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Sparsistency of 1\ell_1-Regularized MM-Estimators

Abstract

We consider the model selection consistency or sparsistency of a broad set of 1\ell_1-regularized MM-estimators for linear and non-linear statistical models in a unified fashion. For this purpose, we propose the local structured smoothness condition (LSSC) on the loss function. We provide a general result giving deterministic sufficient conditions for sparsistency in terms of the regularization parameter, ambient dimension, sparsity level, and number of measurements. We show that several important statistical models have MM-estimators that indeed satisfy the LSSC, and as a result, the sparsistency guarantees for the corresponding 1\ell_1-regularized MM-estimators can be derived as simple applications of our main theorem.

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