The optimization model for allocating reward to employees using GAHP and cluster analysis

Classification is one of the important tasks in any work and field. Cluster analysis (CA) is one of the most important classification methods. CA is one of the widely used methods in many scientific fields. Clustering is one of the most popular data mining techniques, and it has many applications in...

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Main Author: Mehdi Ajalli
Format: Article
Language:English
Published: Ayandegan Institute of Higher Education, 2024-12-01
Series:International Journal of Research in Industrial Engineering
Subjects:
Online Access:https://www.riejournal.com/article_193854_65383a9061e55eed2c6676ca5c5b54ea.pdf
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author Mehdi Ajalli
author_facet Mehdi Ajalli
author_sort Mehdi Ajalli
collection DOAJ
description Classification is one of the important tasks in any work and field. Cluster analysis (CA) is one of the most important classification methods. CA is one of the widely used methods in many scientific fields. Clustering is one of the most popular data mining techniques, and it has many applications in the industry. In the field of human resources management, predefined rules are used to determine the performance and division of employees. The main goal of the current research is to design a suitable model for allocating rewards to employees by using the combined approach of the Group Analytical Hierarchy Process (GAHP) and CA. The research method is practical in terms of purpose and descriptive survey in terms of data collection. For this purpose, first, by designing and distributing a comparative questionnaire of indicators and completing them by the experts of Shahid Fakuri Industries' component manufacturing unit, and by using the group hierarchical analysis process model with Expert Choice software, the weight of the effective indicators in employee evaluation was calculated, then the values of the indicators for 29 employees with using the formula of the normalization function in the Excel software, it is standardized, and the weight of the indicators is multiplied by the standard values of the data, and then the distance matrix and the optimal number of clusters are calculated through the Machaon software, and finally, using the discriminative clustering approach and using the K-means method, data clustering was done with SPSS and Makaon software and a suitable model was presented for allocating rewards to the workers of the parts making unit.
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spelling doaj-art-e0df15ce4e544904be51e2513534c92f2025-01-30T15:10:43ZengAyandegan Institute of Higher Education,International Journal of Research in Industrial Engineering2783-13372717-29372024-12-0113441442610.22105/riej.2024.446932.1426193854The optimization model for allocating reward to employees using GAHP and cluster analysisMehdi Ajalli0Department of Management, Faculty of Management and Accounting, Bu-Ali Sina University, Hamedan, Iran.Classification is one of the important tasks in any work and field. Cluster analysis (CA) is one of the most important classification methods. CA is one of the widely used methods in many scientific fields. Clustering is one of the most popular data mining techniques, and it has many applications in the industry. In the field of human resources management, predefined rules are used to determine the performance and division of employees. The main goal of the current research is to design a suitable model for allocating rewards to employees by using the combined approach of the Group Analytical Hierarchy Process (GAHP) and CA. The research method is practical in terms of purpose and descriptive survey in terms of data collection. For this purpose, first, by designing and distributing a comparative questionnaire of indicators and completing them by the experts of Shahid Fakuri Industries' component manufacturing unit, and by using the group hierarchical analysis process model with Expert Choice software, the weight of the effective indicators in employee evaluation was calculated, then the values of the indicators for 29 employees with using the formula of the normalization function in the Excel software, it is standardized, and the weight of the indicators is multiplied by the standard values of the data, and then the distance matrix and the optimal number of clusters are calculated through the Machaon software, and finally, using the discriminative clustering approach and using the K-means method, data clustering was done with SPSS and Makaon software and a suitable model was presented for allocating rewards to the workers of the parts making unit.https://www.riejournal.com/article_193854_65383a9061e55eed2c6676ca5c5b54ea.pdfrewardemployeescagahpdiscriminative clusteringk-means method
spellingShingle Mehdi Ajalli
The optimization model for allocating reward to employees using GAHP and cluster analysis
International Journal of Research in Industrial Engineering
reward
employees
ca
gahp
discriminative clustering
k-means method
title The optimization model for allocating reward to employees using GAHP and cluster analysis
title_full The optimization model for allocating reward to employees using GAHP and cluster analysis
title_fullStr The optimization model for allocating reward to employees using GAHP and cluster analysis
title_full_unstemmed The optimization model for allocating reward to employees using GAHP and cluster analysis
title_short The optimization model for allocating reward to employees using GAHP and cluster analysis
title_sort optimization model for allocating reward to employees using gahp and cluster analysis
topic reward
employees
ca
gahp
discriminative clustering
k-means method
url https://www.riejournal.com/article_193854_65383a9061e55eed2c6676ca5c5b54ea.pdf
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