On Robustness of Principal Component Regression

被引:23
|
作者
Agarwal, Anish [1 ]
Shah, Devavrat [1 ]
Shen, Dennis [1 ]
Song, Dogyoon [1 ]
机构
[1] MIT, EECS, 32 Vassar St, Cambridge, MA 02139 USA
关键词
Error-in-variables regression; Hard singular value thresholding; Matrix estimation; Principal component regression; Synthetic controls; PANEL;
D O I
10.1080/01621459.2021.1928513
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
Principal component regression (PCR) is a simple, but powerful and ubiquitously utilized method. Its effectiveness is well established when the covariates exhibit low-rank structure. However, its ability to handle settings with noisy, missing, and mixed-valued, that is, discrete and continuous, covariates is not understood and remains an important open challenge. As the main contribution of this work, we establish the robustness of PCR, without any change, in this respect and provide meaningful finite-sample analysis. To do so, we establish that PCR is equivalent to performing linear regression after preprocessing the covariate matrix via hard singular value thresholding (HSVT). As a result, in the context of counterfactual analysis using observational data, we show PCR is equivalent to the recently proposed robust variant of the synthetic control method, known as robust synthetic control (RSC). As an immediate consequence, we obtain finite-sample analysis of the RSC estimator that was previously absent. As an important contribution to the synthetic controls literature, we establish that an (approximate) linear synthetic control exists in the setting of a generalized factor model, or latent variable model; traditionally in the literature, the existence of a synthetic control needs to be assumed to exist as an axiom. We further discuss a surprising implication of the robustness property of PCR with respect to noise, that is, PCR can learn a good predictive model even if the covariates are tactfully transformed to preserve differential privacy. Finally, this work advances the state-of-the-art analysis for HSVT by establishing stronger guarantees with respect to the l2,infinity -norm rather than the Frobenius norm as is commonly done in the matrix estimation literature, which may be of interest in its own right.
引用
收藏
页码:1731 / 1745
页数:15
相关论文
共 50 条
  • [21] Genomic selection using principal component regression
    Caroline Du
    Julong Wei
    Shibo Wang
    Zhenyu Jia
    Heredity, 2018, 121 : 12 - 23
  • [22] Robust correlation scaled principal component regression
    Tahir, Aiman
    Ilyas, Maryam
    HACETTEPE JOURNAL OF MATHEMATICS AND STATISTICS, 2023, 52 (02): : 459 - 486
  • [23] A principal component regression strategy for estimating motion
    Estrela, Vania V.
    Da Silva Bassani, M. H.
    de Assis, J. T.
    PROCEEDINGS OF THE SEVENTH IASTED INTERNATIONAL CONFERENCE ON VISUALIZATION, IMAGING, AND IMAGE PROCESSING, 2007, : 224 - +
  • [24] A NOTE ON COMBINING RIDGE AND PRINCIPAL COMPONENT REGRESSION
    NOMURA, M
    OHKUBO, T
    COMMUNICATIONS IN STATISTICS-THEORY AND METHODS, 1985, 14 (10) : 2489 - 2493
  • [25] Optical proximity correction with principal component regression
    Gao, Peiran
    Gu, Allan
    Zakhor, Avideh
    OPTICAL MICROLITHOGRAPHY XXI, PTS 1-3, 2008, 6924
  • [26] Principal component-guided sparse regression
    Tay, Jingyi K.
    Friedman, Jerome
    Tibshirani, Robert
    CANADIAN JOURNAL OF STATISTICS-REVUE CANADIENNE DE STATISTIQUE, 2021, 49 (04): : 1222 - 1257
  • [27] PRINCIPAL COMPONENT ESTIMATORS IN REGRESSION-ANALYSIS
    CHENG, DC
    IGLARSH, HJ
    REVIEW OF ECONOMICS AND STATISTICS, 1976, 58 (02) : 229 - 234
  • [28] Multiple-shrinkage principal component regression
    George, EI
    Oman, SD
    JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES D-THE STATISTICIAN, 1996, 45 (01) : 111 - 124
  • [29] Sparse principal component regression with adaptive loading
    Kawano, Shuichi
    Fujisawa, Hironori
    Takada, Toyoyuki
    Shiroishi, Toshihiko
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2015, 89 : 192 - 203
  • [30] Genomic selection using principal component regression
    Du, Caroline
    Wei, Julong
    Wang, Shibo
    Jia, Zhenyu
    HEREDITY, 2018, 121 (01) : 12 - 23