Using Artificial Neural Networks in Predicting the Level of Stress among Military Conscripts

The present study aims to elucidate the main variables that increase the level of stress at the beginning of military conscription service using an artificial neural network (ANN)-based prediction model. Random sample data were obtained from one battalion of the Lithuanian Armed Forces, and a survey...

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Main Authors: Svajone Bekesiene, Rasa Smaliukiene, Ramute Vaicaitiene
Format: Article
Language:English
Published: MDPI AG 2021-03-01
Series:Mathematics
Subjects:
Online Access:https://www.mdpi.com/2227-7390/9/6/626
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spelling doaj-d83bb76b6c51471f91e5275f915aaa192021-03-17T00:01:18ZengMDPI AGMathematics2227-73902021-03-01962662610.3390/math9060626Using Artificial Neural Networks in Predicting the Level of Stress among Military ConscriptsSvajone Bekesiene0Rasa Smaliukiene1Ramute Vaicaitiene2General Jonas Zemaitis Military Academy of Lithuania, Silo 5a, 10322 Vilnius, LithuaniaGeneral Jonas Zemaitis Military Academy of Lithuania, Silo 5a, 10322 Vilnius, LithuaniaGeneral Jonas Zemaitis Military Academy of Lithuania, Silo 5a, 10322 Vilnius, LithuaniaThe present study aims to elucidate the main variables that increase the level of stress at the beginning of military conscription service using an artificial neural network (ANN)-based prediction model. Random sample data were obtained from one battalion of the Lithuanian Armed Forces, and a survey was conducted to generate data for the training and testing of the ANN models. Using nonlinearity in stress research, numerous ANN structures were constructed and verified to limit the optimal number of neurons, hidden layers, and transfer functions. The highest accuracy was obtained by the multilayer perceptron neural network (MLPNN) with a 6-2-2 partition. A standardized rescaling method was used for covariates. For the activation function, the hyperbolic tangent was used with 20 units in one hidden layer as well as the back-propagation algorithm. The best ANN model was determined as the model that showed the smallest cross-entropy error, the correct classification rate, and the area under the ROC curve. These findings show, with high precision, that cohesion in a team and adaptation to military routines are two critical elements that have the greatest impact on the stress level of conscripts.https://www.mdpi.com/2227-7390/9/6/626multilayer perceptron neural networkhyperbolic tangent activation functionhidden layersback-propagation algorithmcross-entropy errorstress levels
collection DOAJ
language English
format Article
sources DOAJ
author Svajone Bekesiene
Rasa Smaliukiene
Ramute Vaicaitiene
spellingShingle Svajone Bekesiene
Rasa Smaliukiene
Ramute Vaicaitiene
Using Artificial Neural Networks in Predicting the Level of Stress among Military Conscripts
Mathematics
multilayer perceptron neural network
hyperbolic tangent activation function
hidden layers
back-propagation algorithm
cross-entropy error
stress levels
author_facet Svajone Bekesiene
Rasa Smaliukiene
Ramute Vaicaitiene
author_sort Svajone Bekesiene
title Using Artificial Neural Networks in Predicting the Level of Stress among Military Conscripts
title_short Using Artificial Neural Networks in Predicting the Level of Stress among Military Conscripts
title_full Using Artificial Neural Networks in Predicting the Level of Stress among Military Conscripts
title_fullStr Using Artificial Neural Networks in Predicting the Level of Stress among Military Conscripts
title_full_unstemmed Using Artificial Neural Networks in Predicting the Level of Stress among Military Conscripts
title_sort using artificial neural networks in predicting the level of stress among military conscripts
publisher MDPI AG
series Mathematics
issn 2227-7390
publishDate 2021-03-01
description The present study aims to elucidate the main variables that increase the level of stress at the beginning of military conscription service using an artificial neural network (ANN)-based prediction model. Random sample data were obtained from one battalion of the Lithuanian Armed Forces, and a survey was conducted to generate data for the training and testing of the ANN models. Using nonlinearity in stress research, numerous ANN structures were constructed and verified to limit the optimal number of neurons, hidden layers, and transfer functions. The highest accuracy was obtained by the multilayer perceptron neural network (MLPNN) with a 6-2-2 partition. A standardized rescaling method was used for covariates. For the activation function, the hyperbolic tangent was used with 20 units in one hidden layer as well as the back-propagation algorithm. The best ANN model was determined as the model that showed the smallest cross-entropy error, the correct classification rate, and the area under the ROC curve. These findings show, with high precision, that cohesion in a team and adaptation to military routines are two critical elements that have the greatest impact on the stress level of conscripts.
topic multilayer perceptron neural network
hyperbolic tangent activation function
hidden layers
back-propagation algorithm
cross-entropy error
stress levels
url https://www.mdpi.com/2227-7390/9/6/626
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