Decentralized Riemannian Conjugate Gradient Method on the Stiefel Manifold

08/21/2023
by   Jun Chen, et al.
0

The conjugate gradient method is a crucial first-order optimization method that generally converges faster than the steepest descent method, and its computational cost is much lower than the second-order methods. However, while various types of conjugate gradient methods have been studied in Euclidean spaces and on Riemannian manifolds, there has little study for those in distributed scenarios. This paper proposes a decentralized Riemannian conjugate gradient descent (DRCGD) method that aims at minimizing a global function over the Stiefel manifold. The optimization problem is distributed among a network of agents, where each agent is associated with a local function, and communication between agents occurs over an undirected connected graph. Since the Stiefel manifold is a non-convex set, a global function is represented as a finite sum of possibly non-convex (but smooth) local functions. The proposed method is free from expensive Riemannian geometric operations such as retractions, exponential maps, and vector transports, thereby reducing the computational complexity required by each agent. To the best of our knowledge, DRCGD is the first decentralized Riemannian conjugate gradient algorithm to achieve global convergence over the Stiefel manifold.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/14/2021

Decentralized Riemannian Gradient Descent on the Stiefel Manifold

We consider a distributed non-convex optimization where a network of age...
research
08/05/2020

An accelerated first-order method for non-convex optimization on manifolds

We describe the first gradient methods on Riemannian manifolds to achiev...
research
03/16/2023

Decentralized Riemannian natural gradient methods with Kronecker-product approximations

With a computationally efficient approximation of the second-order infor...
research
09/07/2022

Manifold Free Riemannian Optimization

Riemannian optimization is a principled framework for solving optimizati...
research
06/27/2022

Euclidean distance and maximum likelihood retractions by homotopy continuation

We define a new second-order retraction map for statistical models. We a...
research
02/08/2023

Decentralized Riemannian Algorithm for Nonconvex Minimax Problems

The minimax optimization over Riemannian manifolds (possibly nonconvex c...
research
01/22/2021

On the Local Linear Rate of Consensus on the Stiefel Manifold

We study the convergence properties of Riemannian gradient method for so...

Please sign up or login with your details

Forgot password? Click here to reset