Distributed Global Optimization (DGO)

12/16/2020
by   Homayoun Valafar, et al.
0

A new technique of global optimization and its applications in particular to neural networks are presented. The algorithm is also compared to other global optimization algorithms such as Gradient descent (GD), Monte Carlo (MC), Genetic Algorithm (GA) and other commercial packages. This new optimization technique proved itself worthy of further study after observing its accuracy of convergence, speed of convergence and ease of use. Some of the advantages of this new optimization technique are listed below: 1. Optimizing function does not have to be continuous or differentiable. 2. No random mechanism is used, therefore this algorithm does not inherit the slow speed of random searches. 3. There are no fine-tuning parameters (such as the step rate of G.D. or temperature of S.A.) needed for this technique. 4. This algorithm can be implemented on parallel computers so that there is little increase in computation time (compared to linear increase) as the number of dimensions increases. The time complexity of O(n) is achieved.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/16/2020

Parallel Implementation of Distributed Global Optimization (DGO)

Parallel implementations of distributed global optimization (DGO) [13] o...
research
06/19/2016

Minimum cost polygon overlay with rectangular shape stock panels

Minimum Cost Polygon Overlay (MCPO) is a unique two-dimensional optimiza...
research
06/05/2019

Genetic Random Weight Change Algorithm for the Learning of Multilayer Neural Networks

A new method to improve the performance of Random weight change (RWC) al...
research
08/07/2023

MCTS guided Genetic Algorithm for optimization of neural network weights

In this research, we investigate the possibility of applying a search st...
research
07/19/2023

VAPI: Vectorization of Algorithm for Performance Improvement

This study presents the vectorization of metaheuristic algorithms as the...
research
05/26/2021

The influence of various optimization algorithms on nuclear power plant steam turbine exergy efficiency and destruction

This paper presents an exergy analysis of the whole turbine, turbine cyl...
research
01/16/2013

Complexity of Representation and Inference in Compositional Models with Part Sharing

This paper describes serial and parallel compositional models of multipl...

Please sign up or login with your details

Forgot password? Click here to reset