cs.AI updates on arXiv.org 09月03日
AI可审计性:挑战与规范
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本文探讨了AI系统的可审计性,分析了现行监管框架如欧盟AI法案对文档、风险评估和治理结构的规范,以及AI审计面临的挑战,强调需要明确指南、协调的国际法规和强大的社会技术方法来大规模实施可审计性。

arXiv:2509.00575v1 Announce Type: cross Abstract: Auditability is defined as the capacity of AI systems to be independently assessed for compliance with ethical, legal, and technical standards throughout their lifecycle. The chapter explores how auditability is being formalized through emerging regulatory frameworks, such as the EU AI Act, which mandate documentation, risk assessments, and governance structures. It analyzes the diverse challenges facing AI auditability, including technical opacity, inconsistent documentation practices, lack of standardized audit tools and metrics, and conflicting principles within existing responsible AI frameworks. The discussion highlights the need for clear guidelines, harmonized international regulations, and robust socio-technical methodologies to operationalize auditability at scale. The chapter concludes by emphasizing the importance of multi-stakeholder collaboration and auditor empowerment in building an effective AI audit ecosystem. It argues that auditability must be embedded in AI development practices and governance infrastructures to ensure that AI systems are not only functional but also ethically and legally aligned.

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AI可审计性 监管框架 风险评估 社会技术方法
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