Development of a digital employee rating evaluation system (DERES) based on machine learning algorithms and 360-degree method

Increasing the efficiency of an enterprise largely depends on the productivity of its employees, which must be properly assessed and the correct assessment of the contribution of each employee is important. In this regard, this article is devoted to a study conducted by the authors on the developmen...

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Main Authors: Balakayeva Gulnar, Zhanuzakov Mukhit, Kalmenova Gaukhar
Format: Article
Language:English
Published: De Gruyter 2023-10-01
Series:Journal of Intelligent Systems
Subjects:
Online Access:https://doi.org/10.1515/jisys-2023-0008
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author Balakayeva Gulnar
Zhanuzakov Mukhit
Kalmenova Gaukhar
author_facet Balakayeva Gulnar
Zhanuzakov Mukhit
Kalmenova Gaukhar
author_sort Balakayeva Gulnar
collection DOAJ
description Increasing the efficiency of an enterprise largely depends on the productivity of its employees, which must be properly assessed and the correct assessment of the contribution of each employee is important. In this regard, this article is devoted to a study conducted by the authors on the development of a digital employee rating system (DERES). The study was conducted on the basis of machine learning technologies and modern assessment methods that will allow companies to evaluate the performance of their departments, analyze the competencies of the employees and predict the rating of employees in the future. The authors developed a 360-degree employee rating model and a rating prediction model using regression machine learning algorithms. The article also analyzed the results obtained using the employee evaluation model, which showed that the performance of the tested employees is reduced due to remote work. Using DERES, a rating analysis of a real business company was carried out with recommendations for improving the efficiency of employees. An analysis of the forecasting results obtained using the rating prediction model developed by the authors showed that personal development and relationship are key parameters in predicting the future rating of employees. In addition, the authors provide a detailed description of the developed DERES information system, main components, and architecture.
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spelling doaj.art-a6b61f4902d34844b01dde14cc0b1d532023-10-12T14:06:51ZengDe GruyterJournal of Intelligent Systems2191-026X2023-10-013212497610.1515/jisys-2023-0008Development of a digital employee rating evaluation system (DERES) based on machine learning algorithms and 360-degree methodBalakayeva Gulnar0Zhanuzakov Mukhit1Kalmenova Gaukhar2Department of Computer Science, Al-Farabі Kazakh Natіonal Unіversіty, Almaty 050040, KazakhstanDepartment of Computer Science, Al-Farabі Kazakh Natіonal Unіversіty, Almaty 050040, KazakhstanDepartment of Computer Science, Al-Farabі Kazakh Natіonal Unіversіty, Almaty 050040, KazakhstanIncreasing the efficiency of an enterprise largely depends on the productivity of its employees, which must be properly assessed and the correct assessment of the contribution of each employee is important. In this regard, this article is devoted to a study conducted by the authors on the development of a digital employee rating system (DERES). The study was conducted on the basis of machine learning technologies and modern assessment methods that will allow companies to evaluate the performance of their departments, analyze the competencies of the employees and predict the rating of employees in the future. The authors developed a 360-degree employee rating model and a rating prediction model using regression machine learning algorithms. The article also analyzed the results obtained using the employee evaluation model, which showed that the performance of the tested employees is reduced due to remote work. Using DERES, a rating analysis of a real business company was carried out with recommendations for improving the efficiency of employees. An analysis of the forecasting results obtained using the rating prediction model developed by the authors showed that personal development and relationship are key parameters in predicting the future rating of employees. In addition, the authors provide a detailed description of the developed DERES information system, main components, and architecture.https://doi.org/10.1515/jisys-2023-0008ratіngratіng analysіsremotepost-covidsoftwareemployee evaluatіondigital systemevaluatіon methodsіnformatіon systemsmachine learning
spellingShingle Balakayeva Gulnar
Zhanuzakov Mukhit
Kalmenova Gaukhar
Development of a digital employee rating evaluation system (DERES) based on machine learning algorithms and 360-degree method
Journal of Intelligent Systems
ratіng
ratіng analysіs
remote
post-covid
software
employee evaluatіon
digital system
evaluatіon methods
іnformatіon systems
machine learning
title Development of a digital employee rating evaluation system (DERES) based on machine learning algorithms and 360-degree method
title_full Development of a digital employee rating evaluation system (DERES) based on machine learning algorithms and 360-degree method
title_fullStr Development of a digital employee rating evaluation system (DERES) based on machine learning algorithms and 360-degree method
title_full_unstemmed Development of a digital employee rating evaluation system (DERES) based on machine learning algorithms and 360-degree method
title_short Development of a digital employee rating evaluation system (DERES) based on machine learning algorithms and 360-degree method
title_sort development of a digital employee rating evaluation system deres based on machine learning algorithms and 360 degree method
topic ratіng
ratіng analysіs
remote
post-covid
software
employee evaluatіon
digital system
evaluatіon methods
іnformatіon systems
machine learning
url https://doi.org/10.1515/jisys-2023-0008
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AT zhanuzakovmukhit developmentofadigitalemployeeratingevaluationsystemderesbasedonmachinelearningalgorithmsand360degreemethod
AT kalmenovagaukhar developmentofadigitalemployeeratingevaluationsystemderesbasedonmachinelearningalgorithmsand360degreemethod