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A novel dynamics combination model reveals the hidden information of community structure

机译:一种新颖的动力学组合模型揭示了社区结构的隐藏信息

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The analysis of the dynamic details of community structure is an important question for scientists from many fields. In this paper, we propose a novel Markov Potts framework to uncover the optimal community structures and their stabilities across multiple timescales. Specifically, we model the Potts dynamics to detect community structure by a Markov process, which has a clear mathematical explanation. Then the local uniform behavior of spin values revealed by our model is shown that can naturally reveal the stability of hierarchical community structure across multiple timescales. To prove the validity, phase transition of stochastic dynamic system is used to indicate that the stability of community structure we proposed is able to describe the significance of community structure based on eigengap theory. Finally, we test our framework on some example networks and find it doesnot have resolute limitation problem at all. Results have shown the model we proposed is able to uncover hierarchical structure in different scales effectively and efficiently.
机译:社区结构动态细节的分析是来自许多领域的科学家的重要问题。在本文中,我们提出了一个新颖的Markov Potts框架,以揭示最佳的社区结构及其在多个时间尺度上的稳定性。具体来说,我们对Potts动力学进行建模,以通过马尔可夫过程检测社区结构,该过程具有清晰的数学解释。然后显示了由我们的模型揭示的自旋值的局部均匀行为,可以自然揭示跨多个时间尺度的分层社区结构的稳定性。为了证明这种有效性,随机动态系统的相变被用来表明我们提出的社区结构的稳定性能够描述基于eigengap理论的社区结构的意义。最后,我们在一些示例网络上测试我们的框架,发现它根本没有绝对限制问题。结果表明,我们提出的模型能够有效,高效地揭示不同规模的层次结构。

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