Neural networks for the analysis of labor turnover variables

Authors

DOI:

https://doi.org/10.32645/13906925.884

Keywords:

Neural networks analysis, employee turnover, human resources management, job satisfaction

Abstract

The phenomenon of job satisfaction generates high costs for organizations, as it impacts on the processes of selection, training and motivation of their human resources, while affecting the productivity and quality of organizations, even impacting on loyalty of costumers. For this reason, forecasting or controlling the behavior of the staff turnover is of great importance for a company.  Although predicting the behavior of turnover is an almost impossible intention due to the number of variables that condition this behavior. The objective of this research was to try to identify, through the use of neural network analysis, which internal variables of the organization, of an objective nature, of a demographic nature and associated with their human resources, showed a relationship or incidence on the employee turnover. For this purpose, the databases were analyzed with the turnover behavior of personnel in business organizations with different characteristics. The analysis through neural networks allowed to establish a significant relationship between variables such as: average income, school level and age; Likewise, no significant differences were found in other variables, such as the type of sector, years of experience in the sector, years of work in the position or years of work, the hierarchical position occupied in the organization and the number of dependents.

Author Biographies

  • Reyner Pérez Campdesuñer, Universidad Tecnológica Equinoccial

     Doctor en Ciencias Técnicas e Ingeniero Industrial por la Universidad de Holguín 

  • Alexander Sánchez Rodríguez, Universidad Tecnológica Equinoccial

    Doctor en Ciencias Económicas y Empresariales por la Universidad de Valladolid, España

  • Gelmar García Vidal, Universidad Tecnológica Equinoccial

    Doctor en Economía por la Universidad de Oriente, Cuba

  • Rodobaldo Martínez Vivar, Universidad Tecnológica Equinoccial

    Doctor en Ciencias Técnicas e Ingeniero Industrial por la Universidad de Holguín, Cuba

Published

2019-12-27

Issue

Section

CIENCIAS SOCIALES Y ECONÓMICAS

How to Cite

Neural networks for the analysis of labor turnover variables. (2019). SATHIRI, 14(2), 42-60. https://doi.org/10.32645/13906925.884