TY - GEN
T1 - Towards a Better Characterization of IT Career Development Patterns
AU - Wang, Yiwei
AU - Meng, Qingxin
AU - Chong, Alain Yee Loong
AU - Zhu, Hengshu
N1 - Publisher Copyright:
© 2023 29th Annual Americas Conference on Information Systems, AMCIS 2023. All rights reserved.
PY - 2023
Y1 - 2023
N2 - The career development patterns in the IT industry remain unrevealed, with existing research only focusing on the lateral job mobility and the job level changes were ignored. Revealing career development patterns necessitates the observation of a considerable number of individual career trajectories. However, data preparation is a demanding and expensive task, and the limited sample size results in coarse-grained career patterns. Digital professional platforms now allow for the accumulation of substantial amounts of real-world career trajectories, creating an unparalleled chance to uncover patterns. This paper develops a data-driven career pattern mining method: Density-Equilibrium Career Paths Pattern Mining (DECPPM), which overcomes the challenges of huge cardinality and job title imbalance that impede effective job title clustering and pattern mining. Using DECPPM, we uncover the career development patterns of IT professionals in terms of both job function and job level changes. Furthermore, we characterize the career patterns of IT individuals in different job levels from a multidimensional and temporal perspective, contributing to the literature on the relationship between career mobility and career success.
AB - The career development patterns in the IT industry remain unrevealed, with existing research only focusing on the lateral job mobility and the job level changes were ignored. Revealing career development patterns necessitates the observation of a considerable number of individual career trajectories. However, data preparation is a demanding and expensive task, and the limited sample size results in coarse-grained career patterns. Digital professional platforms now allow for the accumulation of substantial amounts of real-world career trajectories, creating an unparalleled chance to uncover patterns. This paper develops a data-driven career pattern mining method: Density-Equilibrium Career Paths Pattern Mining (DECPPM), which overcomes the challenges of huge cardinality and job title imbalance that impede effective job title clustering and pattern mining. Using DECPPM, we uncover the career development patterns of IT professionals in terms of both job function and job level changes. Furthermore, we characterize the career patterns of IT individuals in different job levels from a multidimensional and temporal perspective, contributing to the literature on the relationship between career mobility and career success.
KW - Career Development Pattern
KW - Career Mobility
KW - Career Pattern Mining
KW - Career Success
KW - IT Career
UR - http://www.scopus.com/inward/record.url?scp=85192907803&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:85192907803
T3 - 29th Annual Americas Conference on Information Systems, AMCIS 2023
BT - 29th Annual Americas Conference on Information Systems, AMCIS 2023
PB - Association for Information Systems
T2 - 29th Annual Americas Conference on Information Systems: Diving into Uncharted Waters, AMCIS 2023
Y2 - 10 August 2023 through 12 August 2023
ER -