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Main Authors: Dai, Shi-Wei, Shie, Yan-Wei, Yang, Tsung-Huan, Ku, Lun-Wei, Li, Yung-Hui
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.19852
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author Dai, Shi-Wei
Shie, Yan-Wei
Yang, Tsung-Huan
Ku, Lun-Wei
Li, Yung-Hui
author_facet Dai, Shi-Wei
Shie, Yan-Wei
Yang, Tsung-Huan
Ku, Lun-Wei
Li, Yung-Hui
contents Personalized Large Language Models (LLMs) have been shown to be an effective way to create more engaging and enjoyable user-AI interactions. While previous studies have explored using prompts to elicit specific personality traits in LLMs, they have not optimized these prompts to maximize personality expression. To address this limitation, we propose PersonaPulse: Dynamic Profile Optimization for Realistic Personality Expression in LLMs, a framework that leverages LLMs' inherent knowledge of personality traits to iteratively enhance role-play prompts while integrating a situational response benchmark as a scoring tool, ensuring a more realistic and contextually grounded evaluation to guide the optimization process. Quantitative evaluations demonstrate that the prompts generated by PersonaPulse outperform those of prior work, which were designed based on personality descriptions from psychological studies. Additionally, we explore the relationship between model size and personality modeling through extensive experiments. Finally, we find that, for certain personality traits, the extent of personality evocation can be partially controlled by pausing the optimization process. These findings underscore the importance of prompt optimization in shaping personality expression within LLMs, offering valuable insights for future research on adaptive AI interactions.
format Preprint
id arxiv_https___arxiv_org_abs_2511_19852
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Profile-LLM: Dynamic Profile Optimization for Realistic Personality Expression in LLMs
Dai, Shi-Wei
Shie, Yan-Wei
Yang, Tsung-Huan
Ku, Lun-Wei
Li, Yung-Hui
Computation and Language
Personalized Large Language Models (LLMs) have been shown to be an effective way to create more engaging and enjoyable user-AI interactions. While previous studies have explored using prompts to elicit specific personality traits in LLMs, they have not optimized these prompts to maximize personality expression. To address this limitation, we propose PersonaPulse: Dynamic Profile Optimization for Realistic Personality Expression in LLMs, a framework that leverages LLMs' inherent knowledge of personality traits to iteratively enhance role-play prompts while integrating a situational response benchmark as a scoring tool, ensuring a more realistic and contextually grounded evaluation to guide the optimization process. Quantitative evaluations demonstrate that the prompts generated by PersonaPulse outperform those of prior work, which were designed based on personality descriptions from psychological studies. Additionally, we explore the relationship between model size and personality modeling through extensive experiments. Finally, we find that, for certain personality traits, the extent of personality evocation can be partially controlled by pausing the optimization process. These findings underscore the importance of prompt optimization in shaping personality expression within LLMs, offering valuable insights for future research on adaptive AI interactions.
title Profile-LLM: Dynamic Profile Optimization for Realistic Personality Expression in LLMs
topic Computation and Language
url https://arxiv.org/abs/2511.19852