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Auteurs principaux: Basil, Savir, Shapiro, Ina, Shapiro, Dan, Mollick, Ethan, Mollick, Lilach, Meincke, Lennart
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2512.05858
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author Basil, Savir
Shapiro, Ina
Shapiro, Dan
Mollick, Ethan
Mollick, Lilach
Meincke, Lennart
author_facet Basil, Savir
Shapiro, Ina
Shapiro, Dan
Mollick, Ethan
Mollick, Lilach
Meincke, Lennart
contents This is the fourth in a series of short reports that help business, education, and policy leaders understand the technical details of working with AI through rigorous testing. Here, we ask whether assigning personas to models improves performance on difficult objective multiple-choice questions. We study both domain-specific expert personas and low-knowledge personas, evaluating six models on GPQA Diamond (Rein et al. 2024) and MMLU-Pro (Wang et al. 2024), graduate-level questions spanning science, engineering, and law. We tested three approaches: -In-Domain Experts: Assigning the model an expert persona ("you are a physics expert") matched to the problem type (physics problems) had no significant impact on performance (with the exception of the Gemini 2.0 Flash model). -Off-Domain Experts (Domain-Mismatched): Assigning the model an expert persona ("you are a physics expert") not matched to the problem type (law problems) resulted in marginal differences. -Low-Knowledge Personas: We assigned the model negative capability personas (layperson, young child, toddler), which were generally harmful to benchmark accuracy. Across both benchmarks, persona prompts generally did not improve accuracy relative to a no-persona baseline. Expert personas showed no consistent benefit across models, with few exceptions. Domain-mismatched expert personas sometimes degraded performance. Low-knowledge personas often reduced accuracy. These results are about the accuracy of answers only; personas may serve other purposes (such as altering the tone of outputs), beyond improving factual performance.
format Preprint
id arxiv_https___arxiv_org_abs_2512_05858
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Prompting Science Report 4: Playing Pretend: Expert Personas Don't Improve Factual Accuracy
Basil, Savir
Shapiro, Ina
Shapiro, Dan
Mollick, Ethan
Mollick, Lilach
Meincke, Lennart
Computation and Language
This is the fourth in a series of short reports that help business, education, and policy leaders understand the technical details of working with AI through rigorous testing. Here, we ask whether assigning personas to models improves performance on difficult objective multiple-choice questions. We study both domain-specific expert personas and low-knowledge personas, evaluating six models on GPQA Diamond (Rein et al. 2024) and MMLU-Pro (Wang et al. 2024), graduate-level questions spanning science, engineering, and law. We tested three approaches: -In-Domain Experts: Assigning the model an expert persona ("you are a physics expert") matched to the problem type (physics problems) had no significant impact on performance (with the exception of the Gemini 2.0 Flash model). -Off-Domain Experts (Domain-Mismatched): Assigning the model an expert persona ("you are a physics expert") not matched to the problem type (law problems) resulted in marginal differences. -Low-Knowledge Personas: We assigned the model negative capability personas (layperson, young child, toddler), which were generally harmful to benchmark accuracy. Across both benchmarks, persona prompts generally did not improve accuracy relative to a no-persona baseline. Expert personas showed no consistent benefit across models, with few exceptions. Domain-mismatched expert personas sometimes degraded performance. Low-knowledge personas often reduced accuracy. These results are about the accuracy of answers only; personas may serve other purposes (such as altering the tone of outputs), beyond improving factual performance.
title Prompting Science Report 4: Playing Pretend: Expert Personas Don't Improve Factual Accuracy
topic Computation and Language
url https://arxiv.org/abs/2512.05858