Title :
Rate of convergence analysis of a dual fast gradient method for general convex optimization
Author :
Andrei Patrascu;Ion Necoara;Rolf Findeisen
Author_Institution :
Automatic Control and Systems Engineering Department, University Politehnica Bucharest, Romania
Abstract :
In this paper we analyze the iteration complexity of a dual fast gradient method for solving general constrained convex problems, that can arise e.g in embedded model predictive control (MPC). When it is difficult to project on the primal feasible set described by convex constraints, we use the Lagrangian relaxation to handle the complicated constraints and then, we apply a dual fast gradient algorithm for solving the corresponding dual problem. We provide sublinear estimates on the primal suboptimality and feasibility violation of the generated approximate primal solutions. The iteration complexity analysis is based on two types of approximate primal solutions: the last primal iterate sequence and an average primal sequence. We also test the performance of the algorithm on MPC for a simplified model of a self balancing robot.
Keywords :
"Gradient methods","Convergence","Convex functions","Approximation algorithms","Algorithm design and analysis","Complexity theory"
Conference_Titel :
Decision and Control (CDC), 2015 IEEE 54th Annual Conference on
DOI :
10.1109/CDC.2015.7402717