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Balanced simplicity–accuracy neural network model families for system identification

Hector M. Romero Ugalde, Jean-Claude Carmona, Juan Reyes‐Reyes, Víctor M. Alvarado, Christophe Corbier

Year
2014
Citations
27

Keywords

Computer scienceArtificial neural networkBenchmark (surveying)System identificationIdentification (biology)Nonlinear systemArtificial intelligenceReduction (mathematics)Machine learningAlgorithm

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