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A probabilistic argumentation framework for reinforcement learning agents

机译:强化学习主体的概率论证框架

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A bounded-reasoning agent may face two dimensions of uncertainty: firstly, the uncertainty arising from partial information and conflicting reasons, and secondly, the uncertainty arising from the stochastic nature of its actions and the environment. This paper attempts to address both dimensions within a single unified framework, by bringing together probabilistic argumentation and reinforcement learning. We show how a probabilistic rule-based argumentation framework can capture Markov decision processes and reinforcement learning agents; and how the framework allows us to characterise agents and their argument-based motivations from both a logic-based perspective and a probabilistic perspective. We advocate and illustrate the use of our approach to capture models of agency and norms, and argue that, in addition to providing a novel method for investigating agent types, the unified framework offers a sound basis for taking a mentalistic approach to agent profiles.
机译:有限理性的主体可能会面临两个方面的不确定性:首先,由部分信息和冲突原因引起的不确定性,其次,由其行为和环境的随机性引起的不确定性。本文试图通过整合概率论证和强化学习,在一个统一的框架内解决这两个方面。我们展示了基于概率的基于规则的论证框架如何捕获Markov决策过程和强化学习主体。以及该框架如何允许我们从基于逻辑的角度和概率的角度来描述行为主体及其基于论据的动机。我们主张并说明使用我们的方法来捕获代理和规范模型的观点,并认为,除了提供一种新颖的方法来调查代理人类型外,统一框架还为采用心理方法来探究代理人概况提供了良好的基础。

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