Towards a transparent and reproducible AI-assisted research paper writing.

Jeongbin Park
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Abstract

Artificial intelligence (AI)-assisted scientific writing is now a common practice in academic publishing, yet concerns persist regarding the authenticity and reproducibility of AI-generated content. While AI tools offer significant advantages, particularly for non-native English speakers who face substantial linguistic barriers in scientific communication, the risk of AI hallucinations and fabricated citations threatens the integrity of scholarly discourse. Journals often require disclosure of the entire AI prompt rather than meaningful intellectual contributions, but this is becoming increasingly impractical as AI prompts are getting longer and more complex. In this paper, I argue that transparency in AI-assisted writing should focus on capturing the author's core research perspective and section-specific key points-the foundational elements that drive meaningful scientific communication. To address this challenge, I developed a web-based tool that implements a human-in-the-loop approach requiring authors to define their research perspective and create detailed outlines with key points before any AI text generation occurs. The tool mitigates AI hallucination by only allowing the use of user-provided citations and generating transparency reports documenting the key elements used for text generation. I validated this approach by writing this paper using the tool itself, demonstrating how the transparency reporting method works in practice. This methodology ensures that AI serves as a linguistic tool rather than a content generator, preserving scientific integrity while democratizing access to high-quality academic writing across linguistic and cultural boundaries.

Abstract Image

朝着透明和可重复的人工智能辅助研究论文写作的方向发展。
人工智能(AI)辅助的科学写作现在是学术出版领域的一种常见做法,但对人工智能生成内容的真实性和可重复性的担忧仍然存在。虽然人工智能工具提供了显著的优势,特别是对于那些在科学交流中面临巨大语言障碍的非英语母语人士,但人工智能幻觉和捏造引用的风险威胁着学术话语的完整性。期刊通常要求披露整个人工智能提示,而不是有意义的智力贡献,但随着人工智能提示变得越来越长、越来越复杂,这变得越来越不切实际。在本文中,我认为人工智能辅助写作的透明度应侧重于捕捉作者的核心研究视角和特定章节的关键点——这是推动有意义的科学交流的基本要素。为了应对这一挑战,我开发了一个基于网络的工具,实现了一种“人在循环”的方法,要求作者在任何人工智能文本生成之前定义他们的研究视角,并创建包含关键点的详细大纲。该工具只允许使用用户提供的引用,并生成透明报告,记录用于文本生成的关键元素,从而减轻了人工智能的幻觉。我通过使用工具本身写这篇论文来验证这种方法,演示了透明度报告方法在实践中是如何工作的。这种方法确保人工智能作为语言工具而不是内容生成器,在保持科学完整性的同时,使跨语言和文化边界的高质量学术写作民主化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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