This paper describes the application of a Gaussian Estimation-of-Distribution (EDA) for real-valued optimization to the noiseless part of a benchmark introduced in 2009 called BBOB (Black-Box Optimization Benchmarking). Specifically, the EDA considered here is the recently introduced parameter-free version of the Adapted Maximum-Likelihood Gaussian Model Iterated Density-Estimation Evolutionary Algorithm (AMaLGaM-IDEA). Also the version with incremental model building (iAMaLGaM-IDEA) is considered
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
Research on new optimization algorithms is often funded based on the motivation that such algorithms...
This chapter serves as an introduction to estimation of distribution algorithms (EDAs). Estimation o...
This paper describes the application of a Gaussian Estimation-of-Distribution (EDA) for real-valued ...
Estimation-of-distribution algorithms (EDAs) are optimization algorithms at the frontier of genetic-...
This paper presents experimental results for the BayEDAcG continuous optimization algorithm on the B...
This article focuses on numerical optimization with continuous Estimation-of-Distribution Algorithms...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
We consider a scalable problem that has strong ties with real-world problems, can be compactly formu...
textabstractEstimation-of-Distribution Algorithms (EDAs) have been applied with quite some success w...
Often, Estimation-of-Distribution Algorithms (EDAs) are praised for their ability to optimize a broa...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
Research on new optimization algorithms is often funded based on the motivation that such algorithms...
This chapter serves as an introduction to estimation of distribution algorithms (EDAs). Estimation o...
This paper describes the application of a Gaussian Estimation-of-Distribution (EDA) for real-valued ...
Estimation-of-distribution algorithms (EDAs) are optimization algorithms at the frontier of genetic-...
This paper presents experimental results for the BayEDAcG continuous optimization algorithm on the B...
This article focuses on numerical optimization with continuous Estimation-of-Distribution Algorithms...
Quantifying and comparing performance of optimization algorithms is one important aspect of research...
We consider a scalable problem that has strong ties with real-world problems, can be compactly formu...
textabstractEstimation-of-Distribution Algorithms (EDAs) have been applied with quite some success w...
Often, Estimation-of-Distribution Algorithms (EDAs) are praised for their ability to optimize a broa...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
Research on new optimization algorithms is often funded based on the motivation that such algorithms...
This chapter serves as an introduction to estimation of distribution algorithms (EDAs). Estimation o...