Path Following in the Exact Penalty Method of Convex Programming
Hua Zhou, Kenneth Lange

TL;DR
This paper introduces a path following strategy for the exact penalty method in convex programming, enabling continuous tracking of solutions as the penalty parameter varies, with applications across various convex optimization problems.
Contribution
It develops a novel path following approach for the exact penalty method, allowing solution tracing without solving separate optimization problems for each penalty value.
Findings
Solution path is piecewise linear or smooth depending on the problem type.
Path following effectively handles constraints and regularization in diverse convex problems.
Demonstrates applicability to inverse problems like image denoising.
Abstract
Classical penalty methods solve a sequence of unconstrained problems that put greater and greater stress on meeting the constraints. In the limit as the penalty constant tends to , one recovers the constrained solution. In the exact penalty method, squared penalties are replaced by absolute value penalties, and the solution is recovered for a finite value of the penalty constant. In practice, the kinks in the penalty and the unknown magnitude of the penalty constant prevent wide application of the exact penalty method in nonlinear programming. In this article, we examine a strategy of path following consistent with the exact penalty method. Instead of performing optimization at a single penalty constant, we trace the solution as a continuous function of the penalty constant. Thus, path following starts at the unconstrained solution and follows the solution path as the penalty…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Advanced Optimization Algorithms Research · Statistical Methods and Inference
