A parallel implementation of the covariance matrix adaptation evolution strategy

05/28/2018
by   Najeeb Khan, et al.
0

In many practical optimization problems, the derivatives of the functions to be optimized are unavailable or unreliable. Such optimization problems are solved using derivative-free optimization techniques. One of the state-of-the-art techniques for derivative-free optimization is the covariance matrix adaptation evolution strategy (CMA-ES) algorithm. However, the complexity of CMA-ES algorithm makes it undesirable for tasks where fast optimization is needed. To reduce the execution time of CMA-ES, a parallel implementation is proposed, and its performance is analyzed using the benchmark problems in PythOPT optimization environment.

READ FULL TEXT
research
04/21/2014

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

We propose a computationally efficient limited memory Covariance Matrix ...
research
04/25/2016

CMA-ES for Hyperparameter Optimization of Deep Neural Networks

Hyperparameters of deep neural networks are often optimized by grid sear...
research
10/13/2015

A Multilevel Coordinate Search Algorithm for Well Placement, Control and Joint Optimization

Determining optimal well placements and controls are two important tasks...
research
08/18/2021

Structure Parameter Optimized Kernel Based Online Prediction with a Generalized Optimization Strategy for Nonstationary Time Series

In this paper, sparsification techniques aided online prediction algorit...
research
12/31/2017

ZOOpt/ZOOjl: Toolbox for Derivative-Free Optimization

Recent advances of derivative-free optimization allow efficient approxim...
research
06/15/2018

A Covariance Matrix Self-Adaptation Evolution Strategy for Optimization under Linear Constraints

This paper addresses the development of a covariance matrix self-adaptat...
research
10/11/2017

A Simple Yet Efficient Rank One Update for Covariance Matrix Adaptation

In this paper, we propose an efficient approximated rank one update for ...

Please sign up or login with your details

Forgot password? Click here to reset