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Analysis of CEO career patterns using machine learning: taking US university graduates as an example

Chia Yu Hung (College of Management, National Taipei University of Technology, Taipei, Taiwan)
Eddie Jeng (Department of Information and Finance Management, National Taipei University of Technology, Taipei, Taiwan)
Li Chen Cheng (Department of Information and Finance Management, National Taipei University of Technology, Taipei, Taiwan)

Data Technologies and Applications

ISSN: 2514-9288

Article publication date: 2 August 2024

44

Abstract

Purpose

This study explores the career trajectories of Chief Executive Officers (CEOs) to uncover unique characteristics that contribute to their success. By utilizing web scraping and machine learning techniques, over two thousand CEO profiles from LinkedIn are analyzed to understand patterns in their career paths. This study offers an alternative approach compared to the predominantly qualitative research methods employed in previous research.

Design/methodology/approach

This study proposes a framework for analyzing CEO career patterns. Job titles and company information are encoded using the Standard Occupational Classification (SOC) scheme. The study employs the Needleman-Wunsch optimal matching algorithm and an agglomerative approach to construct distance matrices and cluster CEO career paths.

Findings

This study gathered data on the career transition processes of graduates from several renowned public and private universities in the United States via LinkedIn. Employing machine learning techniques, the analysis revealed diverse career trajectories. The findings offer career guidance for individuals from various academic backgrounds aspiring to become CEOs.

Research limitations/implications

The building of a career sequence that takes into account the number of years requires integers. Numbers that are not integers have been rounded up to facilitate the optimal matching process but this approach prevents a perfectly accurate representation of time worked.

Practical implications

This study makes an original contribution to the field of career pattern analysis by disclosing the distinct career path groups of CEOs using the rich LinkedIn online dataset. Note that our CEO profiles are not restricted in any industry or specific career paths followed to becoming CEOs. In light of the fact that individuals who hold CEO positions are usually perceived by society as successful, we are interested in finding the characteristics behind their success and whether either the title held or the company they remain at show patterns in making them who they are today.

Originality/value

As a matter of fact, nearly all CEOs had previous experience working for a non-Fortune organization before joining a Fortune company. Of those who have worked for Fortune firms, the number of CEOs with experience in Fortune 500 forms exceeded those with experience in Fortune 1,000 firms.

Keywords

Acknowledgements

The authors are very grateful to the anonymous referees and the editor for their helpful comments and valuable suggestions for improving the earlier version of the paper. This work was supported by Ministry of Science and Technology (MOST), Taiwan, under 109-2410-H-027 -009 -MY2 and 111-2410-H-027 -011 -MY3.

Citation

Hung, C.Y., Jeng, E. and Cheng, L.C. (2024), "Analysis of CEO career patterns using machine learning: taking US university graduates as an example", Data Technologies and Applications, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/DTA-04-2023-0132

Publisher

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Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

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