Self-Adjusting Mutation Rates with Provably Optimal Success Rules
February 07, 2019 ยท Declared Dead ยท ๐ Algorithmica
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Authors
Benjamin Doerr, Carola Doerr, Johannes Lengler
arXiv ID
1902.02588
Category
cs.NE: Neural & Evolutionary
Citations
60
Venue
Algorithmica
Last Checked
3 months ago
Abstract
The one-fifth success rule is one of the best-known and most widely accepted techniques to control the parameters of evolutionary algorithms. While it is often applied in the literal sense, a common interpretation sees the one-fifth success rule as a family of success-based updated rules that are determined by an update strength $F$ and a success rate. We analyze in this work how the performance of the (1+1) Evolutionary Algorithm on LeadingOnes depends on these two hyper-parameters. Our main result shows that the best performance is obtained for small update strengths $F=1+o(1)$ and success rate $1/e$. We also prove that the running time obtained by this parameter setting is, apart from lower order terms, the same that is achieved with the best fitness-dependent mutation rate. We show similar results for the resampling variant of the (1+1) Evolutionary Algorithm, which enforces to flip at least one bit per iteration.
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