Relaxed regularization for linear inverse problems

Publication date

2021

Authors

Luiken, NickISNI 0000000492910721
van Leeuwen, TristanISNI 0000000395587264

Editors

Advisors

Supervisors

Document Type

Article
Open Access logo

License

taverne

Abstract

We consider regularized least-squares problems of the form min {equation presented}. Recently, Zheng et al. [IEEE Access, 7 (2019), pp. 1404-1423], proposed an algorithm called Sparse Relaxed Regularized Regression (SR3) that employs a splitting strategy by introducing an auxiliary variable y and solves min {equation presented}. By minimizing out the variable x, we obtain an equivalent optimization problem min {equation presented}. In our work, we view the SR3 method as a way to approximately solve the regularized problem. We analyze the conditioning of the relaxed problem in general and give an expression for the SVD of Fκ as a function of κ. Furthermore, we relate the Pareto curve of the original problem to the relaxed problem, and we quantify the error incurred by relaxation in terms of κ. Finally, we propose an efficient iterative method for solving the relaxed problem with inexact inner iterations. Numerical examples illustrate the approach.

Keywords

Inverse problems, Machine learning, Optimization, Regularization, Sparsity, Total variation, Taverne, Computational Mathematics, Applied Mathematics

Citation

Luiken, N & Van Leeuwen, T 2021, 'Relaxed regularization for linear inverse problems', SIAM Journal on Scientific Computing, vol. 43, no. 5, pp. S269-S292. https://doi.org/10.1137/20M1348091