Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Oracle Complexity of Single-Loop Switching Subgradient Methods for Non-Smooth Weakly Convex Functional Constrained Optimization

About

We consider a non-convex constrained optimization problem, where the objective function is weakly convex and the constraint function is either convex or weakly convex. To solve this problem, we consider the classical switching subgradient method, which is an intuitive and easily implementable first-order method whose oracle complexity was only known for convex problems. This paper provides the first analysis on the oracle complexity of the switching subgradient method for finding a nearly stationary point of non-convex problems. Our results are derived separately for convex and weakly convex constraints. Compared to existing approaches, especially the double-loop methods, the switching gradient method can be applied to non-smooth problems and achieves the same complexity using only a single loop, which saves the effort on tuning the number of inner iterations.

Yankun Huang, Qihang Lin• 2023

Related benchmarks

TaskDatasetResultRank
Fairness-constrained classificationExperiment E1 (test)
Best Loss0.5
4
Fairness-constrained classificationExperiment E2 (test)
Best Loss0.43
4
Fairness-constrained classificationExperiment E3 (test)
Best Loss0.57
4
Fairness-constrained classificationExperiment E4 (test)
Best Loss0.63
4
Fairness-constrained classificationExperiment E5 (test)
Best Loss2.11
4
Fairness-constrained classificationExperiment E6 (test)
Best Loss4.82
4
Showing 6 of 6 rows

Other info

Follow for update