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LLMは科学コミュニケーションをどう変えるか?執筆習慣と読書体験の変化を測定する
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- 大規模言語モデル(LLM)が自然言語処理分野の論文執筆に与える影響を、実データと合成データを用いて分析した。
- LLMの利用により、単語の頻度や文脈、構文、語彙の多様性などに変化が見られ、読書体験にも主観的な影響があることが示された。
- 専門家はLLM支援のテキストをより理解しやすく、刺激的だと評価したが、AI支援執筆に対する否定的な感情も示した。
Abstract
Has the style of scientific communication changed due to the growing use of large language models in the writing process? We address this question in the domain of Natural Language Processing by leveraging two data resources we create: a naturalistic corpus of over 37,000 papers from the ACL Anthology (2020-2024); and a synthetic dataset of 3,000 human-written passages and their LLM-generated improvements. We first implement a series of diachronic lexical analyses, showing that both word frequency and usage contexts have changed significantly over time, indicating semantic specialization in some cases and generalization in others. Broadening our perspective, we then model a range of more complex stylistic features and find that LLM-modified texts more frequently contain certain syntactic constructions, more complex and longer words and a lower lexical diversity. Finally, we connect these changes in writing practices to subjective reading experience through a pilot annotation study with 20 domain experts. They overall rate LLM-improved texts as more understandable and exciting, but also express negative qualitative attitudes towards LLMs, highlighting the strongly subjective effect of AI-assisted writing on reading experience.
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