Improving governance outcomes through AI documentation: Bridging theory and practice
Amy A. Winecoff, Miranda Bogen

TL;DR
This paper analyzes how AI documentation practices influence governance, identifying pathways for improvement and highlighting challenges faced by practitioners, with insights from frameworks and empirical studies.
Contribution
It provides a comprehensive analysis of documentation frameworks and empirical evaluations, revealing pathways for enhancing AI governance and the challenges in implementing documentation practices.
Findings
Documentation can inform stakeholders and facilitate collaboration.
Practitioners face incentives, resource, and organizational barriers.
Effective documentation requires balancing detail and automation.
Abstract
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 22 empirical studies evaluating their use. We identify several pathways or "theories of change" through which documentation can enhance governance, including informing stakeholders about AI risks and applications, facilitating collaboration, encouraging ethical deliberation, and supporting best practices. However, empirical findings reveal significant challenges for practitioners, such as insufficient incentives and resources, structural and organizational communication barriers,…
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Taxonomy
TopicsInnovation, Sustainability, Human-Machine Systems · Qualitative Comparative Analysis Research · Supply Chain Resilience and Risk Management
