TY - JOUR
T1 - Employee Turnover in Multinational Corporations
T2 - A Supervised Machine Learning Approach
AU - Veglio, Valerio
AU - Romanello, Rubina
AU - Pedersen, Torben
N1 - Epub ahead of print. Published online: 21 May 2024.
PY - 2024/5/21
Y1 - 2024/5/21
N2 - This research explores the potential of supervised machine learning techniques in transforming raw data into strategic knowledge in the context of human resource management. By analyzing a database with over 205 variables and 2,932 observations related to a telco multinational corporation, this study tests the predictive and analytical power of classification decision trees in detecting the determinants of voluntary employee turnover. The results show the determinants of groups of employees who may voluntarily leave the company, highlighting the level of analytical depth of the classification tree. This study contributes to the field of human resource management by highlighting the strategic value of the classification decision tree in identifying the characteristics of groups of employees with a high propensity to voluntarily leave the firm. As practical implication, our study provides an approach that any organization can use to self-assess its own turnover risk and develop tailored retention practices.
AB - This research explores the potential of supervised machine learning techniques in transforming raw data into strategic knowledge in the context of human resource management. By analyzing a database with over 205 variables and 2,932 observations related to a telco multinational corporation, this study tests the predictive and analytical power of classification decision trees in detecting the determinants of voluntary employee turnover. The results show the determinants of groups of employees who may voluntarily leave the company, highlighting the level of analytical depth of the classification tree. This study contributes to the field of human resource management by highlighting the strategic value of the classification decision tree in identifying the characteristics of groups of employees with a high propensity to voluntarily leave the firm. As practical implication, our study provides an approach that any organization can use to self-assess its own turnover risk and develop tailored retention practices.
KW - Machine learning
KW - Classification decision tree
KW - Employee turnover
KW - Employee churn predictive model
KW - Multinational corporation
KW - Employee retention
KW - Machine learning
KW - Classification decision tree
KW - Employee turnover
KW - Employee churn predictive model
KW - Multinational corporation
KW - Employee retention
U2 - 10.1007/s11846-024-00769-7
DO - 10.1007/s11846-024-00769-7
M3 - Journal article
SN - 1863-6683
JO - Review of Managerial Science
JF - Review of Managerial Science
ER -