用基础模型和生成式人工智能增强研究方法

IF 20.1 1区 管理学 Q1 INFORMATION SCIENCE & LIBRARY SCIENCE
Sippo Rossi, Matti Rossi, Raghava Rao Mukkamala, Jason Bennett Thatcher, Yogesh K. Dwivedi
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引用次数: 0

摘要

近年来,深度学习(DL)研究取得了显著进展。自然语言处理和图像生成已经从计算机科学期刊飞跃到开源社区和商业服务。建立在海量数据集上的预训练深度学习模型(也称为基础模型),如 GPT-3 和 BERT,引领了人工智能(AI)民主化的潮流。然而,这些模型作为研究工具的潜在用途却因人们担心这项技术会被滥用而黯然失色。一些人认为,人工智能威胁到学术研究,建议人工智能不应取代人类合作者。另一些人则认为人工智能创造了机遇,认为人工智能与人类的合作可以加快研究速度。本社论采取建设性的立场,概述了使用基础模型推动科学发展的方法。我们认为,DL 工具可用于创建逼真的实验,并通过合成数据而非真实数据使特定类型的定量研究变得可行或更安全。总之,我们认为,在信息系统研究中使用生成式人工智能和基础模型作为工具还处于非常早期的阶段。不过,如果我们谨慎行事,并为使用基础模型和生成式人工智能制定明确的指导方针,它们对科学和学术的益处将远远大于风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Augmenting research methods with foundation models and generative AI

Deep learning (DL) research has made remarkable progress in recent years. Natural language processing and image generation have made the leap from computer science journals to open-source communities and commercial services. Pre-trained DL models built on massive datasets, also known as foundation models, such as the GPT-3 and BERT, have led the way in democratizing artificial intelligence (AI). However, their potential use as research tools has been overshadowed by fears of how this technology can be misused. Some have argued that AI threatens scholarship, suggesting they should not replace human collaborators. Others have argued that AI creates opportunities, suggesting that AI-human collaborations could speed up research. Taking a constructive stance, this editorial outlines ways to use foundation models to advance science. We argue that DL tools can be used to create realistic experiments and make specific types of quantitative studies feasible or safer with synthetic rather than real data. All in all, we posit that the use of generative AI and foundation models as a tool in information systems research is in very early stages. Still, if we proceed cautiously and develop clear guidelines for using foundation models and generative AI, their benefits for science and scholarship far outweigh their risks.

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来源期刊
International Journal of Information Management
International Journal of Information Management INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
53.10
自引率
6.20%
发文量
111
审稿时长
24 days
期刊介绍: The International Journal of Information Management (IJIM) is a distinguished, international, and peer-reviewed journal dedicated to providing its readers with top-notch analysis and discussions within the evolving field of information management. Key features of the journal include: Comprehensive Coverage: IJIM keeps readers informed with major papers, reports, and reviews. Topical Relevance: The journal remains current and relevant through Viewpoint articles and regular features like Research Notes, Case Studies, and a Reviews section, ensuring readers are updated on contemporary issues. Focus on Quality: IJIM prioritizes high-quality papers that address contemporary issues in information management.
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