OCD: Online Convergence Detection for Evolutionary Multi-Objective Algorithms Based on Statistical Testing
T. Wagner, H. Trautmann, B. Naujoks, in: M. Ehrgott, C.M. Fonseca, X. Gandibleux, J.-K. Hao, M. Sevaux (Eds.), Evolutionary Multi-Criterion Optimization, Springer Berlin Heidelberg, Berlin, Heidelberg, 2009, pp. 198–215.
Download
No fulltext has been uploaded.
Conference Paper
| English
Author
Wagner, Tobias;
Trautmann, HeikeLibreCat ;
Naujoks, Boris
Editor
Ehrgott, Matthias;
Fonseca, Carlos M.;
Gandibleux, Xavier;
Hao, Jin-Kao;
Sevaux, Marc
Abstract
Over the last decades, evolutionary algorithms (EA) have proven their applicability to hard and complex industrial optimization problems in many cases. However, especially in cases with high computational demands for fitness evaluations (FE), the number of required FE is often seen as a drawback of these techniques. This is partly due to lacking robust and reliable methods to determine convergence, which would stop the algorithm before useless evaluations are carried out. To overcome this drawback, we define a method for online convergence detection (OCD) based on statistical tests, which invokes a number of performance indicators and which can be applied on a stand-alone basis (no predefined Pareto fronts, ideal and reference points). Our experiments show the general applicability of OCD by analyzing its performance for different algorithmic setups and on different classes of test functions. Furthermore, we show that the number of FE can be reduced considerably – compared to common suggestions from literature – without significantly deteriorating approximation accuracy.
Publishing Year
Proceedings Title
Evolutionary Multi-Criterion Optimization
Page
198–215
ISBN
LibreCat-ID
Cite this
Wagner T, Trautmann H, Naujoks B. OCD: Online Convergence Detection for Evolutionary Multi-Objective Algorithms Based on Statistical Testing. In: Ehrgott M, Fonseca CM, Gandibleux X, Hao J-K, Sevaux M, eds. Evolutionary Multi-Criterion Optimization. Springer Berlin Heidelberg; 2009:198–215. doi:https://doi.org/10.1007/978-3-642-01020-0_19
Wagner, T., Trautmann, H., & Naujoks, B. (2009). OCD: Online Convergence Detection for Evolutionary Multi-Objective Algorithms Based on Statistical Testing. In M. Ehrgott, C. M. Fonseca, X. Gandibleux, J.-K. Hao, & M. Sevaux (Eds.), Evolutionary Multi-Criterion Optimization (pp. 198–215). Springer Berlin Heidelberg. https://doi.org/10.1007/978-3-642-01020-0_19
@inproceedings{Wagner_Trautmann_Naujoks_2009, place={Berlin, Heidelberg}, title={OCD: Online Convergence Detection for Evolutionary Multi-Objective Algorithms Based on Statistical Testing}, DOI={https://doi.org/10.1007/978-3-642-01020-0_19}, booktitle={Evolutionary Multi-Criterion Optimization}, publisher={Springer Berlin Heidelberg}, author={Wagner, Tobias and Trautmann, Heike and Naujoks, Boris}, editor={Ehrgott, Matthias and Fonseca, Carlos M. and Gandibleux, Xavier and Hao, Jin-Kao and Sevaux, Marc}, year={2009}, pages={198–215} }
Wagner, Tobias, Heike Trautmann, and Boris Naujoks. “OCD: Online Convergence Detection for Evolutionary Multi-Objective Algorithms Based on Statistical Testing.” In Evolutionary Multi-Criterion Optimization, edited by Matthias Ehrgott, Carlos M. Fonseca, Xavier Gandibleux, Jin-Kao Hao, and Marc Sevaux, 198–215. Berlin, Heidelberg: Springer Berlin Heidelberg, 2009. https://doi.org/10.1007/978-3-642-01020-0_19.
T. Wagner, H. Trautmann, and B. Naujoks, “OCD: Online Convergence Detection for Evolutionary Multi-Objective Algorithms Based on Statistical Testing,” in Evolutionary Multi-Criterion Optimization, 2009, pp. 198–215, doi: https://doi.org/10.1007/978-3-642-01020-0_19.
Wagner, Tobias, et al. “OCD: Online Convergence Detection for Evolutionary Multi-Objective Algorithms Based on Statistical Testing.” Evolutionary Multi-Criterion Optimization, edited by Matthias Ehrgott et al., Springer Berlin Heidelberg, 2009, pp. 198–215, doi:https://doi.org/10.1007/978-3-642-01020-0_19.