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Estimation of high-dimensional graphical models using regularized score matching

机译:使用正则化得分匹配估算高维图形模型

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Graphical models are widely used to model stochastic dependences among large collections of variables. We introduce a new method of estimating undirected conditional independence graphs based on the score matching loss, introduced by Hyv?rinen (2005), and subsequently extended in Hyv?rinen (2007). The regularized score matching method we propose applies to settings with continuous observations and allows for computationally efficient treatment of possibly non-Gaussian exponential family models. In the well-explored Gaussian setting, regularized score matching avoids issues of asymmetry that arise when applying the technique of neighborhood selection, and compared to existing methods that directly yield symmetric estimates, the score matching approach has the advantage that the considered loss is quadratic and gives piecewise linear solution paths under $ell_{1}$ regularization. Under suitable irrepresentability conditions, we show that $ell_{1}$-regularized score matching is consistent for graph estimation in sparse high-dimensional settings. Through numerical experiments and an application to RNAseq data, we confirm that regularized score matching achieves state-of-the-art performance in the Gaussian case and provides a valuable tool for computationally efficient estimation in non-Gaussian graphical models.
机译:图形模型被广泛用于建模大量变量之间的随机依赖关系。我们引入了一种新的基于分数匹配损失的无条件条件独立图估计方法,该方法由Hyv?rinen(2005)引入,随后在Hyv?rinen(2007)中得到扩展。我们提出的正则化分数匹配方法适用于具有连续观测值的设置,并允许对可能非高斯指数族模型进行计算有效处理。在经过充分探索的高斯环境中,规则化的分数匹配避免了应用邻域选择技术时出现的不对称问题,并且与直接产生对称估计的现有方法相比,分数匹配方法具有以下优势:考虑的损失是二次的给出$ ell_ {1} $正则化下的分段线性解路径。在适当的不可表示性条件下,我们证明了$ ell_ {1} $-正则化分数匹配对于稀疏高维设置中的图估计是一致的。通过数值实验和对RNAseq数据的应用,我们确认正则化分数匹配在高斯情况下实现了最新的性能,并为非高斯图形模型中的计算有效估计提供了有价值的工具。

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