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Structured Learning of Gaussian Graphical Models

机译:高斯图形模型的结构化学习

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We consider estimation of multiple high-dimensional Gaussian graphical models corresponding to a single set of nodes under several distinct conditions. We assume that most aspects of the networks are shared, but that there are some structured differences between them. Specifically, the network differences are generated from node perturbations: a few nodes are perturbed across networks, and most or all edges stemming from such nodes differ between networks. This corresponds to a simple model for the mechanism underlying many cancers, in which the gene regulatory network is disrupted due to the aberrant activity of a few specific genes. We propose to solve this problem using the perturbed-node joint graphical lasso, a convex optimization problem that is based upon the use of a row-column overlap norm penalty. We then solve the convex problem using an alternating directions method of multipliers algorithm. Our proposal is illustrated on synthetic data and on an application to brain cancer gene expression data.
机译:我们考虑在多个不同条件下,估计与单个节点集相对应的多个高维高斯图形模型。我们假设网络的大多数方面都是共享的,但是它们之间存在一些结构上的差异。具体而言,网络差异是由节点扰动产生的:几个节点在整个网络中受到扰动,并且源自此类节点的大部分或全部边缘在网络之间是不同的。这对应于许多癌症潜在机制的简单模型,其中基因调节网络由于一些特定基因的异常活性而被破坏。我们建议使用摄动节点联合图形套索解决此问题,这是一个基于行列重叠范数惩罚的凸优化问题。然后,我们使用乘数算法的交替方向方法来解决凸问题。我们的建议在合成数据和对脑癌基因表达数据的应用中得到了说明。

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