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Ollivier-Ricci Curvature-Based Method to Community Detection in Complex Networks

机译:基于Ollivier-Ricci曲率的复杂网络社区检测方法

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摘要

Identification of community structures in complex network is of crucial importance for understanding the system’s function, organization, robustness and security. Here, we present a novel Ollivier-Ricci curvature (ORC) inspired approach to community identification in complex networks. We demonstrate that the intrinsic geometric underpinning of the ORC offers a natural approach to discover inherent community structures within a network based on interaction among entities. We develop an ORC-based community identification algorithm based on the idea of sequential removal of negatively curved edges symptomatic of high interactions (e.g., traffic, attraction). To illustrate and compare the performance with other community identification methods, we examine the ORC-based algorithm with stochastic block model artificial networks and real-world examples ranging from social to drug-drug interaction networks. The ORC-based algorithm is able to identify communities with either better or comparable performance accuracy and to discover finer hierarchical structures of the network. This opens new geometric avenues for analysis of complex networks dynamics.
机译:识别复杂网络中的社区结构对于理解系统的功能,组织,健壮性和安全性至关重要。在这里,我们提出了一种新颖的Ollivier-Ricci曲率(ORC)启发性的方法来识别复杂网络中的社区。我们证明,ORC的内在几何基础提供了一种自然的方法,可以基于实体之间的交互来发现网络内的内在社区结构。我们基于顺序删除具有高交互性(例如交通,吸引力)症状的负弯曲边缘的思想,开发了基于ORC的社区识别算法。为了说明和比较其他社区识别方法的性能,我们研究了基于ORC的算法,随机块模型人工网络以及从社交网络到毒品互动网络的实际示例。基于ORC的算法能够识别性能更好或相当的社区,并发现网络的更精细层次结构。这为分析复杂的网络动力学开辟了新的几何途径。

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