A Continuous-Time Perspective on Global Acceleration for Monotone Equation Problems
Tianyi Lin, Michael. I. Jordan

TL;DR
This paper introduces a continuous-time framework for designing accelerated methods to solve monotone equation problems, establishing global convergence rates and connecting dynamical systems with optimization algorithms.
Contribution
It proposes accelerated rescaled gradient systems, proves their equivalence to control systems, and develops a unified discretization framework for high-order and first-order methods with proven global rates.
Findings
Achieves a global rate of O(k^{-p/2}) for p-th order methods.
First-order methods attain the same rate under strong Lipschitz conditions.
Restarted methods achieve local convergence of order p for strongly monotone F.
Abstract
We propose a new framework to design and analyze accelerated methods that solve general monotone equation (ME) problems . Traditional approaches include generalized steepest descent methods and inexact Newton-type methods. If is uniformly monotone and twice differentiable, these methods achieve local convergence rates while the latter methods are globally convergent thanks to line search and hyperplane projection. However, a global rate is unknown for these methods. The variational inequality methods can be applied to yield a global rate that is expressed in terms of but these results are restricted to first-order methods and a Lipschitz continuous operator. It has not been clear how to obtain global acceleration using high-order Lipschitz continuity. This paper takes a continuous-time perspective where accelerated methods are viewed as the discretization of…
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Taxonomy
TopicsAdvanced Optimization Algorithms Research · Optimization and Variational Analysis · Iterative Methods for Nonlinear Equations
