A proximal augmented Lagrangian method for nonconvex optimization with equality and inequality constraints
- URL: http://arxiv.org/abs/2509.02894v1
- Date: Tue, 02 Sep 2025 23:39:53 GMT
- Title: A proximal augmented Lagrangian method for nonconvex optimization with equality and inequality constraints
- Authors: Adeyemi D. Adeoye, Puya Latafat, Alberto Bemporad,
- Abstract summary: We propose an inexact proximal augmented Lagrangian method (P-ALM) for non structured optimization problems.<n>The proposed method features an easily implementable variant parameter, but also for adaptively tuning the term.
- Score: 6.423239719448169
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We propose an inexact proximal augmented Lagrangian method (P-ALM) for nonconvex structured optimization problems. The proposed method features an easily implementable rule not only for updating the penalty parameters, but also for adaptively tuning the proximal term. It allows the penalty parameter to grow rapidly in the early stages to speed up progress, while ameliorating the issue of ill-conditioning in later iterations, a well-known drawback of the traditional approach of linearly increasing the penalty parameters. A key element in our analysis lies in the observation that the augmented Lagrangian can be controlled effectively along the iterates, provided an initial feasible point is available. Our analysis, while simple, provides a new theoretical perspective about P-ALM and, as a by-product, results in similar convergence properties for its non-proximal variant, the classical augmented Lagrangian method (ALM). Numerical experiments, including convex and nonconvex problem instances, demonstrate the effectiveness of our approach.
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