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Using higher-order Markov models to reveal flow-based communities in networks

机译:使用高阶马尔可夫模型揭示网络中基于流的社区

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摘要

Complex systems made of interacting elements are commonly abstracted as networks, in which nodes are associated with dynamic state variables, whose evolution is driven by interactions mediated by the edges. Markov processes have been the prevailing paradigm to model such a network-based dynamics, for instance in the form of random walks or other types of diffusions. Despite the success of this modelling perspective for numerous applications, it represents an over-simplification of several real-world systems. Importantly, simple Markov models lack memory in their dynamics, an assumption often not realistic in practice. Here, we explore possibilities to enrich the system description by means of second-order Markov models, exploiting empirical pathway information. We focus on the problem of community detection and show that standard network algorithms can be generalized in order to extract novel temporal information about the system under investigation. We also apply our methodology to temporal networks, where we can uncover communities shaped by the temporal correlations in the system. Finally, we discuss relations of the framework of second order Markov processes and the recently proposed formalism of using non-backtracking matrices for community detection.
机译:由交互元素组成的复杂系统通常被抽象为网络,其中节点与动态状态变量关联,动态状态变量的发展由边缘介导的交互作用驱动。马尔可夫过程一直是模拟这样的基于网络的动力学的流行范例,例如以随机游走或其他类型的扩散形式。尽管此建模透视图已成功应用于众多应用程序,但它代表了多个实际系统的过度简化。重要的是,简单的马尔可夫模型缺乏动态记忆力,这一假设在实践中通常是不现实的。在这里,我们探索利用二阶马尔可夫模型,利用经验途径信息来丰富系统描述的可能性。我们关注社区检测的问题,并表明可以推广标准网络算法,以提取有关所调查系统的新颖时间信息。我们还将我们的方法应用于时间网络,在这里我们可以发现系统中时间相关性所塑造的社区。最后,我们讨论了二阶马尔可夫过程框架的关系以及最近提出的使用非回溯矩阵进行社区检测的形式主义。

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