Back to Search Start Over

Affordable mixed-integer Lagrangian methods: optimality conditions and convergence analysis

Authors :
De Marchi, Alberto
Publication Year :
2024

Abstract

Necessary optimality conditions in Lagrangian form and the augmented Lagrangian framework are extended to mixed-integer nonlinear optimization, without any convexity assumptions. Building upon a recently developed notion of local optimality for problems with polyhedral and integrality constraints, a characterization of local minimizers and critical points is given for problems including also nonlinear constraints. This approach lays the foundations for developing affordable sequential minimization algorithms with convergence guarantees to critical points from arbitrary initializations. A primal-dual perspective, a local saddle point property, and the dual relationships with the proximal point algorithm are also advanced in the presence of integer variables.<br />Comment: 18 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.12436
Document Type :
Working Paper