Statistical methods for reconstructing networks from repeated measurements typically assume that all measurements are generated from the same underlying network structure. This need not be the case, however. People's social networks might be different on weekdays and weekends, for instance. Brain networks may differ between healthy patients and those with dementia or other conditions. Here we describe a Bayesian analysis framework for such data that allows for the fact that network measurements may be reflective of multiple possible structures. We define a finite mixture model of the measurement process and derive a fast Gibbs sampling procedure that samples exactly from the full posterior distribution of model parameters. The end result is a clustering of the measured networks into groups with similar structure. We demonstrate the method on both real and synthetic network populations.
翻译:从反复测量中重建网络的统计方法通常假定,所有测量都是从同一基本网络结构中产生的,但情况并非如此。例如,人们的社交网络在工作日或周末可能不同。健康病人和痴呆病人或其他疾病患者之间的大脑网络可能不同。这里我们描述一种贝叶斯分析框架,用于这些数据,从而可以使网络测量可能反映多种可能的结构。我们定义了测量过程的有限混合模型,并得出了一个快速的Gibbs取样程序,即从模型参数的完整后方分布中进行抽样。最终结果是将测量的网络分组成结构类似的群体。我们展示了真实和合成网络人口的方法。