Detect, Understand, Act: A Neuro-symbolic Hierarchical Reinforcement Learning Framework

作者:Ludovico Mitchener, David Tuckey, Matthew Crosby, Alessandra Russo

摘要

In this paper we introduce Detect, Understand, Act (DUA), a neuro-symbolic reinforcement learning framework. The Detect component is composed of a traditional computer vision object detector and tracker. The Act component houses a set of options, high-level actions enacted by pre-trained deep reinforcement learning (DRL) policies. The Understand component provides a novel answer set programming (ASP) paradigm for symbolically implementing a meta-policy over options and effectively learning it using inductive logic programming (ILP). We evaluate our framework on the Animal-AI (AAI) competition testbed, a set of physical cognitive reasoning problems. Given a set of pre-trained DRL policies, DUA requires only a few examples to learn a meta-policy that allows it to improve the state-of-the-art on multiple of the most challenging categories from the testbed. DUA constitutes the first holistic hybrid integration of computer vision, ILP and DRL applied to an AAI-like environment and sets the foundations for further use of ILP in complex DRL challenges.

论文关键词:Neuro-symbolic, Hierarchical reinforcement learning, Deep reinforcement learning, Inductive logic programming, Answer set programming

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论文官网地址:https://doi.org/10.1007/s10994-022-06142-7