Population network structure impacts genetic algorithm optimisation performance

04/09/2021
by   Aymeric Vie, et al.
0

A genetic algorithm (GA) is a search method that optimises a population of solutions by simulating natural evolution. Good solutions reproduce together to create better candidates. The standard GA assumes that any two solutions can mate. However, in nature and social contexts, social networks can condition the likelihood that two individuals mate. This impact of population network structure over GAs performance is unknown. Here we introduce the Networked Genetic Algorithm (NGA) to evaluate how various random and scale-free population networks influence the optimisation performance of GAs on benchmark functions. We show evidence of significant variations in performance of the NGA as the network varies. In addition, we find that the best-performing population networks, characterised by intermediate density and low average shortest path length, significantly outperform the standard complete network GA. These results may constitute a starting point for network tuning and network control: seeing the network structure of the population as a parameter that can be tuned to improve the performance of evolutionary algorithms, and offer more realistic modelling of social learning.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/12/2010

Cheating for Problem Solving: A Genetic Algorithm with Social Interactions

We propose a variation of the standard genetic algorithm that incorporat...
research
05/11/2007

Evolutionary Optimisation Methods for Template Based Image Registration

This paper investigates the use of evolutionary optimisation techniques ...
research
09/15/2022

A Genetic Quantum Annealing Algorithm

A genetic algorithm (GA) is a search-based optimization technique based ...
research
07/11/2011

Enhanced Genetic Algorithm approach for Solving Dynamic Shortest Path Routing Problems using Immigrants and Memory Schemes

In Internet Routing, the static shortest path (SP) problem has been addr...
research
07/18/2021

Otimizacao de Redes Neurais atraves de Algoritmos Geneticos Celulares

This works proposes a methodology to searching for automatically Artific...
research
04/15/2019

The 1/5-th Rule with Rollbacks: On Self-Adjustment of the Population Size in the (1+(λ,λ)) GA

Self-adjustment of parameters can significantly improve the performance ...
research
02/24/2021

Modelling SARS-CoV-2 coevolution with genetic algorithms

At the end of 2020, policy responses to the SARS-CoV-2 outbreak have bee...

Please sign up or login with your details

Forgot password? Click here to reset