Abstract
We develop a novel measure of job-worker allocation quality (JAQ) by exploiting employer-employee data with machine learning techniques. Based on our measure, the quality of job-worker matching correlates positively with individual labor earnings and firm productivity, as well as with market competition, non-family firm status, and employees’ human capital. Management plays a key role in job-worker matching: when managerial hirings and firings persistently raise management quality, the matching of rank-and-file workers to their jobs improves. JAQ can be constructed from any employer–employee data set including workers’ occupations, and used to explore research questions in corporate finance and organization economics.
Original language | English |
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Article number | 103992 |
Peer-reviewed scientific journal | Journal of Financial Economics |
Volume | 164 |
ISSN | 0304-405X |
DOIs | |
Publication status | Published - 02.2025 |
MoE publication type | A1 Journal article - refereed |
Keywords
- 512 Business and Management
- Jobs
- Machine learning
- Management
- Matching
- Mismatch
- Productivity
- Workers