Finding redundant and complementary communities in multidimensional networks

M. Berlingerio, M. Coscia, F. Giannotti
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引用次数: 34

Abstract

Community Discovery in networks is the problem of detecting, for each node, its membership to one of more groups of nodes, the communities, that are densely connected, or highly interactive. We define the community discovery problem in multidimensional networks, where more than one connection may reside between any two nodes. We also introduce two measures able to characterize the communities found. Our experiments on real world multidimensional networks support the methodology proposed in this paper, and open the way for a new class of algorithms, aimed at capturing the multifaceted complexity of connections among nodes in a network.
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在多维网络中寻找冗余和互补的社区
网络中的社区发现问题是为每个节点检测其在多个节点组(密集连接或高度交互的社区)中的成员资格。我们定义了多维网络中的社区发现问题,其中任意两个节点之间可能存在多个连接。我们还介绍了能够表征所发现的群落的两种措施。我们在现实世界多维网络上的实验支持本文提出的方法,并为一类新的算法开辟了道路,旨在捕获网络中节点之间连接的多方面复杂性。
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