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Main Authors: Zhang, Yujie, Yuan, Weikang, Jiang, Zhuoren, Yan, Pengwei
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.28197
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author Zhang, Yujie
Yuan, Weikang
Jiang, Zhuoren
Yan, Pengwei
author_facet Zhang, Yujie
Yuan, Weikang
Jiang, Zhuoren
Yan, Pengwei
contents Pluralistic alignment is essential for adapting large language models (LLMs) to the diverse preferences of individuals and minority groups. However, existing approaches often mix stable personal traits with episode-specific factors, limiting their ability to generalize across episodes. To address this challenge, we introduce EpiPersona, a framework for explicit persona-episode coupling. EpiPersona first projects noisy preference feedback into a low-dimensional persona space, where similar personas are aggregated into shared discrete codes. This process separates enduring personal characteristics from situational signals without relying on predefined preference dimensions. The inferred persona representation is then coupled with the current episode, enabling episode-aware preference prediction. Extensive experiments show that EpiPersona consistently outperforms the baselines. It achieves notable performance gains in hard episodic-shift scenarios, while remaining effective with sparse preference data.
format Preprint
id arxiv_https___arxiv_org_abs_2603_28197
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publishDate 2026
record_format arxiv
spellingShingle EpiPersona: Persona Projection and Episode Coupling for Pluralistic Preference Modeling
Zhang, Yujie
Yuan, Weikang
Jiang, Zhuoren
Yan, Pengwei
Artificial Intelligence
Pluralistic alignment is essential for adapting large language models (LLMs) to the diverse preferences of individuals and minority groups. However, existing approaches often mix stable personal traits with episode-specific factors, limiting their ability to generalize across episodes. To address this challenge, we introduce EpiPersona, a framework for explicit persona-episode coupling. EpiPersona first projects noisy preference feedback into a low-dimensional persona space, where similar personas are aggregated into shared discrete codes. This process separates enduring personal characteristics from situational signals without relying on predefined preference dimensions. The inferred persona representation is then coupled with the current episode, enabling episode-aware preference prediction. Extensive experiments show that EpiPersona consistently outperforms the baselines. It achieves notable performance gains in hard episodic-shift scenarios, while remaining effective with sparse preference data.
title EpiPersona: Persona Projection and Episode Coupling for Pluralistic Preference Modeling
topic Artificial Intelligence
url https://arxiv.org/abs/2603.28197