Reinforcement Learning and Inverse Reinforcement Learning with System 1 and System 2

A. Peysakhovich
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引用次数: 11

Abstract

Inferring a person's goal from their behavior is an important problem in applications of AI (e.g. automated assistants, recommender systems). The workhorse model for this task is the rational actor model - this amounts to assuming that people have stable reward functions, discount the future exponentially, and construct optimal plans. Under the rational actor assumption techniques such as inverse reinforcement learning (IRL) can be used to infer a person's goals from their actions. A competing model is the dual-system model. Here decisions are the result of an interplay between a fast, automatic, heuristic-based system 1 and a slower, deliberate, calculating system 2. We generalize the dual system framework to the case of Markov decision problems and show how to compute optimal plans for dual-system agents. We show that dual-system agents exhibit behaviors that are incompatible with rational actor assumption. We show that naive applications of rational-actor IRL to the behavior of dual-system agents can generate wrong inference about the agents' goals and suggest interventions that actually reduce the agent's overall utility. Finally, we adapt a simple IRL algorithm to correctly infer the goals of dual system decision-makers. This allows us to make interventions that help, rather than hinder, the dual-system agent's ability to reach their true goals.
系统1和系统2的强化学习和逆强化学习
从一个人的行为中推断一个人的目标是人工智能应用中的一个重要问题(例如自动助理、推荐系统)。这项任务的主力模型是理性行为者模型——这相当于假设人们有稳定的奖励函数,以指数方式贴现未来,并构建最优计划。在理性行为者假设下,逆强化学习(IRL)等技术可以用来从一个人的行为中推断出他们的目标。一种与之竞争的模式是双系统模式。在这里,决策是快速、自动、基于启发式的系统1和缓慢、深思熟虑、计算型系统2相互作用的结果。我们将双系统框架推广到马尔可夫决策问题,并展示了如何计算双系统代理的最优计划。我们发现双系统行为主体表现出与理性行为主体假设不相容的行为。我们表明,将理性行为者IRL天真地应用于双系统智能体的行为可能会对智能体的目标产生错误的推断,并提出干预措施,实际上会降低智能体的整体效用。最后,我们采用一种简单的IRL算法来正确地推断双系统决策者的目标。这使我们能够进行干预,帮助而不是阻碍双重系统主体实现其真正目标的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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