A Primal-Dual Algorithmic Framework for Constrained Convex Minimization
Tran-Dinh, Quoc, Cevher, Volkan
We present a primal-dual algorithmic framework to obtain approximate solutions to a prototypical constrained convex optimization problem, and rigorously characterize how common structural assumptions affect the numerical efficiency. Our main analysis technique provides a fresh perspective on Nesterov's excessive gap technique in a structured fashion and unifies it with smoothing and primal-dual methods. For instance, through the choices of a dual smoothing strategy and a center point, our framework subsumes decomposition algorithms, augmented Lagrangian as well as the alternating direction method-of-multipliers methods as its special cases, and provides optimal convergence rates on the primal objective residual as well as the primal feasibility gap of the iterates for all.
Mar-3-2015
- Country:
- Asia (0.27)
- Europe (0.27)
- North America > United States
- California (0.14)
- Genre:
- Research Report > New Finding (0.45)
- Technology: