A note on the one-step estimator for ultrahigh dimensionality

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摘要

The one-step estimator, covering various penalty functions, enjoys the oracle property with a good initial estimator. The initial estimator can be chosen as the least squares estimator or maximum likelihood estimator in low-dimensional settings. However, it is not available in ultrahigh dimensionality. In this paper, we study the one-step estimator with the initial estimator being marginal ordinary least squares estimates in the ultrahigh linear model. Under some appropriate conditions, we show that the one-step estimator is selection consistent. Finite sample performance of the proposed procedure is assessed by Monte Carlo simulation studies.

论文关键词:33B15,26D15,60E15,Cross validation,High-dimensional data,Model selection consistency,One-step estimator,Partial orthogonality

论文评审过程:Received 2 March 2013, Revised 23 July 2013, Available online 4 October 2013.

论文官网地址:https://doi.org/10.1016/j.cam.2013.09.037