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Data and AI governance: Promoting equity, ethics, and fairness in large language models
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本文探讨机器学习模型全生命周期中偏见治理的方法,基于BEATS测试套件,分析大型语言模型中的偏见与公平性问题,提出数据与AI治理框架,以提升AI系统的安全性、责任性,并促进负责任、道德一致的AI应用发展。

arXiv:2508.03970v1 Announce Type: cross Abstract: In this paper, we cover approaches to systematically govern, assess and quantify bias across the complete life cycle of machine learning models, from initial development and validation to ongoing production monitoring and guardrail implementation. Building upon our foundational work on the Bias Evaluation and Assessment Test Suite (BEATS) for Large Language Models, the authors share prevalent bias and fairness related gaps in Large Language Models (LLMs) and discuss data and AI governance framework to address Bias, Ethics, Fairness, and Factuality within LLMs. The data and AI governance approach discussed in this paper is suitable for practical, real-world applications, enabling rigorous benchmarking of LLMs prior to production deployment, facilitating continuous real-time evaluation, and proactively governing LLM generated responses. By implementing the data and AI governance across the life cycle of AI development, organizations can significantly enhance the safety and responsibility of their GenAI systems, effectively mitigating risks of discrimination and protecting against potential reputational or brand-related harm. Ultimately, through this article, we aim to contribute to advancement of the creation and deployment of socially responsible and ethically aligned generative artificial intelligence powered applications.

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AI模型 偏见治理 数据治理 大型语言模型 AI伦理
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