通过人工智能文件改善治理成果:连接理论与实践

Amy A. Winecoff, Miranda Bogen
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引用次数: 0

摘要

文档在人工智能系统的外部问责和内部治理方面都发挥着至关重要的作用。虽然有很多关于记录人工智能数据、模型、系统和方法的建议,但这些做法如何加强治理以及从业者和组织在记录方面面临的挑战仍未得到充分探索。在本文中,我们分析了 37 个拟议的文档框架和 21 项评估其使用情况的实证研究。我们提出了关于文档如何加强管理的潜在假设,例如告知利益相关者人工智能的风险和使用情况、促进合作、鼓励道德反思以及强化最佳实践。我们还强调了组织在设计文档时的关键考虑因素,如确定适当的详细程度和平衡流程中的自动化。最后,我们为进一步研究和在现实环境中实施有效的文档实践提出了建议。
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Improving governance outcomes through AI documentation: Bridging theory and practice
Documentation plays a crucial role in both external accountability and internal governance of AI systems. Although there are many proposals for documenting AI data, models, systems, and methods, the ways these practices enhance governance as well as the challenges practitioners and organizations face with documentation remain underexplored. In this paper, we analyze 37 proposed documentation frameworks and 21 empirical studies evaluating their use. We identify potential hypotheses about how documentation can strengthen governance, such as informing stakeholders about AI risks and usage, fostering collaboration, encouraging ethical reflection, and reinforcing best practices. However, empirical evidence shows that practitioners often encounter obstacles that prevent documentation from achieving these goals. We also highlight key considerations for organizations when designing documentation, such as determining the appropriate level of detail and balancing automation in the process. Finally, we offer recommendations for further research and for implementing effective documentation practices in real-world contexts.
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