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Sparse precision matrix estimation via lasso penalized D-trace loss

机译:基于套索罚分D迹线损失的稀疏精度矩阵估计

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摘要

We introduce a constrained empirical loss minimization framework for estimating highdimensional sparse precision matrices and propose a new loss function, called the D-trace loss,for that purpose.Anovel sparse precision matrix estimator is defined as the minimizer of the lasso penalized D-trace loss under a positive-definiteness constraint. Under a new irrepresentability condition, the lasso penalized D-trace estimator is shown to have the sparse recovery property. Examples demonstrate that the new condition can hold in situations where the irrepresentability condition for the lasso penalized Gaussian likelihood estimator fails. We establish rates of convergence for the new estimator in the elementwise maximum, Frobenius and operator norms.We develop a very efficient algorithm based on alternating direction methods for computing the proposed estimator. Simulated and real data are used to demonstrate the computational efficiency of our algorithm and the finite-sample performance of the new estimator. The lasso penalized D-trace estimator is found to compare favourably with the lasso penalized Gaussian likelihood estimator.
机译:我们引入了一个约束的经验损失最小化框架来估计高维稀疏精度矩阵,并为此提出了一个新的损失函数D-trace损失。在正定性约束下。在新的不可表示性条件下,套索惩罚的D迹线估计量显示具有稀疏恢复属性。示例表明,在套索惩罚的高斯似然估计器的不可表示性条件失败的情况下,新条件可以成立。我们建立了新估计量在元素最大值,Frobenius和算子范数下的收敛速度。我们开发了一种基于交替方向方法的非常有效的算法,用于计算所提出的估计量。仿真和真实数据用于证明我们算法的计算效率以及新估计器的有限样本性能。发现套索惩罚的D-迹线估计器与套索惩罚的高斯似然估计器具有良好的比较性。

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