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Answerable and Unanswerable Questions in Risk Analysis with Open-World Novelty

机译:开放世界新颖性风险分析中的应答和不答易问题

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Decision analysis and risk analysis have grown up around a set of organizing questions: what might go wrong, how likely is it to do so, how bad might the consequences be, what should be done to maximize expected utility and minimize expected loss or regret, and how large are the remaining risks? In probabilistic causal models capable of representing unpredictable and novel events, probabilities for what will happen, and even what is possible, cannot necessarily be determined in advance. Standard decision and risk analysis questions become inherently unanswerable ("undecidable") for realistically complex causal systems with "open-world" uncertainties about what exists, what can happen, what other agents know, and how they will act. Recent artificial intelligence (AI) techniques enable agents (e.g., robots, drone swarms, and automatic controllers) to learn, plan, and act effectively despite open-world uncertainties in a host of practical applications, from robotics and autonomous vehicles to industrial engineering, transportation and logistics automation, and industrial process control. This article offers an AI/machine learning perspective on recent ideas for making decision and risk analysis (even) more useful. It reviews undecidability results and recent principles and methods for enabling intelligent agents to learn what works and how to complete useful tasks, adjust plans as needed, and achieve multiple goals safely and reasonably efficiently when possible, despite open-world uncertainties and unpredictable events. In the near future, these principles could contribute to the formulation and effective implementation of more effective plans and policies in business, regulation, and public policy, as well as in engineering, disaster management, and military and civil defense operations. They can extend traditional decision and risk analysis to deal more successfully with open-world novelty and unpredictable events in large-scale real-world planning, policymaking, and risk management.
机译:决策分析和风险分析已经在一组组织问题周围长大:可能出现问题,这样做有多可能性,后果可能是多么糟糕,以最大化预期的效用,最小化预期的损失或后悔,剩下的风险有多大?在能够代表不可预测和新事件的概率因果模型中,对于将发生的概率,甚至可能都必须提前确定。标准决策和风险分析问题本质上是不可批量的(“未定名”)对于具有“开放世界”不确定性的现实复杂的因果制度,可能发生的事情,什么其他代理商所知道的,以及如何采取行动。最近的人工智能(AI)技术使特工(例如,机器人,无人机群和自动控制器)能够在许多实际应用中的开放世界的不确定性,从机器人和自治车辆到工业工程,运输和物流自动化和工业过程控制。本文提供了一个AI /机器学习视角,最近是制定决策和风险分析(甚至)更有用的想法。它评论了令人可剥离的结果和最近的原则和方法,使智能代理能够了解有关的工作以及如何完成有用的任务,根据需要调整计划,尽管开放世界的不确定性和不可预测的事件,尽管有可能在可能的情况下安全合理地实现多种目标。在不久的将来,这些原则可以促进制定和有效实施商业,监管和公共政策以及工程,灾害管理和军事和民防行动的更有效的计划和政策。他们可以在大型现实世界规划,政策制定和风险管理中扩展传统决策和风险分析,以更成功地处理更成功的开放世界的新奇和不可预测的事件。

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