解决生成人工智能中的偏见:信息管理中的挑战和研究机遇

IF 8.2 2区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Xiahua Wei , Naveen Kumar , Han Zhang
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引用次数: 0

摘要

生成式人工智能技术,尤其是大型语言模型(llm),已经改变了信息管理系统,但也引入了实质性的偏见,可能会影响它们在为商业决策提供信息方面的有效性。这一挑战为信息管理学者提供了一个独特的机会,通过在法学硕士的广泛应用中识别和解决这些偏见来推进该领域。在讨论偏见来源和当前检测和减轻偏见的方法的基础上,本文试图确定未来研究的差距和机会。通过结合伦理考虑、政策影响和社会技术观点,我们专注于开发一个涵盖生成式人工智能系统主要利益相关者的框架,提出关键的研究问题,并激发讨论。我们的目标是为研究人员提供可行的途径,以解决法学硕士应用中的偏见,从而推进信息管理研究,最终为商业实践提供信息。我们的前瞻性框架和研究议程倡导跨学科的方法,创新的方法,动态的视角和严格的评估,以确保生成人工智能驱动的信息系统的公平性和透明度。我们希望这项研究能够为信息管理学者解决这一关键问题提供行动呼吁,指导基于法学硕士的商业实践系统的公平性和有效性的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Addressing bias in generative AI: Challenges and research opportunities in information management
Generative AI technologies, particularly Large Language Models (LLMs), have transformed information management systems but introduced substantial biases that can compromise their effectiveness in informing business decision-making. This challenge presents information management scholars with a unique opportunity to advance the field by identifying and addressing these biases across extensive applications of LLMs. Building on the discussion on bias sources and current methods for detecting and mitigating bias, this paper seeks to identify gaps and opportunities for future research. By incorporating ethical considerations, policy implications, and sociotechnical perspectives, we focus on developing a framework that covers major stakeholders of Generative AI systems, proposing key research questions, and inspiring discussion. Our goal is to provide actionable pathways for researchers to address bias in LLM applications, thereby advancing research in information management that ultimately informs business practices. Our forward-looking framework and research agenda advocate interdisciplinary approaches, innovative methods, dynamic perspectives, and rigorous evaluation to ensure fairness and transparency in Generative AI-driven information systems. We expect this study to serve as a call to action for information management scholars to tackle this critical issue, guiding the improvement of fairness and effectiveness in LLM-based systems for business practice.
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来源期刊
Information & Management
Information & Management 工程技术-计算机:信息系统
CiteScore
17.90
自引率
6.10%
发文量
123
审稿时长
1 months
期刊介绍: Information & Management is a publication that caters to researchers in the field of information systems as well as managers, professionals, administrators, and senior executives involved in designing, implementing, and managing Information Systems Applications.
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