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Towards an Interpretable Hierarchical Agent Framework using Semantic Goals

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arxiv 2210.08412 v1 pith:Q3R5FMRW submitted 2022-10-16 cs.LG cs.RO

Towards an Interpretable Hierarchical Agent Framework using Semantic Goals

classification cs.LG cs.RO
keywords frameworksemanticgoalhierarchicalinterpretablelearningtasksagent
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Learning to solve long horizon temporally extended tasks with reinforcement learning has been a challenge for several years now. We believe that it is important to leverage both the hierarchical structure of complex tasks and to use expert supervision whenever possible to solve such tasks. This work introduces an interpretable hierarchical agent framework by combining planning and semantic goal directed reinforcement learning. We assume access to certain spatial and haptic predicates and construct a simple and powerful semantic goal space. These semantic goal representations are more interpretable, making expert supervision and intervention easier. They also eliminate the need to write complex, dense reward functions thereby reducing human engineering effort. We evaluate our framework on a robotic block manipulation task and show that it performs better than other methods, including both sparse and dense reward functions. We also suggest some next steps and discuss how this framework makes interaction and collaboration with humans easier.

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