TL;DR
This paper introduces an adaptive multi-penalty regularization algorithm that efficiently constructs regularization paths, enabling data-driven parameter selection and improved support recovery in sparse regression problems.
Contribution
It extends regularization path algorithms to multi-penalty settings, providing a novel framework for adaptive parameter choice and solution stability analysis.
Findings
Demonstrates robustness over state-of-the-art methods
Provides efficient construction of solution regions
Enables data-adaptive regularization parameter selection
Abstract
For many algorithms, parameter tuning remains a challenging and critical task, which becomes tedious and infeasible in a multi-parameter setting. Multi-penalty regularization, successfully used for solving undetermined sparse regression of problems of unmixing type where signal and noise are additively mixed, is one of such examples. In this paper, we propose a novel algorithmic framework for an adaptive parameter choice in multi-penalty regularization with a focus on the correct support recovery. Building upon the theory of regularization paths and algorithms for single-penalty functionals, we extend these ideas to a multi-penalty framework by providing an efficient procedure for the construction of regions containing structurally similar solutions, i.e., solutions with the same sparsity and sign pattern, over the whole range of parameters. Combining this with a model selection…
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