Covariance Matrix Adaptation for Multi-objective Optimization
Ruhr University Bochum · ETH Zurich
Abstract
The covariance matrix adaptation evolution strategy (CMA-ES) is one of the most powerful evolutionary algorithms for real-valued single-objective optimization. In this paper, we develop a variant of the CMA-ES for multi-objective optimization (MOO). We first introduce a single-objective, elitist CMA-ES using plus-selection and step size control based on a success rule. This algorithm is compared to the standard CMA-ES. The elitist CMA-ES turns out to be slightly faster on unimodal functions, but is more prone to getting stuck in sub-optimal local minima. In the new multi-objective CMAES (MO-CMA-ES) a population of individuals that adapt their search strategy as in the elitist CMA-ES is maintained. These are…
Citation impact
- FWCI
- 32.90
- Percentile
- 100%
- References
- 38
Authors
3Topics & keywords
- CMA-ES
- Sorting
- Mathematical optimization
- Evolution strategy
- Differential evolution
- Evolutionary algorithm
- Mathematics
- Selection (genetic algorithm)