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Balancing Large Language Model Alignment and Algorithmic Fidelity in Social Science Research

DSEID
DSEID-001-4218854
DOI
10.1177/00491241251342008
Journal
Sociological Methods & Research
Publisher
SAGE Publications
Published
2025-8
Status
metadata_only

Abstract

Generative artificial intelligence (AI) has the potential to revolutionize social science research. However, researchers face the difficult challenge of choosing a specific AI model, often without social science-specific guidance. To demonstrate the importance of this choice, we present an evaluation of the effect of alignment, or human-driven modification, on the ability of large language models (LLMs) to simulate the attitudes of human populations (sometimes called silicon sampling ). We benchmark aligned and unaligned versions of six open-source LLMs against each other and compare them to similar responses by humans. Our results suggest that model alignment impacts output in predictable ways, with implications for prompting, task completion, and the substantive content of LLM-based results. We conclude that researchers must be aware of the complex ways in which model training affects their research and carefully consider model choice for each project. We discuss future steps to improve how social scientists work with generative AI tools.

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Metadata

Title
Balancing Large Language Model Alignment and Algorithmic Fidelity in Social Science Research
Delta ID
DSEID-001-4218854
Authors
Alex Lyman, Bryce Hepner, Lisa P. Argyle, Ethan C. Busby, Joshua R. Gubler, David Wingate
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-001-4218854