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High-dimensional Gaussian graphical models on network-linked data

机译:网络链接数据的高维高斯图形模型

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Graphical models are commonly used to represent conditional dependence relationships between variables. There are multiple methods available for exploring them from high-dimensional data, but almost all of them rely on the assumption that the observations are independent and identically distributed. At the same time, observations connected by a network are becoming increasingly common, and tend to violate these assumptions. Here we develop a Gaussian graphical model for observations connected by a network with potentially different mean vectors, varying smoothly over the network. We propose an efficient estimation algorithm and demonstrate its effectiveness on both simulated and real data, obtaining meaningful and interpretable results on a statistics coauthorship network. We also prove that our method estimates both the inverse covariance matrix and the corresponding graph structure correctly under the assumption of network “cohesion”, which refers to the empirically observed phenomenon of network neighbors sharing similar traits.
机译:图形模型通常用于表示变量之间的条件依赖关系。有多种可用于从高维数据探索它们的方法,但几乎所有所有的方法都依靠假设观察是独立的并且相同分布。与此同时,网络连接的观察变得越来越普遍,往往违反这些假设。在这里,我们开发了一个高斯图形模型,用于通过网络连接的观察,具有潜在的不同均值矢量,在网络上平滑地变化。我们提出了一种有效的估计算法,并在模拟和实际数据上展示其有效性,在统计共同努力网络上获得有意义和可解释的结果。我们还证明我们的方法在网络“凝聚”的假设下,正确地估计反向协方差矩阵和相应的图形结构,这是指与共享类似特征的网络邻居的经验观察到的现象。

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