In the long term, reinforcement learning (RL) is considered by many AI theorists to be the most promising path to artificial general intelligence. This places RL practitioners in a position to design systems that have never existed before and lack prior documentation in law and policy. Public agencies could intervene on complex dynamics that were previously too opaque to deliberate about, and long-held policy ambitions would finally be made tractable. In this whitepaper we illustrate this potential and how it might be technically enacted in the domains of energy infrastructure, social media recommender systems, and transportation. Alongside these unprecedented interventions come new forms of risk that exacerbate the harms already generated by standard machine learning tools. We correspondingly present a new typology of risks arising from RL design choices, falling under four categories: scoping the horizon, defining rewards, pruning information, and training multiple agents. Rather than allowing RL systems to unilaterally reshape human domains, policymakers need new mechanisms for the rule of reason, foreseeability, and interoperability that match the risks these systems pose. We argue that criteria for these choices may be drawn from emerging subfields within antitrust, tort, and administrative law. It will then be possible for courts, federal and state agencies, and non-governmental organizations to play more active roles in RL specification and evaluation. Building on the "model cards" and "datasheets" frameworks proposed by Mitchell et al. and Gebru et al., we argue the need for Reward Reports for AI systems. Reward Reports are living documents for proposed RL deployments that demarcate design choices.
翻译:从长远来看,许多AI理论家认为,强化学习(RL)是人工一般智能最有希望的途径。这使得RL从业者能够设计以前从未存在的系统,并缺乏先前的法律和政策文件。公共机构可以干预以前不透明、无法讨论的复杂动态,长期的政策野心最终可以推广。在本白皮书中,我们展示了这种潜力,以及这种潜力在能源基础设施、社交媒体建议系统和运输领域如何在技术上颁布。除了这些史无前例的干预外,还出现了新的风险形式,加剧了标准机器学习工具已经产生的伤害。我们相应地提出了由RL设计选择产生的新风险类型,这些选择属于四个类别:界定视野,界定奖赏,整理信息,培训多个代理人。而不是允许RL系统单方面改造人类领域,决策者需要新的机制来规范、可预见性和互操作性,与这些拟议系统构成的风险相符。我们认为,这些选择的标准可以从反托拉斯、Trt、行政法等新兴的生活领域中产生。然后,我们将报告设计新的设计为联邦和州和州级数据库中的机构、州和州级数据库框架提供积极的评估。