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SOCP based variance free Dantzig Selector with application to robust estimation

机译:基于SOCP的无方差Dantzig选择器及其在鲁棒估计中的应用

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Sparse estimation methods based on ?_1 relaxation, such as Lasso and Dantzig Selector, are powerful tools for estimating high dimensional linear models. However, in order to properly tune these methods, the variance of the noise is often used. In this paper, we propose a new approach to the joint estimation of the sparse vector and the noise variance in a high dimensional linear regression. The method is closely related to the maximum a posteriori estimation and has the attractive feature of being computable by solving a simple second-order cone program (SOCP). We establish nonasymptotic sharp risk bounds for the proposed estimator and show how it can be applied in the problem of robust estimation.
机译:基于L_1松弛的稀疏估计方法(例如Lasso和Dantzig Selector)是用于估计高维线性模型的强大工具。但是,为了适当地调整这些方法,经常使用噪声的方差。在本文中,我们提出了一种在高维线性回归中联合估计稀疏矢量和噪声方差的新方法。该方法与最大后验估计紧密相关,并且具有通过解决简单的二阶锥规划(SOCP)可计算的吸引人的特征。我们为拟议的估计量建立了非渐近的尖锐风险界限,并说明了如何将其应用于鲁棒估计问题。

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