Estimating Fungibility Between Skills by Combining Skill-Similarities Obtained from Multiple Data Sources

Autor: Michael Peran, Ben Zweig, Moninder Singh, Joydeep Mondal, Shrihari Vasudevan, Brian Johnston, Rachel Rosenfeld
Rok vydání: 2017
Předmět:
Zdroj: ICDM Workshops
DOI: 10.1109/icdmw.2017.36
Popis: This paper proposes an approach to estimating fungibility between skills given multiple information sources of those skills. An estimate of skill adjacency or fungibility or substitutability is critical for effective capacity planning, analytics and optimization in the face of changing skill requirements of an organization. The proposed approach is based on computing a similarity measure between skills, using each available data source, and combining these similarities into a measure of fungibility. We present both supervised and unsupervised integration methods and demonstrate that these produce improved outcomes, compared to using any single skill similarity source alone, using data from a large IT organization. The skills' fungibility matrix created using this approach has been deployed by the organization for clustering skills for use in demand forecasting. A possible extension of this work is to use the fungibility measure to cluster skills and develop a skill-centric representation of an organization to enable strategic assessments and planning.
Databáze: OpenAIRE