Title
First-order methods of smooth convex optimization with inexact oracle
Abstract
We introduce the notion of inexact first-order oracle and analyze the behavior of several first-order methods of smooth convex optimization used with such an oracle. This notion of inexact oracle naturally appears in the context of smoothing techniques, Moreau–Yosida regularization, Augmented Lagrangians and many other situations. We derive complexity estimates for primal, dual and fast gradient methods, and study in particular their dependence on the accuracy of the oracle and the desired accuracy of the objective function. We observe that the superiority of fast gradient methods over the classical ones is no longer absolute when an inexact oracle is used. We prove that, contrary to simple gradient schemes, fast gradient methods must necessarily suffer from error accumulation. Finally, we show that the notion of inexact oracle allows the application of first-order methods of smooth convex optimization to solve non-smooth or weakly smooth convex problems.
Year
DOI
Venue
2014
10.1007/s10107-013-0677-5
Math. Program.
Keywords
DocType
Volume
Smooth convex optimization, First-order methods, Inexact oracle, Gradient methods, Fast gradient methods, Complexity bounds, 90C06, 90C25, 90C60
Journal
146
Issue
ISSN
Citations 
1-2
1436-4646
36
PageRank 
References 
Authors
1.62
10
3
Name
Order
Citations
PageRank
Olivier Devolder1603.41
François Glineur236220.16
Yurii Nesterov31800168.77