基于亲和传播的复杂网络群体结构检测

Jian Liu, Nanli Wang
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引用次数: 1

摘要

寻找复杂网络的群落结构的问题已经用许多不同的方法来解决。本文利用一种称为亲和传播的聚类方法,结合图上存在的一些度量,如最短路径、扩散距离和不相似度指数,来解决网络划分问题。该方法将所有节点视为潜在的范例,并在节点之间传递真正有价值的消息,直到逐渐出现一组高质量的范例和相应的社区。仿真实验表明,该算法不仅能够识别网络的社团结构,而且在模型选择过程中能够自动确定社团数量。此外,它们还成功地应用于几个现实世界的网络,包括空手道俱乐部网络和海豚网络。
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Detecting community structure of complex networks by affinity propagation
The question of finding the community structure of a complex network has been addressed in many different ways. Here we utilize a clustering method called affinity propagation, associating with some existent measures on graphs, such as the shortest path, the diffusion distance and the dissimilarity index, to solve the network partitioning problem. This method considers all nodes as potential exemplars, and transmits real valued messages between nodes until a high quality set of exemplars and corresponding communities gradually emerges. It is demonstrated by simulation experiments that the algorithms can not only identify the community structure of a network, but also determine the number of communities automatically during the model selection. Moreover, they are successfully applied to several real-world networks, including the karate club network and the dolphins network.
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