International audienceThis paper addresses the resolution, by Genetic Programming (GP) methods, of ambiguous inverse problems, where for a single input, many outputs can be expected. We propose two approaches to tackle this kind of many-to-one inversion problems, each of them based on the estimation, by a team of predictors, of a probability density of the expected outputs. In the first one, Stochastic Realisation GP, the predictors outputs are considered as the realisations of an unknown random variable which distribution should approach the expected one. The second one, Mixture Density GP, directly models the expected distribution by the mean of a Gaussian mixture model, for which genetic programming has to find the parameters. Encouragin...
The increasing computational power of modern computers has contributed to the advance of nature-insp...
This paper summaries our recent work on combining estimation of distribution algorithms (EDA) and ot...
Evolutionary Algorithms (EA) are search methods working iteratively on a population of potential sol...
International audienceThis paper addresses the resolution, by Genetic Programming (GP) methods, of a...
International audienceGenetic Programming (GP) has been shown to be a good method of predicting func...
In this thesis, we explore three techniques which could be used to increase the efficiency of analys...
Abstract Many real problems with uncertainties may often be formulated as Stochastic Programming Pro...
We propose a projection pursuit (PP) algorithm based on Gaussian mixture models (GMMs). The negentro...
This article presents an innovative framework regarding an inverse problem. One presents the extensi...
Inverse problems are omnipresent in natural and engineering sciences, for example, in material char...
This paper describes a genetic algorithm (GA) applied to combinational optimization problems in whic...
Minimization of a sum-of-squares or cross-entropy error function leads to network out-puts which app...
Genetic programming is a technique that can be used to tackle the hugely demanding data-processing p...
Abstract: This paper summaries our recent work on combining estimation of distribution algorithms (E...
This paper describes a probability based genetic programming (GP) approach to multiclass object clas...
The increasing computational power of modern computers has contributed to the advance of nature-insp...
This paper summaries our recent work on combining estimation of distribution algorithms (EDA) and ot...
Evolutionary Algorithms (EA) are search methods working iteratively on a population of potential sol...
International audienceThis paper addresses the resolution, by Genetic Programming (GP) methods, of a...
International audienceGenetic Programming (GP) has been shown to be a good method of predicting func...
In this thesis, we explore three techniques which could be used to increase the efficiency of analys...
Abstract Many real problems with uncertainties may often be formulated as Stochastic Programming Pro...
We propose a projection pursuit (PP) algorithm based on Gaussian mixture models (GMMs). The negentro...
This article presents an innovative framework regarding an inverse problem. One presents the extensi...
Inverse problems are omnipresent in natural and engineering sciences, for example, in material char...
This paper describes a genetic algorithm (GA) applied to combinational optimization problems in whic...
Minimization of a sum-of-squares or cross-entropy error function leads to network out-puts which app...
Genetic programming is a technique that can be used to tackle the hugely demanding data-processing p...
Abstract: This paper summaries our recent work on combining estimation of distribution algorithms (E...
This paper describes a probability based genetic programming (GP) approach to multiclass object clas...
The increasing computational power of modern computers has contributed to the advance of nature-insp...
This paper summaries our recent work on combining estimation of distribution algorithms (EDA) and ot...
Evolutionary Algorithms (EA) are search methods working iteratively on a population of potential sol...