Churn Prediction of Employees Using Machine Learning Techniques

Employees are considered as the most valuable assets of any organization. Various policies have been introduced by the HR professionals to create a good working environment for them, but still, the rate of employees quitting the Technology Industry is quite high. Often the reason behind their early...

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Permalink: http://skupnikatalog.nsk.hr/Record/nsk.NSK01001163127/Details
Matična publikacija: Tehnički glasnik (Online)
15 (2021), 1 ; str. 51-59
Glavni autori: Bandyopadhyay, Nilasha (Author), Jadhav, Anil
Vrsta građe: e-članak
Jezik: eng
Online pristup: https://doi.org/10.31803/tg-20210204181812
Elektronička verzija članka
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024 7 |2 doi  |a 10.31803/tg-20210204181812 
035 |a (HR-ZaNSK)001163127 
040 |a HR-ZaNSK  |b hrv  |c HR-ZaNSK  |e ppiak 
041 0 |a eng 
042 |a croatica 
044 |a ci  |c hr 
080 1 |2 2011 
100 1 |a Bandyopadhyay, Nilasha  |4 aut  |9 HR-ZaNSK 
245 1 0 |a Churn Prediction of Employees Using Machine Learning Techniques   |h [Elektronička građa]  |c Nilasha Bandyopadhyay, Anil Jadhav. 
300 |b Ilustr. 
504 |a Bibliografija: 
504 |a Summary. 
520 |a Employees are considered as the most valuable assets of any organization. Various policies have been introduced by the HR professionals to create a good working environment for them, but still, the rate of employees quitting the Technology Industry is quite high. Often the reason behind their early attrition could be due to company-related or personal issues, such as No satisfaction at the workplace, Fewer opportunities for learning, Undue Workload, Less Encouragement, and many others. This paper aims in discussing a structured way for predicting the churn rate of the employees by implementing various Classification techniques like SVM, Random Forest classifier, and Naives Bayes classifier. The performance of the classifiers was compared using metrics like Confusion Matrix, Recall, False Positive Rate, and Accuracy to determine the best model for the churn prediction. We found that among the models, the Random Forest classifier proved to be the best model for IT employee churn prediction. A Correlation Matrix was generated in the form of a heatmap to identify the important features that might impact the attrition rate. 
700 1 |a Jadhav, Anil  |4 aut  |9 HR-ZaNSK 
773 0 |t Tehnički glasnik (Online)  |x 1848-5588  |g 15 (2021), 1 ; str. 51-59  |w nsk.(HR-ZaNSK)000810940 
981 |b Be2021 
856 4 0 |u https://doi.org/10.31803/tg-20210204181812 
856 4 0 |u https://hrcak.srce.hr/253021  |y Elektronička verzija članka 
856 4 1 |y Digitalna.nsk.hr