Abstract
We investigate the role of task similarity for the resilience of unemployed job seekers exposed to automation of routine tasks. Using a language model, we establish a novel job-to-job task similarity measure. Exploiting the resulting job network to define job markets flexibly, we find that only the most similar jobs affect job finding. Since automation-exposed jobs overlap with
other highly exposed jobs, task-based reallocation provides little relief for affected job seekers. We show that this is not true for more recent software exposure, for which task overlap mitigates the distributional consequences. Our counterfactual simulation highlights the potential harm of increasing job mobility as it strengthens the divided exposure of job seekers to routine-task automation.
other highly exposed jobs, task-based reallocation provides little relief for affected job seekers. We show that this is not true for more recent software exposure, for which task overlap mitigates the distributional consequences. Our counterfactual simulation highlights the potential harm of increasing job mobility as it strengthens the divided exposure of job seekers to routine-task automation.
Original language | English |
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Publisher | Utrecht University |
Pages | 1-57 |
Number of pages | 57 |
DOIs | |
Publication status | Published - Dec 2023 |
Publication series
Name | U.S.E. Working Papers Series |
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Publisher | Utrecht University |
No. | 12 |
Volume | 23 |
ISSN (Electronic) | 2666-8238 |
Keywords
- automation
- unemployment
- occupational reallocation
- task overlap
- job network