A Dual Approach for Optimal Algorithms in Distributed Optimization over Networks

09/03/2018
by   César A. Uribe, et al.
0

We study the optimal convergence rates for distributed convex optimization problems over networks, where the objective is to minimize the sum ∑_i=1^mf_i(z) of local functions of the nodes in the network. We provide optimal complexity bounds for four different cases, namely: the case when each function f_i is strongly convex and smooth, the cases when it is either strongly convex or smooth and the case when it is convex but neither strongly convex nor smooth. Our approach is based on the dual of an appropriately formulated primal problem, which includes the underlying static graph that models the communication restrictions. Our results show distributed algorithms that achieve the same optimal rates as their centralized counterparts (up to constant and logarithmic factors), with an additional cost related to the spectral gap of the interaction matrix that captures the local communications of the nodes in the network.

READ FULL TEXT
research
12/01/2017

Optimal Algorithms for Distributed Optimization

In this paper, we study the optimal convergence rate for distributed con...
research
02/28/2017

Optimal algorithms for smooth and strongly convex distributed optimization in networks

In this paper, we determine the optimal convergence rates for strongly c...
research
05/27/2019

Robustness of accelerated first-order algorithms for strongly convex optimization problems

We study the robustness of accelerated first-order algorithms to stochas...
research
02/11/2022

Distributed saddle point problems for strongly concave-convex functions

In this paper, we propose GT-GDA, a distributed optimization method to s...
research
06/08/2021

Lower Bounds and Optimal Algorithms for Smooth and Strongly Convex Decentralized Optimization Over Time-Varying Networks

We consider the task of minimizing the sum of smooth and strongly convex...
research
05/27/2023

Some Primal-Dual Theory for Subgradient Methods for Strongly Convex Optimization

We consider (stochastic) subgradient methods for strongly convex but pot...
research
06/05/2015

Communication Complexity of Distributed Convex Learning and Optimization

We study the fundamental limits to communication-efficient distributed m...

Please sign up or login with your details

Forgot password? Click here to reset