Offspring Population Size Matters when Comparing Evolutionary Algorithms with Self-Adjusting Mutation Rates
April 17, 2019 ยท Declared Dead ยท ๐ Annual Conference on Genetic and Evolutionary Computation
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Authors
Anna Rodionova, Kirill Antonov, Arina Buzdalova, Carola Doerr
arXiv ID
1904.08032
Category
cs.NE: Neural & Evolutionary
Citations
13
Venue
Annual Conference on Genetic and Evolutionary Computation
Last Checked
4 months ago
Abstract
We analyze the performance of the 2-rate $(1+ฮป)$ Evolutionary Algorithm (EA) with self-adjusting mutation rate control, its 3-rate counterpart, and a $(1+ฮป)$~EA variant using multiplicative update rules on the OneMax problem. We compare their efficiency for offspring population sizes ranging up to $ฮป=3,200$ and problem sizes up to $n=100,000$. Our empirical results show that the ranking of the algorithms is very consistent across all tested dimensions, but strongly depends on the population size. While for small values of $ฮป$ the 2-rate EA performs best, the multiplicative updates become superior for starting for some threshold value of $ฮป$ between 50 and 100. Interestingly, for population sizes around 50, the $(1+ฮป)$~EA with static mutation rates performs on par with the best of the self-adjusting algorithms. We also consider how the lower bound $p_{\min}$ for the mutation rate influences the efficiency of the algorithms. We observe that for the 2-rate EA and the EA with multiplicative update rules the more generous bound $p_{\min}=1/n^2$ gives better results than $p_{\min}=1/n$ when $ฮป$ is small. For both algorithms the situation reverses for large~$ฮป$.
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