The Compact Genetic Algorithm Struggles on Cliff Functions

April 11, 2022 ยท Declared Dead ยท ๐Ÿ› Algorithmica

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Authors Frank Neumann, Dirk Sudholt, Carsten Witt arXiv ID 2204.04904 Category cs.NE: Neural & Evolutionary Citations 9 Venue Algorithmica Last Checked 4 months ago
Abstract
The compact genetic algorithm (cGA) is an non-elitist estimation of distribution algorithm which has shown to be able to deal with difficult multimodal fitness landscapes that are hard to solve by elitist algorithms. In this paper, we investigate the cGA on the CLIFF function for which it has been shown recently that non-elitist evolutionary algorithms and artificial immune systems optimize it in expected polynomial time. We point out that the cGA faces major difficulties when solving the CLIFF function and investigate its dynamics both experimentally and theoretically around the cliff. Our experimental results indicate that the cGA requires exponential time for all values of the update strength $K$. We show theoretically that, under sensible assumptions, there is a negative drift when sampling around the location of the cliff. Experiments further suggest that there is a phase transition for $K$ where the expected optimization time drops from $n^{ฮ˜(n)}$ to $2^{ฮ˜(n)}$.
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