Identifying Employees for Re-skilling Using an Analytics-Based Approach

Modern organizations face the challenge of constantly evolving skills and an ever-changing demand for products and services. In order to stay relevant in business, they need their workforce to be proficient in the skills that are in demand. This problem is exacerbated for large organizations with a complex workforce. In this paper, we propose a novel, analytics-driven approach to help organizations tackle some of these challenges. Using historic records on skill proficiency of employees and human resource data, we develop predictive algorithms that can model the adjacencies between the skills that are in supply and those that are in demand. Combined with another proposed approach for predicting the learning ability of people based on human resource data, we develop a framework for identifying the propensity of each individual to be successfully re-trained to a target skill. Our proposed approach can also ingest data on manual skill adjacencies provided by the business to augment the predictive modeling framework. We evaluate the proposed approach for a representative set of target skills and demonstrate a high performance which improves further on adding information about manual skill adjacencies. Feedback on preliminary deployment of this approach for re-skilling indicates that a large percentage of employees recommended by the analytics framework were accepted for further review by the business. We will incorporate the observations made by the business to iteratively improve the predictive learning approach.

[1]  Yehuda Naveh,et al.  Optimatch: Applying Constraint Programming to Workforce Management of Highly-skilled Employees , 2007, 2007 IEEE International Conference on Service Operations and Logistics, and Informatics.

[2]  Kush R. Varshney,et al.  Predicting employee expertise for talent management in the enterprise , 2014, KDD.

[3]  Trevor Hastie,et al.  The Elements of Statistical Learning , 2001 .

[4]  Peter Cappelli,et al.  A Market-Driven Approach to Retaining Talent. , 2000 .

[5]  Mark S. Squillante,et al.  OnTheMark: Integrated Stochastic Resource Planning of Human Capital Supply Chains , 2011, Interfaces.

[6]  Aleksandra Mojsilovic,et al.  Workforce Analytics for the Services Economy , 2010 .

[7]  George T. Milkovich,et al.  Propensity to Leave: A Preliminary Examination of March and Simon’s Model , 1980 .

[8]  Eric R. Ziegel,et al.  The Elements of Statistical Learning , 2003, Technometrics.

[9]  Kush R. Varshney,et al.  An Analytics Approach for Proactively Combating Voluntary Attrition of Employees , 2012, 2012 IEEE 12th International Conference on Data Mining Workshops.

[10]  John W. Boudreau,et al.  Voluntary turnover and job performance: Curvilinearity and the moderating influences of salary growth and promotions. , 1997 .

[11]  John P. Hausknecht,et al.  Targeted employee retention: Performance-based and job-related differences in reported reasons for staying , 2009 .

[12]  Jianqing Fan,et al.  Sure independence screening for ultrahigh dimensional feature space , 2006, math/0612857.

[13]  Jianying Hu,et al.  Statistical methods for automated generation of service engagement staffing plans , 2007, IBM J. Res. Dev..

[14]  W Y Zhang,et al.  Discussion on `Sure independence screening for ultra-high dimensional feature space' by Fan, J and Lv, J. , 2008 .

[15]  Kush R. Varshney,et al.  Optigrow: People Analytics for Job Transfers , 2015, 2015 IEEE International Congress on Big Data.

[16]  Alan Agresti,et al.  Categorical Data Analysis , 2003 .