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Conference paper · Preprint article

The (1+λ) evolutionary algorithm with self-adjusting mutation rate

In Proceedings of 2017 Genetic and Evolutionary Computation Conference — 2017, pp. 1351-1358
From

École polytechnique1

Department of Applied Mathematics and Computer Science, Technical University of Denmark2

Algorithms and Logic, Department of Applied Mathematics and Computer Science, Technical University of Denmark3

We propose a new way to self-adjust the mutation rate in population-based evolutionary algorithms. Roughly speaking, it consists of creating half the offspring with a mutation rate that is twice the current mutation rate and the other half with half the current rate. The mutation rate is then updated to the rate used in that subpopulation which contains the best offspring.

We analyze how the (1 + A) evolutionary algorithm with this self-adjusting mutation rate optimizes the OneMax test function. We prove that this dynamic version of the (1 + A) EA finds the optimum in an expected optimization time (number of fitness evaluations) of O(nA/log A + n log n). This time is asymptotically smaller than the optimization time of the classic (1 + A) EA.

Previous work shows that this performance is best-possible among all A-parallel mutation-based unbiased black-box algorithms. This result shows that the new way of adjusting the mutation rate can find optimal dynamic parameter values on the fly. Since our adjustment mechanism is simpler than the ones previously used for adjusting the mutation rate and does not have parameters itself, we are optimistic that it will find other applications.

Language: English
Publisher: Association for Computing Machinery
Year: 2017
Pages: 1351-1358
Proceedings: 2017 Genetic and Evolutionary Computation Conference
ISBN: 145034920X , 145034920x and 9781450349208
Types: Conference paper and Preprint article
DOI: 10.1145/3071178.3071279
ORCIDs: Witt, Carsten

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