CYAIJan 26

The Limits of AI Data Transparency Policy: Three Disclosure Fallacies

arXiv:2601.18127v1h-index: 14
Originality Synthesis-oriented
AI Analysis

This work addresses policy gaps in AI accountability for regulators and developers, but it is incremental as it builds on existing transparency research.

The paper critiques current AI data transparency policies for failing to achieve accountability goals due to specification, enforcement, and impact gaps, and proposes more effective paths based on social science insights.

Data transparency has emerged as a rallying cry for addressing concerns about AI: data quality, privacy, and copyright chief among them. Yet while these calls are crucial for accountability, current transparency policies often fall short of their intended aims. Similar to nutrition facts for food, policies aimed at nutrition facts for AI currently suffer from a limited consideration of research on effective disclosures. We offer an institutional perspective and identify three common fallacies in policy implementations of data disclosures for AI. First, many data transparency proposals exhibit a specification gap between the stated goals of data transparency and the actual disclosures necessary to achieve such goals. Second, reform attempts exhibit an enforcement gap between required disclosures on paper and enforcement to ensure compliance in fact. Third, policy proposals manifest an impact gap between disclosed information and meaningful changes in developer practices and public understanding. Informed by the social science on transparency, our analysis identifies affirmative paths for transparency that are effective rather than merely symbolic.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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