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Dynamic stochastic block models: parameter estimation and detection of changes in community structure

机译:动态随机块模型:参数估计和社区结构变化的检测

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摘要

The stochastic block model (SBM) is widely used for modelling network data by assigning individuals (nodes) to communities (blocks) with the probability of an edge existing between individuals depending upon community membership. In this paper, we introduce an autoregressive extension of the SBM, based on continuous-time Markovian edge dynamics. The model is appropriate for networks evolving over time and allows for edges to turn on and off. Moreover, we allow for the movement of individuals between communities. An effective reversible-jump Markov chain Monte Carlo algorithm is introduced for sampling jointly from the posterior distribution of the community parameters and the number and location of changes in community membership. The algorithm is successfully applied to a network of mice.
机译:随机块模型(SBM)通过将个体(节点)分配给社区(块)而广泛用于网络数据建模,取决于社区成员身份,个体之间存在边缘的可能性。在本文中,我们基于连续时间马尔可夫边沿动力学介绍了SBM的自回归扩展。该模型适用于随时间演变的网络,并允许打开和关闭边缘。此外,我们允许个人在社区之间流动。提出了一种有效的可逆跳跃马尔可夫链蒙特卡罗算法,用于从社区参数的后验分布以及社区成员身份变化的数量和位置共同进行采样。该算法已成功应用于小鼠网络。

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