The Challenge of Optimizing Expensive Black Boxes: A Scatter Search / Rough
Set Theory Approach
M. Laguna, J. Molina, F. Pérez, R. Caballero and A.
Hernández-Díaz
To appear in the Journal of the Operational Research Society

Abstract
There is renewed interest in the development of
effective and efficient methods for optimizing models of which
the optimizer has no structural knowledge. This is what in the
literature is referred to as optimization of black boxes. In
particular, we address the challenge of optimizing expensive
black boxes, that is, those that require a significant
computational effort to be evaluated. We describe the use of
rough set theory within a scatter search framework with the goal
of identifying high-quality solutions with a limited number of
objective function evaluations. The rough set strategies that
we developed take advantage of the information provided by the
best and diverse solutions found during the search in order to
define areas of the solution space that are promising for search
intensification. We test our procedure on a set of 92 nonlinear
multimodal functions of varied complexity and size and compare
the results with a state-of-the-art procedure based on Particle
Swarm Optimization.

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