On Symplectic Optimization

02/10/2018
by   Michael Betancourt, et al.
0

Accelerated gradient methods have had significant impact in machine learning -- in particular the theoretical side of machine learning -- due to their ability to achieve oracle lower bounds. But their heuristic construction has hindered their full integration into the practical machine-learning algorithmic toolbox, and has limited their scope. In this paper we build on recent work which casts acceleration as a phenomenon best explained in continuous time, and we augment that picture by providing a systematic methodology for converting continuous-time dynamics into discrete-time algorithms while retaining oracle rates. Our framework is based on ideas from Hamiltonian dynamical systems and symplectic integration. These ideas have had major impact in many areas in applied mathematics, but have not yet been seen to have a relationship with optimization.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/14/2016

A Variational Perspective on Accelerated Methods in Optimization

Accelerated gradient methods play a central role in optimization, achiev...
research
04/15/2020

On Dissipative Symplectic Integration with Applications to Gradient-Based Optimization

Continuous-time dynamical systems have proved useful in providing concep...
research
12/06/2019

Optimization algorithms inspired by the geometry of dissipative systems

Accelerated gradient methods are a powerful optimization tool in machine...
research
12/02/2021

Breaking the Convergence Barrier: Optimization via Fixed-Time Convergent Flows

Accelerated gradient methods are the cornerstones of large-scale, data-d...
research
03/11/2019

Conformal Symplectic and Relativistic Optimization

Although momentum-based optimization methods have had a remarkable impac...
research
08/13/2018

Relax, and Accelerate: A Continuous Perspective on ADMM

The acceleration technique first introduced by Nesterov for gradient des...
research
07/05/2017

Machine Learning, Deepest Learning: Statistical Data Assimilation Problems

We formulate a strong equivalence between machine learning, artificial i...

Please sign up or login with your details

Forgot password? Click here to reset