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Artificial Neural Network Training Criterion Formulation Using Error Continuous Domain

Zhengbing Hu, Mykhailo Ivashchenko, Lesya Lyushenko, Dmytro Klyushnyk

2021International Journal of Modern Education and Computer Science52 citationsDOIOpen Access PDF

Abstract

One of the trends in information technologies is implementing neural networks in modern software packages The fact that neural networks cannot be directly programmed (but trained) is their distinctive feature. In this regard, the urgent task is to ensure sufficient speed and quality of neural network training procedures. The process of neural network training can differ significantly depending on the problem. There are verification methods that correspond to the task's constraints; they are used to assess the training results. Verification methods provide an estimate of the entire cardinal set of examples but do not allow to estimate which subset of those causes a significant error. This fact leads to neural networks' failure to perform with the given set of hyperparameters, making training a new one time-consuming.

Topics & Concepts

Computer scienceArtificial neural networkHyperparameterSet (abstract data type)Artificial intelligenceTask (project management)Machine learningProcess (computing)Range (aeronautics)Function (biology)Quality (philosophy)Data miningDomain (mathematical analysis)Feature (linguistics)MathematicsBiologyManagementEconomicsEvolutionary biologyLinguisticsPhilosophyEpistemologyMathematical analysisOperating systemProgramming languageComposite materialMaterials scienceAdvanced Data Processing TechniquesNeural Networks and ApplicationsStatistical and Computational Modeling