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Main Authors: Zhang, Yanyue, He, Yulan, Zhou, Deyu
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.00449
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author Zhang, Yanyue
He, Yulan
Zhou, Deyu
author_facet Zhang, Yanyue
He, Yulan
Zhou, Deyu
contents Personalized opinion summarization is crucial as it considers individual user interests while generating product summaries. Recent studies show that although large language models demonstrate powerful text summarization and evaluation capabilities without the need for training data, they face difficulties in personalized tasks involving long texts. To address this, \textbf{Rehearsal}, a personalized opinion summarization framework via LLMs-based role-playing is proposed. Having the model act as the user, the model can better understand the user's personalized needs. Additionally, a role-playing supervisor and practice process are introduced to improve the role-playing ability of the LLMs, leading to a better expression of user needs. Furthermore, through suggestions from virtual users, the summary generation is intervened, ensuring that the generated summary includes information of interest to the user, thus achieving personalized summary generation. Experiment results demonstrate that our method can effectively improve the level of personalization in large model-generated summaries.
format Preprint
id arxiv_https___arxiv_org_abs_2503_00449
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Rehearse With User: Personalized Opinion Summarization via Role-Playing based on Large Language Models
Zhang, Yanyue
He, Yulan
Zhou, Deyu
Computation and Language
Artificial Intelligence
Personalized opinion summarization is crucial as it considers individual user interests while generating product summaries. Recent studies show that although large language models demonstrate powerful text summarization and evaluation capabilities without the need for training data, they face difficulties in personalized tasks involving long texts. To address this, \textbf{Rehearsal}, a personalized opinion summarization framework via LLMs-based role-playing is proposed. Having the model act as the user, the model can better understand the user's personalized needs. Additionally, a role-playing supervisor and practice process are introduced to improve the role-playing ability of the LLMs, leading to a better expression of user needs. Furthermore, through suggestions from virtual users, the summary generation is intervened, ensuring that the generated summary includes information of interest to the user, thus achieving personalized summary generation. Experiment results demonstrate that our method can effectively improve the level of personalization in large model-generated summaries.
title Rehearse With User: Personalized Opinion Summarization via Role-Playing based on Large Language Models
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2503.00449