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Fitting very large sparse Gaussian graphical models

机译:拟合非常大的稀疏高斯图形模型

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In this paper we consider some methods for the maximum likelihood estimation of sparse Gaussian graphical (covariance selection) models when the number of variables is very large (tens of thousands or more). We present a procedure for determining the pattern of zeros in the model and we discuss the use of limited memory quasi-Newton algorithms and truncated Newton algorithms to fit the model by maximum likelihood. We present efficient ways of computing the gradients and likelihood function values for such models suitable for a desktop computer. For the truncated Newton method we also present an efficient way of computing the action of the Hessian matrix on an arbitrary vector which does not require the computation and storage of the Hessian matrix. The methods are illustrated and compared on simulated data and applied to a real microarray data set. The limited memory quasi-Newton method is recommended for practical use.
机译:在本文中,我们考虑了一些在变量数量非常大(数万个或更多)时用于稀疏高斯图形(协方差选择)模型的最大似然估计的方法。我们提出了一种确定模型中零模式的程序,并讨论了使用有限内存拟牛顿算法和截断牛顿算法以最大似然拟合模型的方法。我们提出了适用于台式计算机的此类模型的计算梯度和似然函数值的有效方法。对于截断的牛顿法,我们还提出了一种有效的方法来计算黑森州矩阵对任意矢量的作用,该矢量不需要计算和存储黑森州矩阵。对该方法进行了说明并在模拟数据上进行了比较,并将其应用于实际的微阵列数据集。建议实际使用有限内存准牛顿法。

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