Interpretable Approximation of a Deep Reinforcement Learning Agent as a Set of If-Then Rules

S. Nageshrao, Bruno Costa, Dimitar Filev
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引用次数: 7

Abstract

In many industrial applications, one of the major bottlenecks in using advanced learning-based methods (such as reinforcement learning) for controls is the lack of interpretability of the trained agent. In this paper, we present a methodology for translating a trained reinforcement learning agent into a set of simple and easy to interpret if-then rules by using the proven universal approximation property of the rules with fuzzy predicates. Proposed methodology combines the optimality of reinforcement learning with interpretability of the theory of approximate reasoning, thus making reinforcement learning-based solutions more accessible to industrial practitioners. The framework presented in this paper has the potential to help address the fundamental problem in widespread adoption of reinforcement learning in industrial applications.
作为一组If-Then规则的深度强化学习代理的可解释逼近
在许多工业应用中,使用基于高级学习的方法(如强化学习)进行控制的主要瓶颈之一是训练后的代理缺乏可解释性。在本文中,我们提出了一种方法,通过使用已证明的带有模糊谓词的规则的普遍近似性质,将训练好的强化学习代理转换为一组简单且易于解释的if-then规则。所提出的方法将强化学习的最优性与近似推理理论的可解释性相结合,从而使基于强化学习的解决方案更容易被工业从业者所接受。本文提出的框架有可能帮助解决在工业应用中广泛采用强化学习的基本问题。
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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