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Selecting the regularization parameters in high-dimensional panel data models: Consistency and efficiency
Authors:Tomohiro Ando
Institution:Graduate School of Business, Keio University, Kanagawa, Japan
Abstract:This article considers panel data models in the presence of a large number of potential predictors and unobservable common factors. The model is estimated by the regularization method together with the principal components procedure. We propose a panel information criterion for selecting the regularization parameter and the number of common factors under a diverging number of predictors. Under the correct model specification, we show that the proposed criterion consistently identifies the true model. If the model is instead misspecified, the proposed criterion achieves asymptotically efficient model selection. Simulation results confirm these theoretical arguments.
Keywords:Endogeneity  factor models  heterogeneous coefficients  information criterion  penalized method  smoothly clipped absolute deviation (SCAD)
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