Published July 12, 2019 | Version v1
Preprint Open

Distributed Trust-Region Method With First Order Models

  • 1. University of Novi Sad Faculty of Sciences

Description

In this paper, we introduce the trust region concept for distributed optimization. A large class of globally convergent
methods of this type is used efficiently in centralized optimization, both constrained and unconstrained. The methods of this class
are built on the idea of modeling the objective function at each iteration and taking the new iteration as the minimizer of the
model in a certain area, called the trust region. The trust region size, the minimization method and the model function depend on
the properties of the objective function. In this paper we propose a general framework and concentrate on the first order methods,
i.e. the gradient methods. Using the trust-region mechanism for generating the step size we end up with a fully distributed method with node varying step sizes. Numerical results presented in the paper demonstrate the efficiency of the proposed approach.

Notes

preprint of a paper accepted in EUROCON 2019 conference (http://eurocon2019.org)

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Funding

I-BiDaaS – Industrial-Driven Big Data as a Self-Service Solution 780787
European Commission