A Simple Indicator Based Evolutionary Algorithm for Set-Based Minmax Robustness
Zhou-Kangas, Y., & Miettinen, K. (2018). A Simple Indicator Based Evolutionary Algorithm for Set-Based Minmax Robustness. In A. Auger, C. M. Fonseca, N. Lourenço, P. Machado, L. Paquete, & D. Whitley (Eds.), Parallel Problem Solving from Nature - PPSN XV : 15th International Conference, Coimbra, Portugal, September 8–12, 2018, Proceedings, Part 1 (pp. 287-297). Springer. Lecture Notes in Computer Science, 11101. https://doi.org/10.1007/978-3-319-99253-2_23
Julkaistu sarjassa
Lecture Notes in Computer ScienceToimittajat
Päivämäärä
2018Tekijänoikeudet
© Springer Nature 2018
For multiobjective optimization problems with uncertain parameters
in the objective functions, different variants of minmax robustness
concepts have been defined in the literature. The idea of minmax robustness
is to optimize in the worst case such that the solutions have the
best objective function values even when the worst case happens. However,
the computation of the minmax robust Pareto optimal solutions
remains challenging. This paper proposes a simple indicator based evolutionary
algorithm for robustness (SIBEA-R) to address this challenge
by computing a set of non-dominated set-based minmax robust solutions.
In SIBEA-R, we consider the set of objective function values in the worst
case of each solution. We propose a set-based non-dominated sorting to
compare the objective function values using the definition of lower set
less order for set-based dominance. We illustrate the usage of SIBEA-R
with two example problems. In addition, utilization of the computed set
of solutions with SIBEA-R for decision making is also demonstrated. The
SIBEA-R method shows significant promise for finding non-dominated
set-based minmax robust solutions.
...
Julkaisija
SpringerEmojulkaisun ISBN
978-3-319-99252-5Konferenssi
International Conference on Parallel Problem Solving From NatureKuuluu julkaisuun
Parallel Problem Solving from Nature - PPSN XV : 15th International Conference, Coimbra, Portugal, September 8–12, 2018, Proceedings, Part 1ISSN Hae Julkaisufoorumista
0302-9743Asiasanat
Julkaisu tutkimustietojärjestelmässä
https://converis.jyu.fi/converis/portal/detail/Publication/28273787
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