Statistical Methods for Convergence Detection of Multi-Objective Evolutionary Algorithms

H. Trautmann, T. Wagner, B. Naujoks, M. Preuss, J. Mehnen, Evolutionary Computation 17 (2009) 493–509.

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Journal Article | English
Author
Trautmann, HeikeLibreCat ; Wagner, T.; Naujoks, B.; Preuss, M.; Mehnen, J.
Abstract
In this paper, two approaches for estimating the generation in which a multi-objective evolutionary algorithm (MOEA) shows statistically significant signs of convergence are introduced. A set-based perspective is taken where convergence is measured by performance indicators. The proposed techniques fulfill the requirements of proper statistical assessment on the one hand and efficient optimisation for real-world problems on the other hand. The first approach accounts for the stochastic nature of the MOEA by repeating the optimisation runs for increasing generation numbers and analysing the performance indicators using statistical tools. This technique results in a very robust offline procedure. Moreover, an online convergence detection method is introduced as well. This method automatically stops the MOEA when either the variance of the performance indicators falls below a specified threshold or a stagnation of their overall trend is detected. Both methods are analysed and compared for two MOEA and on different classes of benchmark functions. It is shown that the methods successfully operate on all stated problems needing less function evaluations while preserving good approximation quality at the same time.
Publishing Year
Journal Title
Evolutionary Computation
Volume
17
Issue
4
Page
493-509
ISSN
LibreCat-ID

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Trautmann H, Wagner T, Naujoks B, Preuss M, Mehnen J. Statistical Methods for Convergence Detection of Multi-Objective Evolutionary Algorithms. Evolutionary Computation. 2009;17(4):493-509. doi:10.1162/evco.2009.17.4.17403
Trautmann, H., Wagner, T., Naujoks, B., Preuss, M., & Mehnen, J. (2009). Statistical Methods for Convergence Detection of Multi-Objective Evolutionary Algorithms. Evolutionary Computation, 17(4), 493–509. https://doi.org/10.1162/evco.2009.17.4.17403
@article{Trautmann_Wagner_Naujoks_Preuss_Mehnen_2009, title={Statistical Methods for Convergence Detection of Multi-Objective Evolutionary Algorithms}, volume={17}, DOI={10.1162/evco.2009.17.4.17403}, number={4}, journal={Evolutionary Computation}, author={Trautmann, Heike and Wagner, T. and Naujoks, B. and Preuss, M. and Mehnen, J.}, year={2009}, pages={493–509} }
Trautmann, Heike, T. Wagner, B. Naujoks, M. Preuss, and J. Mehnen. “Statistical Methods for Convergence Detection of Multi-Objective Evolutionary Algorithms.” Evolutionary Computation 17, no. 4 (2009): 493–509. https://doi.org/10.1162/evco.2009.17.4.17403.
H. Trautmann, T. Wagner, B. Naujoks, M. Preuss, and J. Mehnen, “Statistical Methods for Convergence Detection of Multi-Objective Evolutionary Algorithms,” Evolutionary Computation, vol. 17, no. 4, pp. 493–509, 2009, doi: 10.1162/evco.2009.17.4.17403.
Trautmann, Heike, et al. “Statistical Methods for Convergence Detection of Multi-Objective Evolutionary Algorithms.” Evolutionary Computation, vol. 17, no. 4, 2009, pp. 493–509, doi:10.1162/evco.2009.17.4.17403.

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