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Main Authors: Chen, Jing, Zhu, Xinyu, Yang, Cheng, Shi, Chufan, Xi, Yadong, Zhang, Yuxiang, Wang, Junjie, Pu, Jiashu, Zhang, Rongsheng, Yang, Yujiu, Feng, Tian
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.11683
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author Chen, Jing
Zhu, Xinyu
Yang, Cheng
Shi, Chufan
Xi, Yadong
Zhang, Yuxiang
Wang, Junjie
Pu, Jiashu
Zhang, Rongsheng
Yang, Yujiu
Feng, Tian
author_facet Chen, Jing
Zhu, Xinyu
Yang, Cheng
Shi, Chufan
Xi, Yadong
Zhang, Yuxiang
Wang, Junjie
Pu, Jiashu
Zhang, Rongsheng
Yang, Yujiu
Feng, Tian
contents Generative AI has demonstrated unprecedented creativity in the field of computer vision, yet such phenomena have not been observed in natural language processing. In particular, large language models (LLMs) can hardly produce written works at the level of human experts due to the extremely high complexity of literature writing. In this paper, we present HoLLMwood, an automated framework for unleashing the creativity of LLMs and exploring their potential in screenwriting, which is a highly demanding task. Mimicking the human creative process, we assign LLMs to different roles involved in the real-world scenario. In addition to the common practice of treating LLMs as ${Writer}$, we also apply LLMs as ${Editor}$, who is responsible for providing feedback and revision advice to ${Writer}$. Besides, to enrich the characters and deepen the plots, we introduce a role-playing mechanism and adopt LLMs as ${Actors}$ that can communicate and interact with each other. Evaluations on automatically generated screenplays show that HoLLMwood substantially outperforms strong baselines in terms of coherence, relevance, interestingness and overall quality.
format Preprint
id arxiv_https___arxiv_org_abs_2406_11683
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle HoLLMwood: Unleashing the Creativity of Large Language Models in Screenwriting via Role Playing
Chen, Jing
Zhu, Xinyu
Yang, Cheng
Shi, Chufan
Xi, Yadong
Zhang, Yuxiang
Wang, Junjie
Pu, Jiashu
Zhang, Rongsheng
Yang, Yujiu
Feng, Tian
Computation and Language
Generative AI has demonstrated unprecedented creativity in the field of computer vision, yet such phenomena have not been observed in natural language processing. In particular, large language models (LLMs) can hardly produce written works at the level of human experts due to the extremely high complexity of literature writing. In this paper, we present HoLLMwood, an automated framework for unleashing the creativity of LLMs and exploring their potential in screenwriting, which is a highly demanding task. Mimicking the human creative process, we assign LLMs to different roles involved in the real-world scenario. In addition to the common practice of treating LLMs as ${Writer}$, we also apply LLMs as ${Editor}$, who is responsible for providing feedback and revision advice to ${Writer}$. Besides, to enrich the characters and deepen the plots, we introduce a role-playing mechanism and adopt LLMs as ${Actors}$ that can communicate and interact with each other. Evaluations on automatically generated screenplays show that HoLLMwood substantially outperforms strong baselines in terms of coherence, relevance, interestingness and overall quality.
title HoLLMwood: Unleashing the Creativity of Large Language Models in Screenwriting via Role Playing
topic Computation and Language
url https://arxiv.org/abs/2406.11683