about
Applied computational techniques on schizophrenia using genetic mutations.Automated early detection of drops in commercial egg production using neural networks.Automatic seizure detection based on star graph topological indices.Epileptic seizure detection using multiwavelet transform based approximate entropy and artificial neural networks.Automatic epileptic seizure detection in EEGs based on line length feature and artificial neural networks.A new approach to the extraction of ANN rules and to their generalization capacity through GP.Automatic feature extraction using genetic programming: An application to epileptic EEG classificationClassification of signals by means of Genetic ProgrammingClustering of Gene Expression Profiles Applied to Marine ResearchApproach of Genetic Algorithms with Grouping into Species Optimized with Predator-Prey Method for Solving Multimodal ProblemsUsing genetic algorithms and k-nearest neighbour for automatic frequency band selection for signal classificationA new signal classification technique by means of Genetic Algorithms and kNNArtificial Cells for Information Processing: Iris ClassificationUsing recurrent ANNs for the detection of epileptic seizures in EEG signalsDatabase Analysis with ANNs by means of Graph EvolutionGeneration and simplification of Artificial Neural Networks by means of Genetic ProgrammingA Genetic Algorithm for ANN Design, Training and SimplificationEvolving simple feed-forward and recurrent ANNs for signal classification: A comparisonModifying genetic programming for artificial neural network development for data miningUsing genetic algorithms for automatic recurrent ANN development: an application to EEG signal classificationGenetic Programming for Prediction of Water Flow and Transport of Solids in a BasinA Soft Computing OverviewClassification of EEG signals using relative wavelet energy and artificial neural networksUsing Genetic Programming to Extract Knowledge from Artificial Neural NetworksDetermination of the unit hydrograph of a typical urban basin using genetic programming and artificial neural networksUsing Genetic Programming to Extract Knowledge from Artificial Neural NetworksA Public Domain Dataset for Real-Life Human Activity Recognition Using Smartphone Sensors
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P50
description
hulumtues
@sq
researcher
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wetenschapper
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հետազոտող
@hy
name
Daniel Rivero
@ast
Daniel Rivero
@en
Daniel Rivero
@es
Daniel Rivero
@nl
Daniel Rivero
@sl
type
label
Daniel Rivero
@ast
Daniel Rivero
@en
Daniel Rivero
@es
Daniel Rivero
@nl
Daniel Rivero
@sl
prefLabel
Daniel Rivero
@ast
Daniel Rivero
@en
Daniel Rivero
@es
Daniel Rivero
@nl
Daniel Rivero
@sl
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P1153
6603716776
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P2456
P31
P496
0000-0001-8245-3094