Jan. 1, 2023, midnight | You Zhao, Xiaofeng Liao, Xing He, Mingliang Zhou, Chaojie Li

JMLR www.jmlr.org

This paper investigates two accelerated primal-dual mirror dynamical approaches for smooth and nonsmooth convex optimization problems with affine and closed, convex set constraints. In the smooth case, an accelerated primal-dual mirror dynamical approach (APDMD) based on accelerated mirror descent and primal-dual framework is proposed and accelerated convergence properties of primal-dual gap, feasibility measure and the objective function value along with trajectories of APDMD are derived by the Lyapunov analysis method. Then, we extend APDMD into two distributed dynamical approaches to …

case constraints convergence distributed dynamics framework optimization paper primal set

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