Prediction of Labor Insertion in Graduates Based on the Pre-Professional Internship Process Through a Supervised Machine Learning Model

Maglioni Arana, Maria Camborda, Severo Calderon, Fidel Castro, Maribel Arana, Bryan Huaricapcha

Producción científica: Libro o Capítulo del libro Contribución a la conferenciarevisión exhaustiva

Resumen

This research sought to implement a predictive model using machine learning algorithms to determine if a student graduated from the Faculty of Systems Engineering of the National University of Central Peru (hereinafter FIS-UNCP) is able to enter the world of work taking into account employers and competences during the pre-professional internship process. The research was carried out following the scientific-systemic method, of a quantitative approach, of applied type and explanatory-predictive level, where the design was nonexperimental longitudinal trend, the chosen population took into account the 355 students of the FIS-UNCP which managed to complete the pre professional internship process from 2023-I to the present. The results showed that the predictive model had an assertiveness of 92.96% allowing to efficiently predict the employment of graduates taking into account the process of pre professional practices, with a T-value = 22.909 and P-value = 0.000, evidencing that the pre professional internship process significantly influences the employment insertion of graduates of the FIS UNCP through a predictive model supervised in machine learning.

Idioma originalInglés estadounidense
Título de la publicación alojadaProceedings - 10th International Symposium on Accreditation of Engineering and Computing Education, ICACIT 2024
EditorialInstitute of Electrical and Electronics Engineers Inc.
ISBN (versión digital)9798350366709
DOI
EstadoIndizado - 2024
Evento10th International Symposium on Accreditation of Engineering and Computing Education, ICACIT 2024 - Bogota, Colombia
Duración: 3 oct. 20244 oct. 2024

Serie de la publicación

NombreProceedings - 10th International Symposium on Accreditation of Engineering and Computing Education, ICACIT 2024

Conferencia

Conferencia10th International Symposium on Accreditation of Engineering and Computing Education, ICACIT 2024
País/TerritorioColombia
CiudadBogota
Período3/10/244/10/24

Nota bibliográfica

Publisher Copyright:
© 2024 IEEE.

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