LLM simulations of user design preferences show significant systematic discrepancies from real aggregated user data across multiple experimental manipulations, with synthetic justifications lacking depth and relying on generic patterns instead.
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Distorted Perspectives of LLM-Simulated Preferences: Can AI Mislead Design?
LLM simulations of user design preferences show significant systematic discrepancies from real aggregated user data across multiple experimental manipulations, with synthetic justifications lacking depth and relying on generic patterns instead.
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