Using emotional intelligence to predict job stress: Artificial neural network and regression models

Introduction: These days, there is a consensus that emotional intelligence plays an important role in the success of individuals in different areas of life. Persons with higher emotional intelligence had lower stress in dealing with demands and pressures in the workplace. The purpose of this study w...

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Main Authors: Elahe Allahyari, Abdollah Gholami, Morteza Arab-Zozani, Hosein Ameri, Negin Nasseh
Format: Article
Language:fas
Published: Tehran University of Medical Sciences 2021-09-01
Series:بهداشت و ایمنی کار
Subjects:
Online Access:http://jhsw.tums.ac.ir/article-1-6543-en.html
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spelling doaj-741d211e29ea41dd97d480b3eddf72212021-09-26T04:56:19ZfasTehran University of Medical Sciencesبهداشت و ایمنی کار2251-807X2383-20882021-09-01113516528Using emotional intelligence to predict job stress: Artificial neural network and regression modelsElahe Allahyari0Abdollah Gholami1Morteza Arab-Zozani2Hosein Ameri3Negin Nasseh4 Department of Epidemiology and Biostatistics, School of Health, Social Determinants of Health Research Center, Birjand University of Medical Sciences, Birjand, Iran Department of Occupational Health, School of Health Social Determinants of Health Research Center Birjand University of Medical Sciences, Birjand, Iran Social Determinants of Health Research Center, Birjand University of Medical Sciences, Birjand, Iran Health Policy and Management Research Center, Department of Health Services Management, School of Public Health, Shahid Sadoughi University of Medical Sciences, Yazd, Iran Social Determinants of Health Research Center, Faculty of Health, Environmental Health Engineering Department, Birjand University of Medical Sciences, Birjand, Iran Introduction: These days, there is a consensus that emotional intelligence plays an important role in the success of individuals in different areas of life. Persons with higher emotional intelligence had lower stress in dealing with demands and pressures in the workplace. The purpose of this study was to use artificial neural network to predict job stress and to compare the performance of this model with the multivariate regression model. Material and Methods: In order to do that, 892 participants were selected randomly in different job categories. Then, 15 dimensions of Bar-On questionnaire, 10 job categories, age and education were considered as input variables and 7 dimensions of health and safety executive HSE were determined as output variables in models. Results: The results revealed that an artificial neural network with hyperbolic tangent and sigmoid transfer functions respectively in hidden and output layers with 375 hidden neurons had significantly better performance than multivariate regression. So that, correlation of predicted values and job stress were only between 0.192-0.364 in regression model, but neural network had at least correlation 0.527 in all dimensions of job stress. Conclusion: In predicting job stress using emotional intelligence, artificial neural network method was much better than multivariate regression model.http://jhsw.tums.ac.ir/article-1-6543-en.htmlemotional intelligencejob stressartificial neural networkmultivariate regression
collection DOAJ
language fas
format Article
sources DOAJ
author Elahe Allahyari
Abdollah Gholami
Morteza Arab-Zozani
Hosein Ameri
Negin Nasseh
spellingShingle Elahe Allahyari
Abdollah Gholami
Morteza Arab-Zozani
Hosein Ameri
Negin Nasseh
Using emotional intelligence to predict job stress: Artificial neural network and regression models
بهداشت و ایمنی کار
emotional intelligence
job stress
artificial neural network
multivariate regression
author_facet Elahe Allahyari
Abdollah Gholami
Morteza Arab-Zozani
Hosein Ameri
Negin Nasseh
author_sort Elahe Allahyari
title Using emotional intelligence to predict job stress: Artificial neural network and regression models
title_short Using emotional intelligence to predict job stress: Artificial neural network and regression models
title_full Using emotional intelligence to predict job stress: Artificial neural network and regression models
title_fullStr Using emotional intelligence to predict job stress: Artificial neural network and regression models
title_full_unstemmed Using emotional intelligence to predict job stress: Artificial neural network and regression models
title_sort using emotional intelligence to predict job stress: artificial neural network and regression models
publisher Tehran University of Medical Sciences
series بهداشت و ایمنی کار
issn 2251-807X
2383-2088
publishDate 2021-09-01
description Introduction: These days, there is a consensus that emotional intelligence plays an important role in the success of individuals in different areas of life. Persons with higher emotional intelligence had lower stress in dealing with demands and pressures in the workplace. The purpose of this study was to use artificial neural network to predict job stress and to compare the performance of this model with the multivariate regression model. Material and Methods: In order to do that, 892 participants were selected randomly in different job categories. Then, 15 dimensions of Bar-On questionnaire, 10 job categories, age and education were considered as input variables and 7 dimensions of health and safety executive HSE were determined as output variables in models. Results: The results revealed that an artificial neural network with hyperbolic tangent and sigmoid transfer functions respectively in hidden and output layers with 375 hidden neurons had significantly better performance than multivariate regression. So that, correlation of predicted values and job stress were only between 0.192-0.364 in regression model, but neural network had at least correlation 0.527 in all dimensions of job stress. Conclusion: In predicting job stress using emotional intelligence, artificial neural network method was much better than multivariate regression model.
topic emotional intelligence
job stress
artificial neural network
multivariate regression
url http://jhsw.tums.ac.ir/article-1-6543-en.html
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