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Autori principali: Ma, Yuanchi, Shi, Kaize, He, Hui, Zhang, Zhihua, Lei, Zhongxiang, Qiu, Ziliang, Hu, Renfen, Liu, Jiamou
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2603.14430
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author Ma, Yuanchi
Shi, Kaize
He, Hui
Zhang, Zhihua
Lei, Zhongxiang
Qiu, Ziliang
Hu, Renfen
Liu, Jiamou
author_facet Ma, Yuanchi
Shi, Kaize
He, Hui
Zhang, Zhihua
Lei, Zhongxiang
Qiu, Ziliang
Hu, Renfen
Liu, Jiamou
contents Large Language Models (LLMs) have demonstrated remarkable capabilities in narrative generation. However, they often produce structurally homogenized stories, frequently following repetitive arrangements and combinations of plot events along with stereotypical resolutions. In this paper, we propose a novel theoretical framework for analysis by incorporating Proppian narratology and narrative functions. This framework is used to analyze the composition of narrative texts generated by LLMs to uncover their underlying narrative logic. Taking Chinese web literature as our research focus, we extend Propp's narrative theory, defining 34 narrative functions suited to modern web narrative structures. We further construct a human-annotated corpus to support the analysis of narrative structures within LLM-generated text. Experiments reveal that the primary reasons for the singular narrative logic and severe homogenization in generated texts are that current LLMs are unable to correctly comprehend the meanings of narrative functions and instead adhere to rigid narrative generation paradigms.
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id arxiv_https___arxiv_org_abs_2603_14430
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Creative Convergence or Imitation? Genre-Specific Homogeneity in LLM-Generated Chinese Literature
Ma, Yuanchi
Shi, Kaize
He, Hui
Zhang, Zhihua
Lei, Zhongxiang
Qiu, Ziliang
Hu, Renfen
Liu, Jiamou
Computation and Language
Large Language Models (LLMs) have demonstrated remarkable capabilities in narrative generation. However, they often produce structurally homogenized stories, frequently following repetitive arrangements and combinations of plot events along with stereotypical resolutions. In this paper, we propose a novel theoretical framework for analysis by incorporating Proppian narratology and narrative functions. This framework is used to analyze the composition of narrative texts generated by LLMs to uncover their underlying narrative logic. Taking Chinese web literature as our research focus, we extend Propp's narrative theory, defining 34 narrative functions suited to modern web narrative structures. We further construct a human-annotated corpus to support the analysis of narrative structures within LLM-generated text. Experiments reveal that the primary reasons for the singular narrative logic and severe homogenization in generated texts are that current LLMs are unable to correctly comprehend the meanings of narrative functions and instead adhere to rigid narrative generation paradigms.
title Creative Convergence or Imitation? Genre-Specific Homogeneity in LLM-Generated Chinese Literature
topic Computation and Language
url https://arxiv.org/abs/2603.14430