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Explainable autonomous robots in continuous state space based on graph-structured world model

Site Hu, Takayuki Nagai

发表年份
2023
引用次数
5
访问权限
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摘要

Autonomous robots using deep reinforcement learning have demonstrated superior capabilities on relatively simple specific tasks, but they often lack high-level, abstract planning capabilities when faced with complex, long-horizon tasks.Even if the autonomous robot successfully achieves longhorizon goals, users find it difficult to trust their decision-making process.To increase user trust in the decision-making process when an autonomous robot executes a long-horizon task, this paper proposes an algorithm that empowers the autonomous agent to explain to users the transition from the current state to the target state in a continuous state space, as well as to explain the errors in user estimates.A framework that uses a graph-based world model is proposed to identify important nodes and reachability between nodes in the decision-making process; based on these nodes and reachability, the model generates the required explanations.To validate our proposed method's ability to generate long-horizon plans and explanations, we conducted experiments in PointMaze environments.Our simulation results confirm the effectiveness of our approach in generating reliable world models for long-horizon tasks.Moreover, our explanations, based on these world models, significantly enhance the user's understanding of the autonomous robotic decision-making process and the system's capabilities and limitations.

关键词

ReachabilityRobotComputer scienceState spaceProcess (computing)Time horizonArtificial intelligenceReinforcement learningState (computer science)Graph

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