Precise Runtime Analysis for Plateau Functions
June 04, 2018 ยท Declared Dead ยท ๐ ACM Transactions on Evolutionary Learning and Optimization
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Authors
Denis Antipov, Benjamin Doerr
arXiv ID
1806.01331
Category
cs.NE: Neural & Evolutionary
Citations
9
Venue
ACM Transactions on Evolutionary Learning and Optimization
Last Checked
4 months ago
Abstract
To gain a better theoretical understanding of how evolutionary algorithms (EAs) cope with plateaus of constant fitness, we propose the $n$-dimensional Plateau$_k$ function as natural benchmark and analyze how different variants of the $(1 + 1)$ EA optimize it. The Plateau$_k$ function has a plateau of second-best fitness in a ball of radius $k$ around the optimum. As evolutionary algorithm, we regard the $(1 + 1)$ EA using an arbitrary unbiased mutation operator. Denoting by $ฮฑ$ the random number of bits flipped in an application of this operator and assuming that $\Pr[ฮฑ= 1]$ has at least some small sub-constant value, we show the surprising result that for all constant $k \ge 2$, the runtime $T$ follows a distribution close to the geometric one with success probability equal to the probability to flip between $1$ and $k$ bits divided by the size of the plateau. Consequently, the expected runtime is the inverse of this number, and thus only depends on the probability to flip between $1$ and $k$ bits, but not on other characteristics of the mutation operator. Our result also implies that the optimal mutation rate for standard bit mutation here is approximately $k/(en)$. Our main analysis tool is a combined analysis of the Markov chains on the search point space and on the Hamming level space, an approach that promises to be useful also for other plateau problems.
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