Abstract
AbstractWe introduce novel concepts to solve multiobjective optimization problems involving (computationally) expensive function evaluations and propose a new interactive method called O-NAUTILUS. It combines ideas of trade-off free search and navigation (where a decision maker sees changes in objective function values in real time) and extends the NAUTILUS Navigator method to surrogate-assisted optimization. Importantly, it utilizes uncertainty quantification from surrogate models like Kriging or properties like Lipschitz continuity to approximate a so-called optimistic Pareto optimal set. This enables the decision maker to search in unexplored parts of the Pareto optimal set and requires a small amount of expensive function evaluations. We share the implementation of O-NAUTILUS as open source code. Thanks to its graphical user interface, a decision maker can see in real time how the preferences provided affect the direction of the search. We demonstrate the potential and benefits of O-NAUTILUS with a problem related to the design of vehicles.
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Management Science and Operations Research,Control and Optimization,Computer Science Applications,Business, Management and Accounting (miscellaneous)
Reference48 articles.
1. Afsar, B., Miettinen, K., Ruiz, F.: Assessing the performance of interactive multiobjective optimization methods: a survey. ACM Comput. Surv. 54(4), 85 (2021)
2. Audet, C.: A Survey on Direct Search Methods for Blackbox Optimization and Their Applications. In: Pardalos, P.M., Rassias, T.M. (eds.) Mathematics without boundaries, vol. 2, pp. 31–56. Springer, Berlin (2014)
3. Aytuğ, H., Sayın, S.: Using support vector machines to learn the efficient set in multiple objective discrete optimization. Eur. J. Oper. Res. 193(2), 510–519 (2009)
4. Buchanan, J.T., Corner, J.: The effects of anchoring in interactive MCDM solution methods. Comput. Oper. Res. 24(10), 907–918 (1997)
5. Cheng, R., Jin, Y., Olhofer, M., Sendhoff, B.: A reference vector guided evolutionary algorithm for many-objective optimization. IEEE Trans. Evol. Comput. 20(5), 773–791 (2016)
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