消除大型语言模型的偏差:研究机会。

Journal of the Royal Society of New Zealand Pub Date : 2024-09-16 eCollection Date: 2025-01-01 DOI:10.1080/03036758.2024.2398567
Vithya Yogarajan, Gillian Dobbie, Te Taka Keegan
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引用次数: 0

摘要

大型语言模型(LLM)是医疗保健、金融和交通领域广泛采用的强大决策工具。迎接大型语言模型带来的机遇和创新势在必行。然而,LLMs 继承了各种来源(包括训练数据、算法设计和用户交互)的刻板印象、错误表述、歧视和社会偏见,从而引发了对平等、多样性和公平性的担忧。偏见问题引发了对偏见定义、检测和量化以及去偏见技术开发的更多研究。解决偏见问题的主要重点偏向于美国和欧洲等资源丰富的地区,导致对其他社会的研究很少。作为一个拥有独特历史、文化和社会构成的小国,新西兰奥特亚罗瓦(NZ)研究界有机会解决这一不足。本文介绍了在新西兰背景下对现有偏差度量和去偏差技术的实验性评估。本文概述了通过研究和文献综述得出的研究差距,讨论了该领域当前和正在进行的研究,并提出了新西兰研究机会的建议范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Debiasing large language models: research opportunities.

Large language models (LLMs) are powerful decision-making tools widely adopted in healthcare, finance, and transportation. Embracing the opportunities and innovations of LLMs is inevitable. However, LLMs inherit stereotypes, misrepresentations, discrimination, and societies' biases from various sources-including training data, algorithm design, and user interactions-resulting in concerns about equality, diversity, and fairness. The bias problem has triggered increased research towards defining, detecting and quantifying bias and developing debiasing techniques. The predominant focus in tackling the bias problem is skewed towards resource-rich regions such as the US and Europe, resulting in a scarcity of research in other societies. As a small country with a unique history, culture and social composition, there is an opportunity for Aotearoa New Zealand's (NZ) research community to address this inadequacy. This paper presents an experimental evaluation of existing bias metrics and debiasing techniques in the NZ context. Research gaps derived from the study and a literature review are outlined, current and ongoing research in this space are discussed, and the suggested scope of research opportunities for NZ are presented.

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