We offer a historical overview of methodologies for quantifying the notion of risk and optimizing risk-aware autonomous systems, with emphasis on risk-averse settings in which safety may be critical. We categorize and present state-of-the-art approaches, and we describe connections between such approaches and ideas from the fields of decision theory, operations research, reinforcement learning, and stochastic control. The first part of the review focuses on model-based risk-averse methods. The second part discusses methods that blend model-based and model-free techniques for the purpose of designing policies with improved adaptive capabilities. We conclude by highlighting areas for future research.
翻译:我们从历史角度概述了量化风险概念和优化风险意识自主系统的方法,重点是安全可能至关重要的避免风险环境。我们分类和介绍最先进的方法,并描述决策理论、业务研究、强化学习和随机控制等领域的这些方法和想法之间的联系。审查的第一部分侧重于基于模型的风险规避方法。第二部分讨论将基于模型和无模型的技术相结合的方法,以便设计适应能力提高的政策。我们最后强调未来研究的领域。