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Autori principali: Yang, Zhenyuan, Liu, Zhengliang, Zhang, Jing, Lu, Cen, Tai, Jiaxin, Zhong, Tianyang, Li, Yiwei, Zhao, Siyan, Yao, Teng, Liu, Qing, Yang, Jinlin, Liu, Qixin, Li, Zhaowei, Wang, Kexin, Ma, Longjun, Zhu, Dajiang, Ren, Yudan, Ge, Bao, Zhang, Wei, Qiang, Ning, Zhang, Tuo, Liu, Tianming
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2410.18142
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author Yang, Zhenyuan
Liu, Zhengliang
Zhang, Jing
Lu, Cen
Tai, Jiaxin
Zhong, Tianyang
Li, Yiwei
Zhao, Siyan
Yao, Teng
Liu, Qing
Yang, Jinlin
Liu, Qixin
Li, Zhaowei
Wang, Kexin
Ma, Longjun
Zhu, Dajiang
Ren, Yudan
Ge, Bao
Zhang, Wei
Qiang, Ning
Zhang, Tuo
Liu, Tianming
author_facet Yang, Zhenyuan
Liu, Zhengliang
Zhang, Jing
Lu, Cen
Tai, Jiaxin
Zhong, Tianyang
Li, Yiwei
Zhao, Siyan
Yao, Teng
Liu, Qing
Yang, Jinlin
Liu, Qixin
Li, Zhaowei
Wang, Kexin
Ma, Longjun
Zhu, Dajiang
Ren, Yudan
Ge, Bao
Zhang, Wei
Qiang, Ning
Zhang, Tuo
Liu, Tianming
contents This study examines the capabilities of advanced Large Language Models (LLMs), particularly the o1 model, in the context of literary analysis. The outputs of these models are compared directly to those produced by graduate-level human participants. By focusing on two Nobel Prize-winning short stories, 'Nine Chapters' by Han Kang, the 2024 laureate, and 'Friendship' by Jon Fosse, the 2023 laureate, the research explores the extent to which AI can engage with complex literary elements such as thematic analysis, intertextuality, cultural and historical contexts, linguistic and structural innovations, and character development. Given the Nobel Prize's prestige and its emphasis on cultural, historical, and linguistic richness, applying LLMs to these works provides a deeper understanding of both human and AI approaches to interpretation. The study uses qualitative and quantitative evaluations of coherence, creativity, and fidelity to the text, revealing the strengths and limitations of AI in tasks typically reserved for human expertise. While LLMs demonstrate strong analytical capabilities, particularly in structured tasks, they often fall short in emotional nuance and coherence, areas where human interpretation excels. This research underscores the potential for human-AI collaboration in the humanities, opening new opportunities in literary studies and beyond.
format Preprint
id arxiv_https___arxiv_org_abs_2410_18142
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Analyzing Nobel Prize Literature with Large Language Models
Yang, Zhenyuan
Liu, Zhengliang
Zhang, Jing
Lu, Cen
Tai, Jiaxin
Zhong, Tianyang
Li, Yiwei
Zhao, Siyan
Yao, Teng
Liu, Qing
Yang, Jinlin
Liu, Qixin
Li, Zhaowei
Wang, Kexin
Ma, Longjun
Zhu, Dajiang
Ren, Yudan
Ge, Bao
Zhang, Wei
Qiang, Ning
Zhang, Tuo
Liu, Tianming
Computation and Language
Artificial Intelligence
This study examines the capabilities of advanced Large Language Models (LLMs), particularly the o1 model, in the context of literary analysis. The outputs of these models are compared directly to those produced by graduate-level human participants. By focusing on two Nobel Prize-winning short stories, 'Nine Chapters' by Han Kang, the 2024 laureate, and 'Friendship' by Jon Fosse, the 2023 laureate, the research explores the extent to which AI can engage with complex literary elements such as thematic analysis, intertextuality, cultural and historical contexts, linguistic and structural innovations, and character development. Given the Nobel Prize's prestige and its emphasis on cultural, historical, and linguistic richness, applying LLMs to these works provides a deeper understanding of both human and AI approaches to interpretation. The study uses qualitative and quantitative evaluations of coherence, creativity, and fidelity to the text, revealing the strengths and limitations of AI in tasks typically reserved for human expertise. While LLMs demonstrate strong analytical capabilities, particularly in structured tasks, they often fall short in emotional nuance and coherence, areas where human interpretation excels. This research underscores the potential for human-AI collaboration in the humanities, opening new opportunities in literary studies and beyond.
title Analyzing Nobel Prize Literature with Large Language Models
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2410.18142