CYAINov 30, 2022

Prioritizing Policies for Furthering Responsible Artificial Intelligence in the United States

arXiv:2212.00740v16 citationsh-index: 8
Originality Synthesis-oriented
AI Analysis

This work addresses the challenge of resource allocation for responsible AI policies across U.S. institutions, but it is incremental as it builds on existing policy suggestions without introducing new methods or data.

The paper tackles the problem of prioritizing policy options for responsible AI in the U.S., ranking nine policies by impact and recommending specific prioritizations for different institutions, with pre-deployment audits and post-deployment accountability identified as having the highest impact but also high adoption barriers.

Several policy options exist, or have been proposed, to further responsible artificial intelligence (AI) development and deployment. Institutions, including U.S. government agencies, states, professional societies, and private and public sector businesses, are well positioned to implement these policies. However, given limited resources, not all policies can or should be equally prioritized. We define and review nine suggested policies for furthering responsible AI, rank each policy on potential use and impact, and recommend prioritization relative to each institution type. We find that pre-deployment audits and assessments and post-deployment accountability are likely to have the highest impact but also the highest barriers to adoption. We recommend that U.S. government agencies and companies highly prioritize development of pre-deployment audits and assessments, while the U.S. national legislature should highly prioritize post-deployment accountability. We suggest that U.S. government agencies and professional societies should highly prioritize policies that support responsible AI research and that states should highly prioritize support of responsible AI education. We propose that companies can highly prioritize involving community stakeholders in development efforts and supporting diversity in AI development. We advise lower levels of prioritization across institutions for AI ethics statements and databases of AI technologies or incidents. We recognize that no one policy will lead to responsible AI and instead advocate for strategic policy implementation across institutions.

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