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Modelling sequences and temporal networks with dynamic community structures

机译:使用动态社区结构建模序列和时态网络

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In evolving complex systems such as air traffic and social organisations, collective effects emerge from their many components’ dynamic interactions. While the dynamic interactions can be represented by temporal networks with nodes and links that change over time, they remain highly complex. It is therefore often necessary to use methods that extract the temporal networks’ large-scale dynamic community structure. However, such methods are subject to overfitting or suffer from effects of arbitrary, a priori-imposed timescales, which should instead be extracted from data. Here we simultaneously address both problems and develop a principled data-driven method that determines relevant timescales and identifies patterns of dynamics that take place on networks, as well as shape the networks themselves. We base our method on an arbitrary-order Markov chain model with community structure, and develop a nonparametric Bayesian inference framework that identifies the simplest such model that can explain temporal interaction data.
机译:在不断发展的复杂系统(如空中交通和社会组织)中,集体效应源于其许多组成部分的动态互动。虽然动态交互可以通过具有随时间变化的节点和链接的时态网络来表示,但它们仍然非常复杂。因此,通常有必要使用提取时态网络的大规模动态社区结构的方法。但是,此类方法可能会过拟合或遭受任意先验施加的时标的影响,而应从数据中提取这些时标。在此,我们同时解决了这两个问题,并开发了一种有原则的数据驱动方法,该方法可以确定相关的时间范围并确定网络上发生的动态模式,以及塑造网络本身。我们基于具有社区结构的任意阶马尔可夫链模型建立我们的方法,并开发了一个非参数贝叶斯推理框架,该框架确定了可以解释时间交互数据的最简单模型。

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