The Potential Distributive Impact of AI-driven Labor Changes in Latin America
Matias Ciaschi,
Guillermo Falcone,
Santiago Garganta,
Leonardo Gasparini,
Octavio BertÃn and
LucÃa Ramirez-Leira
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Matias Ciaschi: CEDLAS-IIE-FCE-UNLP and CONICET
Guillermo Falcone: CEDLAS-IIE-FCE-UNLP and CONICET
Santiago Garganta: CEDLAS-IIE-FCE-UNLP
Leonardo Gasparini: CEDLAS-IIE-FCE-UNLP and CONICET
Octavio BertÃn: CEDLAS-IIE-FCE-UNLP
LucÃa Ramirez-Leira: CEDLAS-IIE-FCE-UNLP
CEDLAS, Working Papers from CEDLAS, Universidad Nacional de La Plata
Abstract:
This paper investigates the potential distributional consequences of artificial intelligence (AI) adoption in Latin American labor markets. Using harmonized household survey data from 14 countries, we combine four recently developed AI occupational exposure indices—the AI Occupational Exposure Index (AIOE), the ComplementarityAdjusted AIOE (C-AIOE), the Generative AI Exposure Index (GBB), and the AIGenerated Occupational Exposure Index (GENOE)—to analyze patterns across countries and worker groups. We validate these measures by comparing task profiles between Latin America and high-income economies using PIAAC data, and develop a contextual adjustment that incorporates informality, wage structures, and union coverage. Finally, we simulate first-order impacts of AI-induced displacement on earnings, poverty, and inequality. The results show substantial heterogeneity, with higher levels of AI-related risk among women, younger, more educated, and formal workers. Indices that account for task complementarities show flatter gradients across the income and education distribution. Simulations suggest that displacement effects may lead to only moderate increases in inequality and poverty in the absence of mitigating policies.
JEL-codes: D31 J21 O33 (search for similar items in EconPapers)
Pages: 66 pages
Date: 2025-12
New Economics Papers: this item is included in nep-ain, nep-lma and nep-tid
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Persistent link: https://EconPapers.repec.org/RePEc:dls:wpaper:0361
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