Artificial intelligence and wage inequality:
This paper looks at the links between AI and wage inequality across 19 OECD countries. It uses a measure of occupational exposure to AI derived from that developed by Felten, Raj and Seamans (2019) - a measure of the degree to which occupations rely on abilities in which AI has made the most progres...
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Format: | Elektronisch E-Book |
Sprache: | English |
Veröffentlicht: |
Paris
OECD Publishing
2024
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Schriftenreihe: | OECD Artificial Intelligence Papers
no.13 |
Schlagworte: | |
Online-Zugang: | DE-862 DE-863 |
Zusammenfassung: | This paper looks at the links between AI and wage inequality across 19 OECD countries. It uses a measure of occupational exposure to AI derived from that developed by Felten, Raj and Seamans (2019) - a measure of the degree to which occupations rely on abilities in which AI has made the most progress. The results provide no indication that AI has affected wage inequality between occupations so far (over the period 2014-2018). At the same time, there is some evidence that AI may be associated with lower wage inequality within occupations - consistent with emerging findings from the literature that AI reduces productivity differentials between workers. Further research is needed to identify the exact mechanisms driving the negative relationship between AI and wage inequality within occupations. One possible explanation is that low performers have more to gain from using AI because AI systems are trained to embody the more accurate practices of high performers. It is also possible that AI reduces performance differences within an occupation through a selection effect, e.g. if low performers leave their job because they are unable to adapt to AI tools by shifting their activities to tasks that AI cannot automate. |
Beschreibung: | 1 Online-Ressource (37 Seiten) 21 x 28cm. |
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indexdate | 2025-03-18T14:28:57Z |
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series2 | OECD Artificial Intelligence Papers |
spelling | Georgieff, Alexandre VerfasserIn aut Artificial intelligence and wage inequality Alexandre, Georgieff Paris OECD Publishing 2024 1 Online-Ressource (37 Seiten) 21 x 28cm. Text txt rdacontent Computermedien c rdamedia Online-Ressource cr rdacarrier OECD Artificial Intelligence Papers no.13 This paper looks at the links between AI and wage inequality across 19 OECD countries. It uses a measure of occupational exposure to AI derived from that developed by Felten, Raj and Seamans (2019) - a measure of the degree to which occupations rely on abilities in which AI has made the most progress. The results provide no indication that AI has affected wage inequality between occupations so far (over the period 2014-2018). At the same time, there is some evidence that AI may be associated with lower wage inequality within occupations - consistent with emerging findings from the literature that AI reduces productivity differentials between workers. Further research is needed to identify the exact mechanisms driving the negative relationship between AI and wage inequality within occupations. One possible explanation is that low performers have more to gain from using AI because AI systems are trained to embody the more accurate practices of high performers. It is also possible that AI reduces performance differences within an occupation through a selection effect, e.g. if low performers leave their job because they are unable to adapt to AI tools by shifting their activities to tasks that AI cannot automate. Education Social Issues/Migration/Health Employment Science and Technology Governance |
spellingShingle | Georgieff, Alexandre Artificial intelligence and wage inequality Education Social Issues/Migration/Health Employment Science and Technology Governance |
title | Artificial intelligence and wage inequality |
title_auth | Artificial intelligence and wage inequality |
title_exact_search | Artificial intelligence and wage inequality |
title_full | Artificial intelligence and wage inequality Alexandre, Georgieff |
title_fullStr | Artificial intelligence and wage inequality Alexandre, Georgieff |
title_full_unstemmed | Artificial intelligence and wage inequality Alexandre, Georgieff |
title_short | Artificial intelligence and wage inequality |
title_sort | artificial intelligence and wage inequality |
topic | Education Social Issues/Migration/Health Employment Science and Technology Governance |
topic_facet | Education Social Issues/Migration/Health Employment Science and Technology Governance |
work_keys_str_mv | AT georgieffalexandre artificialintelligenceandwageinequality |