Lagrangian-based methods in convex optimization: prediction-correction frameworks with non-ergodic convergence rates

Abstract

Lagrangian-based methods are classical methods for solving convex optimization problems with equality constraints. We present novel prediction-correction frameworks for such methods and their variants, which can achieve O(1/k) non-ergodic convergence rates for general convex optimization and O(1/k2) non-ergodic convergence rates under the assumption that the objective function is strongly convex or gradient Lipschitz continuous. We give two approaches (updating~multiplier~once or~twice) to design algorithms satisfying the presented prediction-correction frameworks. As applications, we establish non-ergodic convergence rates for some well-known Lagrangian-based methods (esp., the ADMM type methods and the multi-block ADMM type methods).

0

Discussion (0)

Sign in to join the discussion.

Loading comments…