Corvinus
Corvinus

Large language models (LLMs) as agents for augmented democracy

Gudiño, JF, Grandi, U and Hidalgo, César A. ORCID: https://orcid.org/0000-0002-6977-9492 (2024) Large language models (LLMs) as agents for augmented democracy. Philosophical Transactions of the Royal Society A - Mathematical, Physical and Engineering Sciences, 382 (2285). DOI 10.1098/rsta.2024.0100

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Official URL: https://doi.org/10.1098/rsta.2024.0100


Abstract

We explore an augmented democracy system built on off-the-shelf large language models (LLMs) fine-tuned to augment data on citizens' preferences elicited over policies extracted from the government programmes of the two main candidates of Brazil's 2022 presidential election. We use a train-test cross-validation set-up to estimate the accuracy with which the LLMs predict both: a subject's individual political choices and the aggregate preferences of the full sample of participants. At the individual level, we find that LLMs predict out of sample preferences more accurately than a 'bundle rule', which would assume that citizens always vote for the proposals of the candidate aligned with their self-reported political orientation. At the population level, we show that a probabilistic sample augmented by an LLM provides a more accurate estimate of the aggregate preferences of a population than the non-augmented probabilistic sample alone. Together, these results indicate that policy preference data augmented using LLMs can capture nuances that transcend party lines and represents a promising avenue of research for data augmentation.This article is part of the theme issue 'Co-creating the future: participatory cities and digital governance'.

Item Type:Article
Uncontrolled Keywords:Large language models (LLMs), accuracy ; Presidential election, Brazil ; Democracy and Technology ;
Divisions:Corvinus Institute for Advanced Studies (CIAS)
Subjects:Decision making
Political science
Computer science
DOI:10.1098/rsta.2024.0100
ID Code:10664
Deposited By: MTMT SWORD
Deposited On:12 Dec 2024 13:59
Last Modified:12 Dec 2024 13:59

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