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Machine Bias. How Do Generative Language Models Answer Opinion Polls? <sup/>

DSEID
DSEID-001-8079861
DOI
10.1177/00491241251330582
Journal
Sociological Methods &amp; Research
Publisher
SAGE Publications
Published
2025-8
Status
metadata_only

Abstract

Generative artificial intelligence (AI) is increasingly presented as a potential substitute for humans, including as research subjects. However, there is no scientific consensus on how closely these in silico clones can emulate survey respondents. While some defend the use of these “synthetic users,” others point toward social biases in the responses provided by large language models (LLMs). In this article, we demonstrate that these critics are right to be wary of using generative AI to emulate respondents, but probably not for the right reasons. Our results show (i) that to date, models cannot replace research subjects for opinion or attitudinal research; (ii) that they display a strong bias and a low variance on each topic; and (iii) that this bias randomly varies from one topic to the next. We label this pattern “machine bias,” a concept we define, and whose consequences for LLM-based research we further explore.

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Metadata

Title
Machine Bias. How Do Generative Language Models Answer Opinion Polls? <sup/>
Delta ID
DSEID-001-8079861
Authors
Julien Boelaert, Samuel Coavoux, Étienne Ollion, Ivaylo Petev, Patrick Präg
Abstract source
crossref
Source URL
None
Access
closed_or_uncertain
Licence
unknown
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WhenEventFieldOldNew
2026-06-18 19:37:53.011249+00:00identifier_assignedDSEIDDSEID-001-8079861