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Simulation-based consistent inference for biased working model of non-sparse high-dimensional linear regression
Authors:Lu Lin  Feng LiLixing Zhu
Institution:a School of Mathematics, Shandong University, Jinan, China
b Zhengzhou Institute of Aeronautical Industry Management, China
c Hong Kong Baptist University, Hong Kong
Abstract:Variable selection in regression analysis is of importance because it can simplify model and enhance predictability. After variable selection, however, the resulting working model may be biased when it does not contain all of significant variables. As a result, the commonly used parameter estimation is either inconsistent or needs estimating high-dimensional nuisance parameter with very strong assumptions for consistency, and the corresponding confidence region is invalid when the bias is relatively large. We in this paper introduce a simulation-based procedure to reformulate a new model so as to reduce the bias of the working model, with no need to estimate high-dimensional nuisance parameter. The resulting estimators of the parameters in the working model are asymptotic normally distributed whether the bias is small or large. Furthermore, together with the empirical likelihood, we build simulation-based confidence regions for the parameters in the working model. The newly proposed estimators and confidence regions outperform existing ones in the sense of consistency.
Keywords:High dimensional regression  Non-sparsity  Biased working model  Consistent inference  Empirical likelihood
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