Abstract
In this paper, a unified study is presented for the design and analysis of a broad class of linear regression methods. The proposed general framework includes the conventional linear regression methods (such as the least squares regression and the Ridge regression) and some new regression methods (e.g. the Landweber regression and Showalter regression), which have recently been introduced in the fields of optimization and inverse problems. The strong consistency, the reduced mean squared error, the asymptotic Gaussian property, and the best worst case error of this class of linear regression methods are investigated. Various numerical experiments are performed to demonstrate the consistency and efficiency of the proposed class of methods for linear regression.
Original language | English |
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Article number | 101826 |
Journal | Journal of Complexity |
Volume | 82 |
DOIs | |
Publication status | Published - Jun 2024 |
Keywords
- Asymptotic Gaussian
- Consistency
- Dynamic
- Inverse problems
- Linear regression
- Regularization