparison of the internal structure of a cluster, i.e., the connection between nodes within a cluster and the connection of its nodes with the nodes of other clusters. Due to its exponential nature, the E-function is sensitive to small changes in the membership degrees to which the nodes belong to clusters. As such, it has shown good results in evaluating clustering on known data sets. In this paper, the experimental results that the modified E-function achieves in the case of overlapping clusters are presented. Also, some possibilities for fuzzy clustering by optimizing the E-function are displayed.
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复杂网络中模糊聚类的e函数
在许多现实生活中,数据由实体和它们之间的连接组成,这些实体自然由复杂的网络(图)来描述。网络的结构通常是这样的,可以根据节点之间存在的连接对节点进行分组,这种分组称为集群(社区、模块)。如果允许节点部分属于集群,则称为模糊(重叠)集群。文献中有大量的算法进行模糊聚类,即发现重叠聚类,因此需要一种机制来评估这种聚类。评估已执行的聚类质量的函数称为聚类质量函数。最新提出的质量函数之一是e函数。e函数是基于对集群内部结构的比较,即集群内部节点之间的连接以及该节点与其他集群节点之间的连接。由于其指数性质,e -函数对节点所属簇的隶属度的微小变化很敏感。因此,它在评估已知数据集的聚类方面显示出良好的结果。本文给出了改进的e函数在重叠聚类情况下的实验结果。同时,给出了通过优化e函数实现模糊聚类的几种可能性。
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来源期刊
IPSI BgD Transactions on Internet Research
IPSI BgD Transactions on Internet Research COMPUTER SCIENCE, INFORMATION SYSTEMS-
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