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Federated reinforcement learning: techniques, applications, and open challenges

Jiaju Qi, Qihao Zhou, Lei Lei, Kan Zheng

Year
2021
Citations
199
Access
Open access

Abstract

Intelligence & Robotics publishes top-quality unpublished original technical and non-technical application-focused articles on intelligence and robotics, particularly on the interdisciplinary areas of intelligence and robotics.

Keywords

Reinforcement learningComputer sciencePerspective (graphical)ReinforcementField (mathematics)Open researchKey (lock)Focus (optics)Artificial intelligenceComputer security

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