UMDA(the univariate marginal distribution algorithm) was derived by analyzing the mathematical principles behind recombination. Mutation, however, was not considered. The same is true for the FDA (factorized distribution algorithm), an extension of the UMDA which can cover dependencies between variables. In this paper mutation is introduced into these algorithms by a technique called Bayesian prior. We derive theoretically an estimate how to choose the Bayesian prior. The recommended Bayesian prior turns out to be a good choice in a number of experiments. These experiments also indicate that mutation increases in many cases the performance of the algorithms and decreases the dependence on a good choice of the population size
Purpose The growing size of public variant repositories prompted us to test the accuracy of pathoge...
Longitudinal allele frequency data are becoming increasingly prevalent. Such samples permit statisti...
The Bayesian approach to model selection allows for uncertainty in both model spe-cific parameters a...
We perform a stochastic analysis of evolutionary algorithms. The analysis centers on the question ho...
AbstractEstimation of distribution algorithms (EDAs) constitute a new branch of evolutionary optimiz...
Estimation of distribution algorithms replace the typical crossover and mutation operators by constr...
© 2015 IEEE. Recent developments in the field of gene sequencing technology greatly accelerated disc...
The estimation of mutation rates is ordinarily performed using results based on the Luria-Delbrück d...
Bayes factors (BFs) are becoming increasingly important tools in genetic association studies, partly...
Determining the distribution of adaptive mutations available to natural selection is a difficult tas...
Mendelian randomization is the use of genetic variants as instruments to assess the existence of a c...
Abstract Background Samples of molecular sequence data of a locus obtained from random individuals i...
We present a statistical model and methodology for making inferences about mutation rates from pater...
The paper represents the approach to evolutionary analogue circuit design on the base of the univari...
We will develop three new Bayesian nonparametric models for genetic variation. These models are all ...
Purpose The growing size of public variant repositories prompted us to test the accuracy of pathoge...
Longitudinal allele frequency data are becoming increasingly prevalent. Such samples permit statisti...
The Bayesian approach to model selection allows for uncertainty in both model spe-cific parameters a...
We perform a stochastic analysis of evolutionary algorithms. The analysis centers on the question ho...
AbstractEstimation of distribution algorithms (EDAs) constitute a new branch of evolutionary optimiz...
Estimation of distribution algorithms replace the typical crossover and mutation operators by constr...
© 2015 IEEE. Recent developments in the field of gene sequencing technology greatly accelerated disc...
The estimation of mutation rates is ordinarily performed using results based on the Luria-Delbrück d...
Bayes factors (BFs) are becoming increasingly important tools in genetic association studies, partly...
Determining the distribution of adaptive mutations available to natural selection is a difficult tas...
Mendelian randomization is the use of genetic variants as instruments to assess the existence of a c...
Abstract Background Samples of molecular sequence data of a locus obtained from random individuals i...
We present a statistical model and methodology for making inferences about mutation rates from pater...
The paper represents the approach to evolutionary analogue circuit design on the base of the univari...
We will develop three new Bayesian nonparametric models for genetic variation. These models are all ...
Purpose The growing size of public variant repositories prompted us to test the accuracy of pathoge...
Longitudinal allele frequency data are becoming increasingly prevalent. Such samples permit statisti...
The Bayesian approach to model selection allows for uncertainty in both model spe-cific parameters a...