Title :
An Analytics Approach for Proactively Combating Voluntary Attrition of Employees
Author :
Singh, Monika ; Varshney, Kush R. ; Wang, Jiacheng ; Mojsilovic, Aleksandra ; Gill, A.R. ; Faur, P.I. ; Ezry, R.
Author_Institution :
IBM T. J. Watson Res. Center, Yorktown Heights, NY, USA
Abstract :
We describe a framework for using analytics to proactively tackle voluntary attrition of employees. This is especially important in organizations with large services arms where unplanned departures of key employees can lead to big losses by way of lost productivity, delayed or missed deadlines, and hiring costs of replacements. By proactively identifying top talent at a high risk of voluntarily leaving, an organization can take appropriate action in time to actually affect such employee departures, thereby avoiding financial and knowledge losses. The main retention action we study in this paper is that of proactive salary raises to at-risk employees. Our approach uses data mining for identifying employees at risk of attrition and balances the cost of attrition/replacement of an employee against the cost of retaining that employee (by way of increased salary) to enable the optimal use of limited funds that may be available for this purpose, thereby allowing the action to be targeted towards employees with the highest potential returns on investment. This approach has been used to do a proactive retention action for several thousand employees across several geographies and business units for a large, Fortune 500 multinational company. We discuss this action and discuss the results to date that show a significant reduction in voluntary resignations of the targeted groups.
Keywords :
data mining; investment; organisational aspects; personnel; risk analysis; salaries; attrition risk; business units; cost balancing; data mining; employee combating voluntary attrition; employee departure; employee identification; organization; predictive modeling; proactive retention action; proactive salary; return on investment; Biological system modeling; Companies; Data mining; Investments; Remuneration; Attrition; Clustering; Predictive modeling; Proactive retention;
Conference_Titel :
Data Mining Workshops (ICDMW), 2012 IEEE 12th International Conference on
Conference_Location :
Brussels
Print_ISBN :
978-1-4673-5164-5
DOI :
10.1109/ICDMW.2012.136