LLM-Mirror: A Generated-Persona Approach for Survey Pre-Testing
Surveys are widely used in social sciences to understand human behavior, but their implementation often involves iterative adjustments that demand significant effort and resources. To this end, researchers have increasingly turned to large language models (LLMs) to simulate human behavior. While exi...
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Zusammenfassung: | Surveys are widely used in social sciences to understand human behavior, but
their implementation often involves iterative adjustments that demand
significant effort and resources. To this end, researchers have increasingly
turned to large language models (LLMs) to simulate human behavior. While
existing studies have focused on distributional similarities, individual-level
comparisons remain underexplored. Building upon prior work, we investigate
whether providing LLMs with respondents' prior information can replicate both
statistical distributions and individual decision-making patterns using Partial
Least Squares Structural Equation Modeling (PLS-SEM), a well-established causal
analysis method. We also introduce the concept of the LLM-Mirror, user personas
generated by supplying respondent-specific information to the LLM. By comparing
responses generated by the LLM-Mirror with actual individual survey responses,
we assess its effectiveness in replicating individual-level outcomes. Our
findings show that: (1) PLS-SEM analysis shows LLM-generated responses align
with human responses, (2) LLMs, when provided with respondent-specific
information, are capable of reproducing individual human responses, and (3)
LLM-Mirror responses closely follow human responses at the individual level.
These findings highlight the potential of LLMs as a complementary tool for
pre-testing surveys and optimizing research design. |
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DOI: | 10.48550/arxiv.2412.03162 |