Averaged Hausdorff Approximations of Pareto Fronts based on Multiobjective Estimation of Distribution Algorithms

March 26, 2015 Β· Declared Dead Β· πŸ› Annual Conference on Genetic and Evolutionary Computation

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Authors Luis Marti, Christian Grimme, Pascal Kerschke, Heike Trautmann, GΓΌnter Rudolph arXiv ID 1503.07845 Category cs.AI: Artificial Intelligence Citations 5 Venue Annual Conference on Genetic and Evolutionary Computation Last Checked 3 months ago
Abstract
In the a posteriori approach of multiobjective optimization the Pareto front is approximated by a finite set of solutions in the objective space. The quality of the approximation can be measured by different indicators that take into account the approximation's closeness to the Pareto front and its distribution along the Pareto front. In particular, the averaged Hausdorff indicator prefers an almost uniform distribution. An observed drawback of multiobjective estimation of distribution algorithms (MEDAs) is that - as common for randomized metaheuristics - the final population usually is not uniformly distributed along the Pareto front. Therefore, we propose a postprocessing strategy which consists of applying the averaged Hausdorff indicator to the complete archive of generated solutions after optimization in order to select a uniformly distributed subset of nondominated solutions from the archive. In this paper, we put forward a strategy for extracting the above described subset. The effectiveness of the proposal is contrasted in a series of experiments that involve different MEDAs and filtering techniques.
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