Influence of the Neural Network Hyperparameters on its Numerical Conditioning

In this paper, the task of assessment of numerical conditioning of multilayer perceptron, forecasting time series with sliding window method, has been considered. Performance of the forecasting perceptron with various hyperparameters sets, with different amount of neurons and various activation func...

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Main Author: S. V. Sholtanyuk
Format: Article
Language:Russian
Published: Establishment «The Main Information and Analytical Center of the Ministry of Education of the Republic of Belarus» 2020-04-01
Series:Цифровая трансформация
Subjects:
Online Access:https://dt.giac.by/jour/article/view/478
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spelling doaj-bf98603a1cd24f5bb8b8503e5e19bb0e2021-07-28T16:20:21ZrusEstablishment «The Main Information and Analytical Center of the Ministry of Education of the Republic of Belarus»Цифровая трансформация2522-96132524-28222020-04-01014350170Influence of the Neural Network Hyperparameters on its Numerical ConditioningS. V. Sholtanyuk0Belarusian State UniversityIn this paper, the task of assessment of numerical conditioning of multilayer perceptron, forecasting time series with sliding window method, has been considered. Performance of the forecasting perceptron with various hyperparameters sets, with different amount of neurons and various activation functions in particular, has been considered. Main factors, influencing on the neural net conditioning, have been revealed, as well as performance features, when using various activation functions. Formulas for assessment of condition numbers of individual components of the forecasting perceptron and of the neural network itself have been proposed. Comparative analysis of results of training the forecasting perceptron with various hyperparameters on modeled time series has been performed. Conditions, providing the best stability and conditioning for the neural network, have been formulated.https://dt.giac.by/jour/article/view/478time series forecastingneural networksperceptronnumerical conditioningactivation function
collection DOAJ
language Russian
format Article
sources DOAJ
author S. V. Sholtanyuk
spellingShingle S. V. Sholtanyuk
Influence of the Neural Network Hyperparameters on its Numerical Conditioning
Цифровая трансформация
time series forecasting
neural networks
perceptron
numerical conditioning
activation function
author_facet S. V. Sholtanyuk
author_sort S. V. Sholtanyuk
title Influence of the Neural Network Hyperparameters on its Numerical Conditioning
title_short Influence of the Neural Network Hyperparameters on its Numerical Conditioning
title_full Influence of the Neural Network Hyperparameters on its Numerical Conditioning
title_fullStr Influence of the Neural Network Hyperparameters on its Numerical Conditioning
title_full_unstemmed Influence of the Neural Network Hyperparameters on its Numerical Conditioning
title_sort influence of the neural network hyperparameters on its numerical conditioning
publisher Establishment «The Main Information and Analytical Center of the Ministry of Education of the Republic of Belarus»
series Цифровая трансформация
issn 2522-9613
2524-2822
publishDate 2020-04-01
description In this paper, the task of assessment of numerical conditioning of multilayer perceptron, forecasting time series with sliding window method, has been considered. Performance of the forecasting perceptron with various hyperparameters sets, with different amount of neurons and various activation functions in particular, has been considered. Main factors, influencing on the neural net conditioning, have been revealed, as well as performance features, when using various activation functions. Formulas for assessment of condition numbers of individual components of the forecasting perceptron and of the neural network itself have been proposed. Comparative analysis of results of training the forecasting perceptron with various hyperparameters on modeled time series has been performed. Conditions, providing the best stability and conditioning for the neural network, have been formulated.
topic time series forecasting
neural networks
perceptron
numerical conditioning
activation function
url https://dt.giac.by/jour/article/view/478
work_keys_str_mv AT svsholtanyuk influenceoftheneuralnetworkhyperparametersonitsnumericalconditioning
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