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On model selection consistency of regularized M-estimators

机译:关于正则M估计量的模型选择一致性

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Regularized M-estimators are used in diverse areas of science and engineering to fit high-dimensional models with some low-dimensional structure. Usually the low-dimensional structure is encoded by the presence of the (unknown) parameters in some low-dimensional model subspace. In such settings, it is desirable for estimates of the model parameters to be model selection consistent : the estimates also fall in the model subspace. We develop a general framework for establishing consistency and model selection consistency of regularized M-estimators and show how it applies to some special cases of interest in statistical learning. Our analysis identifies two key properties of regularized M-estimators, referred to as geometric decomposability and irrepresentability, that ensure the estimators are consistent and model selection consistent.
机译:正则化M估计量用于科学和工程学的各个领域,以适应具有某些低维结构的高维模型。通常,低维结构是通过某些低维模型子空间中(未知)参数的存在来编码的。在这种情况下,希望模型参数的估计值与模型选择保持一致:估计值也落在模型子空间中。我们开发了一个用于建立正则化M估计量的一致性和模型选择一致性的通用框架,并展示了它如何应用于统计学习中某些特殊情况。我们的分析确定了正则化M估计量的两个关键属性,称为几何可分解性和不可表示性,可确保估计量一致且模型选择一致。

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