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Structured regularization for conditional Gaussian graphical models

机译:条件高斯图形模型的结构化正则化

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Conditional Gaussian graphical models are a reparametrization of the multivariate linear regression model which explicitly exhibits (i) the partial covariances between the predictors and the responses, and (ii) the partial covariances between the responses themselves. Such models are particularly suitable for interpretability since partial covariances describe direct relationships between variables. In this framework, we propose a regularization scheme to enhance the learning strategy of the model by driving the selection of the relevant input features by prior structural information. It comes with an efficient alternating optimization procedure which is guaranteed to converge to the global minimum. On top of showing competitive performance on artificial and real datasets, our method demonstrates capabilities for fine interpretation, as illustrated on three high-dimensional datasets from spectroscopy, genetics, and genomics.
机译:条件高斯图形模型是多元线性回归模型的重新参数化,它明确显示(i)预测变量和响应之间的局部协方差,以及(ii)响应本身之间的局部协方差。由于部分协方差描述了变量之间的直接关系,因此此类模型特别适合于可解释性。在此框架中,我们提出了一种正则化方案,通过通过先验结构信息驱动相关输入特征的选择来增强模型的学习策略。它带有有效的交替优化程序,可以保证收敛到全局最小值。除了在人工数据集和真实数据集上显示竞争性能外,我们的方法还展示了精细解释的能力,如光谱学,遗传学和基因组学的三个高维数据集所示。

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