A variational perspective on accelerated methods in optimization

Author:

Wibisono Andre,Wilson Ashia C.,Jordan Michael I.

Abstract

Accelerated gradient methods play a central role in optimization, achieving optimal rates in many settings. Although many generalizations and extensions of Nesterov’s original acceleration method have been proposed, it is not yet clear what is the natural scope of the acceleration concept. In this paper, we study accelerated methods from a continuous-time perspective. We show that there is a Lagrangian functional that we call the Bregman Lagrangian, which generates a large class of accelerated methods in continuous time, including (but not limited to) accelerated gradient descent, its non-Euclidean extension, and accelerated higher-order gradient methods. We show that the continuous-time limit of all of these methods corresponds to traveling the same curve in spacetime at different speeds. From this perspective, Nesterov’s technique and many of its generalizations can be viewed as a systematic way to go from the continuous-time curves generated by the Bregman Lagrangian to a family of discrete-time accelerated algorithms.

Funder

DOD | Office of Naval Research

Publisher

Proceedings of the National Academy of Sciences

Subject

Multidisciplinary

Reference34 articles.

1. A method of solving a convex programming problem with convergence rate O ( 1 / k 2 );Nesterov;Soviet Mathematics Doklady,1983

2. Nemirovskii A Yudin D (1983) Problem Complexity and Method Efficiency in Optimization (Wiley, New York).

3. Nesterov Y (2007) Gradient Methods for Minimizing Composite Objective Function, CORE Discussion Papers 2007076 (Université Catholique de Louvain, Louvain-la-Neuve, Belgium).

4. Tseng P (2008) On accelerated proximal gradient methods for convex-concave optimization. Available at www.mit.edu/∼dimitrib/PTseng/papers/apgm.pdf. Accessed October 27, 2016.

5. A Fast Iterative Shrinkage-Thresholding Algorithm for Linear Inverse Problems

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