论文标题
优先考虑在美国促进负责人工智能的政策
Prioritizing Policies for Furthering Responsible Artificial Intelligence in the United States
论文作者
论文摘要
存在或已提出了几种政策选择,以进一步负责人工智能(AI)开发和部署。包括美国政府机构,州,专业社会以及私营和公共部门业务在内的机构在实施这些政策方面有好处。但是,给定资源有限,并非所有政策都可以或应同样优先。我们定义并审查了九项建议的政策,以促进负责人的AI,对潜在使用和影响的每个政策进行对每个机构类型的优先级排序。我们发现,部署前审计和评估以及部署后的责任制可能具有最大的影响,但也是采用障碍最高的障碍。我们建议美国政府机构和公司高度优先考虑开发前审计和评估,而美国国家立法机关应高度优先考虑剥离后的责任制。我们建议,美国政府机构和专业社会应高度优先考虑支持负责AI研究的政策,并应高度优先考虑对负责AI教育的支持。我们建议公司可以高度优先考虑社区利益相关者参与发展工作,并支持AI开发中的多样性。我们建议在AI技术或事件的AI伦理声明和数据库中,跨机构跨机构的优先级较低。我们认识到,没有一个政策会导致负责人的AI,而是主张跨机构进行战略政策实施。
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.