cover image: Identification of an Expanded Inventory of Green Job Titles through AI-Driven Text Mining

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Identification of an Expanded Inventory of Green Job Titles through AI-Driven Text Mining

19 Sep 2024

This study expands the inventory of green job titles by incorporating a global perspective and using contemporary sources. It leverages natural language processing, specifically a retrieval-augmented generation model, to identify green job titles. The process began with a search of academic literature published after 2008 using the official APIs of Scopus and Web of Science. The search yielded 1,067 articles, from which 695 unique potential green job titles were identified. The retrieval-augmented generation model used the advanced text analysis capabilities of Generative Pre-trained Transformer 4, providing a reproducible method to categorize jobs within various green economy sectors. The research clustered these job titles into 25 distinct sectors. This categorization aligns closely with established frameworks, such as the U.S. Department of Labor’s Occupational Information Network, and suggests potential new categories like green human resources. The findings demonstrate the efficacy of advanced natural language processing models in identifying emerging green job roles, contributing significantly to the ongoing discourse on the green economy transition.
ai green economy industry green jobs text mining occupational classification environment::environmental economics & policies social protections and labor::labor markets industry, innovation and infrastructure sdg 9 sdg 8 decent work and economic growth environment::green issues

Authors

Paliński, Michał, Aşık,Güneş, Güneş, Gajderowicz, Tomasz, Jakubowski, Maciej, Nas Özen , Efşan, Raju, Dhushyanth

Citation
“ Paliński, Michał ; Aşık,Güneş, Güneş ; Gajderowicz, Tomasz ; Jakubowski, Maciej ; Nas Özen , Efşan ; Raju, Dhushyanth . 2024 . Identification of an Expanded Inventory of Green Job Titles through AI-Driven Text Mining . Policy Research Working Paper; 10908 . © Washington, DC: World Bank . http://hdl.handle.net/10986/42163 License: CC BY 3.0 IGO . ”
Collection(s)
Policy Research Working Papers
DOI
http://dx.doi.org/10.1596/1813-9450-10908
Identifier externaldocumentum
34391661
Identifier internaldocumentum
34391661
Pages
33
Published in
United States of America
RelationisPartofseries
Policy Research Working Paper; 10908
Report
WPS10908
Rights
CC BY 3.0 IGO
Rights Holder
World Bank
Rights URI
https://creativecommons.org/licenses/by/3.0/igo/
UNIT
Social Protection & Labor ECA (HECSP)
URI
https://hdl.handle.net/10986/42163
date disclosure
2024-09-19
region geographical
World

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