Estimation of distribution algorithms replace the typical crossover and mutation operators by constructing a probabilistic model and generating offspring according to this model. In previous studies, it has been shown that this generally leads to diversity loss due to sampling errors. In this paper, for the case of the simple Univariate Marginal Distribution Algorithm (UMDA), we propose and test several methods for counteracting diversity loss. The diversity loss can come in two phases: sampling from the probability model (offspring generation) and selection. We show that it is possible to completely remove the sampling error during offspring generation. Furthermore, we examine several plausible model construction variants which counteract ...
The aim of this thesis is to study the convergence properties of specific MCMC algorithms for sampli...
Model-building optimisation methods aim to learn the structure underlying a problem and exploit this...
Proceedings of: 3rd European Event on Bio-Inspired Algorithms for Continuous Parameter Optimisation ...
UMDA(the univariate marginal distribution algorithm) was derived by analyzing the mathematical princ...
The development of Estimation of Distribution Algorithms (EDAs) has largely been driven by using mor...
International audienceIn their recent work, Lehre and Nguyen (FOGA 2019) show that the univariate ma...
The role of the selection operation-that stochastically discriminate between individuals based on th...
International audienceWe propose a general formulation of a univariate estimationof-distribution alg...
probability models hold accumulating evidence on the location of an optimum. Stochastic sampling dri...
large scale global optimization (LSGO) problems is proposed in this paper. Three efficient strategie...
Abstract — Estimation of distribution algorithm (EDA) is a new class of evolutionary algorithms with...
We perform a stochastic analysis of evolutionary algorithms. The analysis centers on the question ho...
Estimation of Distribution Algorithms (EDAs) focus on explicitly modelling dependencies between solu...
AbstractThis paper presents a theoretical study of the behaviour of the univariate marginal distribu...
This work investigates the use of sampling methods in Genetic Programming (GP) to improve the classi...
The aim of this thesis is to study the convergence properties of specific MCMC algorithms for sampli...
Model-building optimisation methods aim to learn the structure underlying a problem and exploit this...
Proceedings of: 3rd European Event on Bio-Inspired Algorithms for Continuous Parameter Optimisation ...
UMDA(the univariate marginal distribution algorithm) was derived by analyzing the mathematical princ...
The development of Estimation of Distribution Algorithms (EDAs) has largely been driven by using mor...
International audienceIn their recent work, Lehre and Nguyen (FOGA 2019) show that the univariate ma...
The role of the selection operation-that stochastically discriminate between individuals based on th...
International audienceWe propose a general formulation of a univariate estimationof-distribution alg...
probability models hold accumulating evidence on the location of an optimum. Stochastic sampling dri...
large scale global optimization (LSGO) problems is proposed in this paper. Three efficient strategie...
Abstract — Estimation of distribution algorithm (EDA) is a new class of evolutionary algorithms with...
We perform a stochastic analysis of evolutionary algorithms. The analysis centers on the question ho...
Estimation of Distribution Algorithms (EDAs) focus on explicitly modelling dependencies between solu...
AbstractThis paper presents a theoretical study of the behaviour of the univariate marginal distribu...
This work investigates the use of sampling methods in Genetic Programming (GP) to improve the classi...
The aim of this thesis is to study the convergence properties of specific MCMC algorithms for sampli...
Model-building optimisation methods aim to learn the structure underlying a problem and exploit this...
Proceedings of: 3rd European Event on Bio-Inspired Algorithms for Continuous Parameter Optimisation ...