A Computationally Efficient Limited Memory CMA-ES for Large Scale Optimization

Abstract

We propose a computationally efficient limited memory Covariance Matrix Adaptation Evolution Strategy for large scale optimization, which we call the LM-CMA-ES. The LM-CMA-ES is a stochastic, derivative-free algorithm for numerical optimization of non-linear, non-convex optimization problems in continuous domain. Inspired by the limited memory BFGS method of Liu and Nocedal (1989), the LM-CMA-ES samples candidate solutions according to a covariance matrix reproduced from m direction vectors selected during the optimization process. The decomposition of the covariance matrix into Cholesky factors allows to reduce the time and memory complexity of the sampling to O(mn), where n is the number of decision variables. When n is large (e.g., n > 1000), even relatively small values of m (e.g., m=20,30) are sufficient to efficiently solve fully non-separable problems and to reduce the overall run-time.

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