BCMA-ES: A Bayesian Approach to CMA-ES
A.I Square Working Paper, March 2019, France
10 Pages Posted: 6 May 2019
Date Written: March 3, 2019
Abstract
This paper introduces a novel theoretically sound approach for the celebrated CMA-ES algorithm. Assuming the parameters of the multi variate normal distribution for the minimum follow a conjugate prior distribution, we derive their optimal update at each iteration step. Not only provides this Bayesian framework a justification for the update of the CMA-ES algorithm but it also gives two new versions of CMA-ES either assuming normal-Wishart or normal-Inverse Wishart priors, depending whether we parametrize the likelihood by its covariance or precision matrix. We support our theoretical findings by numerical experiments that show fast convergence of these modified versions of CMA-ES.
Keywords: CMA-ES, Bayesian, Conjugate Prior, Normal-Inverse-Wishart
JEL Classification: C61, C11
Suggested Citation: Suggested Citation