Book chapter Q4
Socio-Economic Consequences of Generative AI: A Review of Methodological Approaches
Carlos J. Costa (Costa, C.); Joao Tiago Aparicio (Joao Tiago Aparicio); Mnuela Aparicio (Mnuela Aparicio);
Book Title
Proceedings of 19th Iberian Conference on Information Systems and Technologies (CISTI 2024)
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Abstract
The widespread adoption of generative artificial intelligence (AI) has fundamentally transformed technological landscapes and societal structures in recent years. Our objective is to identify the primary methodologies that may be used to help predict the economic and social impacts of generative AI adoption. Through a comprehensive literature review, we uncover a range of methodologies poised to assess the multifaceted impacts of this technological revolution. We explore Agent-Based Simulation (ABS), Econometric Models, Input-Output Analysis, Reinforcement Learning (RL) for Decision-Making Agents, Surveys and Interviews, Scenario Analysis, Policy Analysis, and the Delphi Method. Our findings have allowed us to identify these approaches’ main strengths and weaknesses and their adequacy in coping with uncertainty, robustness, and resource requirements.
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Keywords
  • Computer and Information Sciences - Natural Sciences
  • Civil Engineering - Engineering and Technology