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Argumentative Reward Learning: Reasoning About Human Preferences (2209.14010v1)
Published 28 Sep 2022 in cs.AI, cs.HC, and cs.LG
Abstract: We define a novel neuro-symbolic framework, argumentative reward learning, which combines preference-based argumentation with existing approaches to reinforcement learning from human feedback. Our method improves prior work by generalising human preferences, reducing the burden on the user and increasing the robustness of the reward model. We demonstrate this with a number of experiments.
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