CMA-ES with restarts for solving CEC 2013 benchmark problems
I Loshchilov - 2013 IEEE Congress on Evolutionary …, 2013 - ieeexplore.ieee.org
2013 IEEE Congress on Evolutionary Computation, 2013•ieeexplore.ieee.org
This paper investigates the performance of 6 versions of Covariance Matrix Adaptation
Evolution Strategy (CMAES) with restarts on a set of 28 noiseless optimization problems
(including 23 multi-modal ones) designed for the special session on real-parameter
optimization of CEC 2013. The experimental validation of the restart strategies shows that: i).
the versions of CMA-ES with weighted active covariance matrix update outperform the
original versions of CMA-ES, especially on ill-conditioned problems; ii). the original restart …
Evolution Strategy (CMAES) with restarts on a set of 28 noiseless optimization problems
(including 23 multi-modal ones) designed for the special session on real-parameter
optimization of CEC 2013. The experimental validation of the restart strategies shows that: i).
the versions of CMA-ES with weighted active covariance matrix update outperform the
original versions of CMA-ES, especially on ill-conditioned problems; ii). the original restart …
This paper investigates the performance of 6 versions of Covariance Matrix Adaptation Evolution Strategy (CMAES) with restarts on a set of 28 noiseless optimization problems (including 23 multi-modal ones) designed for the special session on real-parameter optimization of CEC 2013. The experimental validation of the restart strategies shows that: i). the versions of CMA-ES with weighted active covariance matrix update outperform the original versions of CMA-ES, especially on ill-conditioned problems; ii). the original restart strategies with increasing population size (IPOP) are usually outperformed by the bi-population restart strategies where the initial mutation stepsize is also varied; iii). the recently proposed alternative restart strategies for CMA-ES demonstrate a competitive performance and are ranked first w.r.t. the proportion of function-target pairs solved after the full run on all 10-, 30- and 50-dimensional problems.
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