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Sparse recovery via nonconvex regularized M-estimators over l(q)-balls

机译:通过L(q)-balls的非凸正则m-estimators稀疏恢复

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The recovery properties of nonconvex regularized M-estimators are analysed, under the general sparsity assumption on the true parameter. In the statistical aspect, the recovery bound for any stationary point of the nonconvex regularized M-estimator is established under some regularity conditions. In the computational aspect, the proximal gradient method is used to solve the nonconvex optimization problem and is proved to achieve a linear convergence rate, by virtue of a slight decomposition of the objective function. In particular, for commonly-used regularizers such as SCAD and MCP, a simpler decomposition is applicable thanks to the assumption on the regularizer, which helps to construct the estimator with better recovery performance. In the aspect of application, theoretical consequences are obtained on the corrupted error-in-variables linear regression model by verifying the required conditions. Finally, statistical and computational results as well as advantages of the assumptions are demonstrated by several numerical experiments. Simulation results show remarkable consistency with the theory under high-dimensional scaling. (C) 2020 Elsevier B.V. All rights reserved.
机译:在True参数上的一般稀疏假设下分析了非核解正则化M估计的恢复属性。在统计方面,在一些规则条件下建立非耦合正则M-Everizator的任何静止点的恢复。在计算方面,近端梯度方法用于解决非透露优化问题,并且被证明是通过物理函数的轻微分解来实现线性收敛速率。特别是对于诸如扫描和MCP的共同使用的常规程序,由于符号器上的假设,可以使用更简单的分解,这有助于构建具有更好恢复性能的估计器。在应用的方面,通过验证所需条件,在损坏的误差内的线性回归模型中获得理论后果。最后,几个数值实验证明了统计和计算结果以及假设的优点。仿真结果表明,高维缩放下的理论呈现出色。 (c)2020 Elsevier B.V.保留所有权利。

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