Larger Offspring Populations Help the (1 + (λ, λ)) Genetic Algorithm to Overcome the Noise

05/08/2023
by   Alexandra Ivanova, et al.
0

Evolutionary algorithms are known to be robust to noise in the evaluation of the fitness. In particular, larger offspring population sizes often lead to strong robustness. We analyze to what extent the (1+(λ,λ)) genetic algorithm is robust to noise. This algorithm also works with larger offspring population sizes, but an intermediate selection step and a non-standard use of crossover as repair mechanism could render this algorithm less robust than, e.g., the simple (1+λ) evolutionary algorithm. Our experimental analysis on several classic benchmark problems shows that this difficulty does not arise. Surprisingly, in many situations this algorithm is even more robust to noise than the (1+λ) EA.

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
07/08/2014

A Critical Reassessment of Evolutionary Algorithms on the cryptanalysis of the simplified data encryption standard algorithm

In this paper we analyze the cryptanalysis of the simplified data encryp...
research
05/16/2023

Limit-behavior of a hybrid evolutionary algorithm for the Hasofer-Lind reliability index problem

In probabilistic structural mechanics, the Hasofer-Lind reliability inde...
research
07/03/2009

Spontaneous organization leads to robustness in evolutionary algorithms

The interaction networks of biological systems are known to take on seve...
research
02/10/2015

The Benefit of Sex in Noisy Evolutionary Search

The benefit of sexual recombination is one of the most fundamental quest...
research
12/21/2006

Sufficient Conditions for Coarse-Graining Evolutionary Dynamics

It is commonly assumed that the ability to track the frequencies of a se...
research
12/06/2019

Quantitative genetic algorithms

Evolutionary algorithms, inspired by natural evolution, aim to optimize ...

Please sign up or login with your details

Forgot password? Click here to reset