Extensions to the Proximal Distance Method of Constrained Optimization
Alfonso Landeros, Oscar Hernan Madrid Padilla, Hua Zhou, Kenneth Lange

TL;DR
This paper introduces an enhanced proximal distance method combining the Beltrami-Courant penalty to efficiently solve constrained optimization problems with fusion constraints, demonstrating superior speed and accuracy in high-dimensional applications.
Contribution
The paper develops a new proximal distance algorithm with convergence guarantees and a steepest descent variant, improving efficiency for complex constrained optimization problems.
Findings
Proven convergence to stationary points for subanalytic functions and sets.
Demonstrated linear local convergence under stronger assumptions.
Numerical experiments show faster performance of the steepest descent variant.
Abstract
The current paper studies the problem of minimizing a loss subject to constraints of the form , where is a closed set, convex or not, and is a matrix that fuses parameters. Fusion constraints can capture smoothness, sparsity, or more general constraint patterns. To tackle this generic class of problems, we combine the Beltrami-Courant penalty method with the proximal distance principle. The latter is driven by minimization of penalized objectives involving large tuning constants and the squared Euclidean distance of from . The next iterate of the corresponding proximal distance algorithm is constructed from the current iterate by minimizing the…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Advanced Optimization Algorithms Research · Optimization and Variational Analysis
