Title
Self-Adaptation in Nonelitist Evolutionary Algorithms on Discrete Problems With Unknown Structure
Abstract
A key challenge to make effective use of evolutionary algorithms (EAs) is to choose appropriate settings for their parameters. However, the appropriate parameter setting generally depends on the structure of the optimization problem, which is often unknown to the user. Nondeterministic parameter control mechanisms adjust parameters using information obtained from the evolutionary process. Self-adaptation-where parameter settings are encoded in the chromosomes of individuals and evolve through mutation and crossover-is a popular parameter control mechanism in evolutionary strategies. However, there is little theoretical evidence that self-adaptation is effective, and self-adaptation has largely been ignored by the discrete evolutionary computation community. Here, we show through a theoretical runtime analysis that a nonelitist, discrete EA which self-adapts its mutation rate not only outperforms EAs which use static mutation rates on LEADINGONESk but also improves asymptotically on an EA using a state-of-the-art control mechanism. The structure of this problem depends on a parameter k, which is a priori unknown to the algorithm, and which is needed to appropriately set a fixed mutation rate. The self-adaptive EA achieves the same asymptotic runtime as if this parameter was known to the algorithm beforehand, which is an asymptotic speedup for this problem compared to all other EAs previously studied. An experimental study of how the mutation-rates evolve show that they respond adequately to a diverse range of problem structures. These results suggest that self-adaptation should be adopted more broadly as a parameter control mechanism in discrete, nonelitist EAs.
Year
DOI
Venue
2020
10.1109/TEVC.2020.2985450
IEEE Transactions on Evolutionary Computation
Keywords
DocType
Volume
Evolutionary algorithm (EA),level-based analysis,runtime analysis,self-adaptation
Journal
24
Issue
ISSN
Citations 
4
1089-778X
0
PageRank 
References 
Authors
0.34
22
2
Name
Order
Citations
PageRank
Brendan Case100.34
Per Kristian Lehre262742.60