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High-dimensional linear regression via implicit regularization
[Simultaneous analysis of lasso and Dantzig selector]

Author

Listed:
  • Peng Zhao
  • Yun Yang
  • Qiao-Chu He

Abstract

SummaryMany statistical estimators for high-dimensional linear regression are -estimators, formed through minimizing a data-dependent square loss function plus a regularizer. This work considers a new class of estimators implicitly defined through a discretized gradient dynamic system under overparameterization. We show that, under suitable restricted isometry conditions, overparameterization leads to implicit regularization: if we directly apply gradient descent to the residual sum of squares with sufficiently small initial values then, under some proper early stopping rule, the iterates converge to a nearly sparse rate-optimal solution that improves over explicitly regularized approaches. In particular, the resulting estimator does not suffer from extra bias due to explicit penalties, and can achieve the parametric root- rate when the signal-to-noise ratio is sufficiently high. We also perform simulations to compare our methods with high-dimensional linear regression with explicit regularization. Our results illustrate the advantages of using implicit regularization via gradient descent after overparameterization in sparse vector estimation.

Suggested Citation

  • Peng Zhao & Yun Yang & Qiao-Chu He, 2022. "High-dimensional linear regression via implicit regularization [Simultaneous analysis of lasso and Dantzig selector]," Biometrika, Biometrika Trust, vol. 109(4), pages 1033-1046.
  • Handle: RePEc:oup:biomet:v:109:y:2022:i:4:p:1033-1046.
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    File URL: http://hdl.handle.net/10.1093/biomet/asac010
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