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Activity Number: 67 - Advances in Variable Selection
Type: Contributed
Date/Time: Sunday, August 7, 2022 : 4:00 PM to 5:50 PM
Sponsor: Section on Statistical Learning and Data Science
Abstract #320980
Title: Are Latent Factor Regression and Sparse Regression Adequate?
Author(s): Mengxin Yu* and Jianqing Fan and Zhipeng Lou
Companies: Princeton University and Princeton University and Princeton University
Keywords: Factor Model; Factor Augmented Regression; Dimension Reduction; Sparse Regression; Statistical Inference
Abstract:

We propose the Factor Augmented sparse linear Regression Model (FARM) that not only embraces both the latent factor regression and sparse linear regression as special cases but also bridges dimension reduction and sparse regression together. We provide theoretical guarantees for the estimation of our model under the existence of sub-Gaussian and heavy-tailed noises (with bounded $(1+x)$-th moment, for all $x>0$) respectively. In addition, the existing works on supervised learning often assume the latent factor regression or sparse linear regression is the true underlying model without justifying its adequacy. To fill in such an important gap, we also leverage our model as the alternative model to test the sufficiency of the latent factor regression and the sparse linear regression models. To accomplish these goals, we propose the Factor-Adjusted de-Biased Test (FabTest) and a two-stage ANOVA type test respectively. We also conduct large-scale numerical experiments including both synthetic and FRED macroeconomics data to corroborate the theoretical properties of our methods.


Authors who are presenting talks have a * after their name.

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