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Uncrowded Hypervolume Improvement: COMO-CMA-ES and the Sofomore framework

18 April 2019
Cheikh Touré
N. Hansen
A. Auger
D. Brockhoff
ArXiv (abs)PDFHTML
Abstract

We present a framework to build a multiobjective algorithm from single-objective ones. This framework addresses the p×np \times np×n-dimensional problem of finding p solutions in an n-dimensional search space, maximizing an indicator by dynamic subspace optimization. Each single-objective algorithm optimizes the indicator function given p−1p - 1p−1 fixed solutions. Crucially, dominated solutions minimize their distance to the empirical Pareto front defined by these p−1p - 1p−1 solutions. We instantiate the framework with CMA-ES as single-objective optimizer. The new algorithm, COMO-CMA-ES, is empirically shown to converge linearly on bi-objective convex-quadratic problems and is compared to MO-CMA-ES, NSGA-II and SMS-EMOA.

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