Substitution of the Fittest: A Novel Approach for Mitigating Disengagement in Coevolutionary Genetic Algorithms

08/06/2021
by   Hugo Alcaraz-Herrera, et al.
0

We propose substitution of the fittest (SF), a novel technique designed to counteract the problem of disengagement in two-population competitive coevolutionary genetic algorithms. The approach presented is domain-independent and requires no calibration. In a minimal domain, we perform a controlled evaluation of the ability to maintain engagement and the capacity to discover optimal solutions. Results demonstrate that the solution discovery performance of SF is comparable with other techniques in the literature, while SF also offers benefits including a greater ability to maintain engagement and a much simpler mechanism.

READ FULL TEXT
research
11/01/2022

Using coevolution and substitution of the fittest for health and well-being recommender systems

This research explores substitution of the fittest (SF), a technique des...
research
01/21/2014

Genetic Algorithms and its use with back-propagation network

Genetic algorithms are considered as one of the most efficient search te...
research
06/19/2013

Solution to Quadratic Equation Using Genetic Algorithm

Solving Quadratic equation is one of the intrinsic interests as it is th...
research
10/23/2021

Towards User Engagement Dynamics in Social Networks

The engagement of each user in a social network is an essential indicato...
research
12/04/2009

Search for overlapped communities by parallel genetic algorithms

In the last decade the broad scope of complex networks has led to a rapi...
research
09/30/2022

Automatic Context-Driven Inference of Engagement in HMI: A Survey

An integral part of seamless human-human communication is engagement, th...
research
02/11/2020

A Non-Dominated Sorting Based Customized Random-Key Genetic Algorithm for the Bi-Objective Traveling Thief Problem

In this paper, we propose a method to solve a bi-objective variant of th...

Please sign up or login with your details

Forgot password? Click here to reset