We describe a parameter-free estimation-of-distribution algorithm (EDA) called the adapted maximum-likelihood Gaussian model iterated density-estimation evolutionary algorithm (AMaLGaM-IDEA, or AMaLGaM for short) for numerical optimization. AMaLGaM is benchmarked within the 2009 black box optimization benchmarking (BBOB) framework and compared to a variant with incremental model building (iAMaLGaM). We study the implications of factorizing the covariance matrix in the Gaussian distribution, to use only a few or no covariances. Further, AMaLGaM and iAMaLGaM are also evaluated on the noisy BBOB problems and we assess how well multiple evaluations per solution can average out noise. Experimental evidence suggests that parameter-free AMaLGaM ca...
Abstract: This paper summaries our recent work on combining estimation of distribution algorithms (E...
In the field of optimization using probabilistic models of the search space, this thesis identifies ...
International audienceWe show complexity bounds for noisy optimization, in frame- works in which noi...
We describe a parameter-free estimation-of-distribution algorithm (EDA) called the adapted maximum-l...
This paper describes the application of a Gaussian Estimation-of-Distribution (EDA) for real-valued ...
This article focuses on numerical optimization with continuous Estimation-of-Distribution Algorithms...
We consider a scalable problem that has strong ties with real-world problems, can be compactly formu...
Often, Estimation-of-Distribution Algorithms (EDAs) are praised for their ability to optimize a broa...
textabstractEstimation-of-Distribution Algorithms (EDAs) have been applied with quite some success w...
Finding a large set of optima in a multimodal optimization landscape is a challenging task. Classica...
Estimation of Distribution Algorithms (EDAs) use global statistical information effectively to sampl...
This chapter serves as an introduction to estimation of distribution algorithms (EDAs). Estimation o...
Estimation-of-Distribution Algorithms (EDAs) build and use probabilistic models during optimization ...
This dissertation modifies several estimation distribution algorithms (EDAs) and implements them in ...
In this paper, we show how Estimation of Distribution Algorithms (EDAs) can be applied to the optimi...
Abstract: This paper summaries our recent work on combining estimation of distribution algorithms (E...
In the field of optimization using probabilistic models of the search space, this thesis identifies ...
International audienceWe show complexity bounds for noisy optimization, in frame- works in which noi...
We describe a parameter-free estimation-of-distribution algorithm (EDA) called the adapted maximum-l...
This paper describes the application of a Gaussian Estimation-of-Distribution (EDA) for real-valued ...
This article focuses on numerical optimization with continuous Estimation-of-Distribution Algorithms...
We consider a scalable problem that has strong ties with real-world problems, can be compactly formu...
Often, Estimation-of-Distribution Algorithms (EDAs) are praised for their ability to optimize a broa...
textabstractEstimation-of-Distribution Algorithms (EDAs) have been applied with quite some success w...
Finding a large set of optima in a multimodal optimization landscape is a challenging task. Classica...
Estimation of Distribution Algorithms (EDAs) use global statistical information effectively to sampl...
This chapter serves as an introduction to estimation of distribution algorithms (EDAs). Estimation o...
Estimation-of-Distribution Algorithms (EDAs) build and use probabilistic models during optimization ...
This dissertation modifies several estimation distribution algorithms (EDAs) and implements them in ...
In this paper, we show how Estimation of Distribution Algorithms (EDAs) can be applied to the optimi...
Abstract: This paper summaries our recent work on combining estimation of distribution algorithms (E...
In the field of optimization using probabilistic models of the search space, this thesis identifies ...
International audienceWe show complexity bounds for noisy optimization, in frame- works in which noi...