超越广告:法律和公共政策中的顺序决策算法

Peter Henderson, Ben Chugg, Brandon R. Anderson, Daniel E. Ho
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引用次数: 4

摘要

我们探讨了在法律和公共政策中采用顺序决策算法(如强盗、强化学习和主动学习)的前景和挑战。虽然这种算法在私营部门(例如在线广告)中具有良好的表现特征,但天真地应用由一个领域(通常是在线广告)驱动的算法的倾向可以称为“广告谬误”。“我们的主要论点是,法律和公共政策构成了机器学习社区尚未解决的独特的方法论挑战。机器学习将需要解决这些方法论问题,以“超越广告”。例如,公法可以提出多个目标,需要批量和延迟反馈,并要求系统学习理性,因果决策政策,每一个都在研究前沿提出了新的问题。我们讨论了顺序决策算法在监管和治理中的广泛潜在应用,包括公共卫生、环境保护、税收管理、职业安全和福利裁决。我们使用这些例子来强调需要进行的研究,以使公共部门的顺序决策符合政策、适应性强和有效。我们还指出了这种部署的潜在风险,并描述了顺序决策系统如何也有助于发现危害。我们希望我们的工作能够激发对法律和公共政策中顺序决策的更多研究,这为机器学习研究人员提供了独特的挑战,具有潜在的重大社会效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Beyond Ads: Sequential Decision-Making Algorithms in Law and Public Policy
We explore the promises and challenges of employing sequential decision-making algorithms -- such as bandits, reinforcement learning, and active learning -- in law and public policy. While such algorithms have well-characterized performance in the private sector (e.g., online advertising), the tendency to naively apply algorithms motivated by one domain, often online advertisements, can be called the ''advertisement fallacy.'' Our main thesis is that law and public policy pose distinct methodological challenges that the machine learning community has not yet addressed. Machine learning will need to address these methodological problems to move ''beyond ads.'' Public law, for instance, can pose multiple objectives, necessitate batched and delayed feedback, and require systems to learn rational, causal decision-making policies, each of which presents novel questions at the research frontier. We discuss a wide range of potential applications of sequential decision-making algorithms in regulation and governance, including public health, environmental protection, tax administration, occupational safety, and benefits adjudication. We use these examples to highlight research needed to render sequential decision making policy-compliant, adaptable, and effective in the public sector. We also note the potential risks of such deployments and describe how sequential decision systems can also facilitate the discovery of harms. We hope our work inspires more investigation of sequential decision making in law and public policy, which provide unique challenges for machine learning researchers with potential for significant social benefit.
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