In this paper we focus on the problem of using a genetic algorithm for model selection within a Bayesian framework. We propose to reduce the model selection problem to a search problem solved using evolutionary computation to explore a posterior distribution over the model space. As a case study, we introduce ELeaRNT (Evolutionary Learning of Rich Neural Network Topologies), a genetic algorithm which evolves a particular class of models, namely, Rich Neural Networks (RNN), in order to find an optimal domain-specific non-linear function approximator with a good generalization capability. In order to evolve this kind of neural networks, ELeaRNT uses a Bayesian fitness function. The experimental results prove that ELeaRNT using a Bayesian fitn...
Once the design of Artificial Neural Networks (ANN) may require the optimization of numerical and st...
In this paper we perform a comparison among FSS–EBNA, a randomized, population-based and evolutionar...
Chapter 22International audienceBayesian networks are stochastic models, widely adopted to encode kn...
In this paper we report an evolutionary approach to learning Bayesian networks from data. We explain...
AbstractIn this paper we present ELeaRNT, an evolutionary strategy which evolves rich neural network...
AbstractEvolutionary theory states that stronger genetic characteristics reflect the organism’s abil...
We shortly review our theoretical analysis of genetic algorithms and provide some new results. The t...
International audienceThis paper describes two approaches based on evolutionary algorithms for deter...
International audienceThis paper describes two approaches based on evolutionary algorithms for deter...
Evolutionary computation is a discipline that has been emerging for at least 40 or 50 years. All met...
AbstractTo solve a wide range of different problems, the research in black-box optimization faces se...
In recent years, deep convolutional neural networks (DCNNs) have delivered notable successes in visu...
Bayesian networks are stochastic models, widely adopted to encode knowledge in several fields. One o...
In this paper we perform a comparison among FSS–EBNA, a randomized, population-based and evolutionar...
AbstractA new method for Feature Subset Selection in machine learning, FSS-EBNA (Feature Subset Sele...
Once the design of Artificial Neural Networks (ANN) may require the optimization of numerical and st...
In this paper we perform a comparison among FSS–EBNA, a randomized, population-based and evolutionar...
Chapter 22International audienceBayesian networks are stochastic models, widely adopted to encode kn...
In this paper we report an evolutionary approach to learning Bayesian networks from data. We explain...
AbstractIn this paper we present ELeaRNT, an evolutionary strategy which evolves rich neural network...
AbstractEvolutionary theory states that stronger genetic characteristics reflect the organism’s abil...
We shortly review our theoretical analysis of genetic algorithms and provide some new results. The t...
International audienceThis paper describes two approaches based on evolutionary algorithms for deter...
International audienceThis paper describes two approaches based on evolutionary algorithms for deter...
Evolutionary computation is a discipline that has been emerging for at least 40 or 50 years. All met...
AbstractTo solve a wide range of different problems, the research in black-box optimization faces se...
In recent years, deep convolutional neural networks (DCNNs) have delivered notable successes in visu...
Bayesian networks are stochastic models, widely adopted to encode knowledge in several fields. One o...
In this paper we perform a comparison among FSS–EBNA, a randomized, population-based and evolutionar...
AbstractA new method for Feature Subset Selection in machine learning, FSS-EBNA (Feature Subset Sele...
Once the design of Artificial Neural Networks (ANN) may require the optimization of numerical and st...
In this paper we perform a comparison among FSS–EBNA, a randomized, population-based and evolutionar...
Chapter 22International audienceBayesian networks are stochastic models, widely adopted to encode kn...