Cardinality-constrained structured data-fitting problems
A memory-efficient solution framework is proposed for the cardinality-constrained structured data-fitting problem. Dual-based atom-identification rules reveal the structure of the optimal primal solution from near-optimal dual solutions, which allows for a simple and computationally efficient algori...
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Main Authors: | , , |
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Format: | Article |
Language: | English |
Published: |
Université de Montpellier
2024-05-01
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Series: | Open Journal of Mathematical Optimization |
Subjects: | |
Online Access: | https://ojmo.centre-mersenne.org/articles/10.5802/ojmo.27/ |
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Summary: | A memory-efficient solution framework is proposed for the cardinality-constrained structured data-fitting problem. Dual-based atom-identification rules reveal the structure of the optimal primal solution from near-optimal dual solutions, which allows for a simple and computationally efficient algorithm that translates any feasible dual solution into a primal solution satisfying the cardinality constraint. Rigorous guarantees bound the quality of a near-optimal primal solution given any dual-based method that generates dual iterates converging to an optimal dual solution. Numerical experiments on real-world datasets support the analysis and demonstrate the efficiency of the proposed approach. |
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ISSN: | 2777-5860 |