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  • title: Model-Based Episodic Memory Induces Dynamic Hybrid Controls
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            Model-Based Episodic Memory Induces Dynamic Hybrid Controls
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            Model-Based Episodic Memory Induces Dynamic Hybrid Controls

            Dec 6, 2021

            Speakers

            HL

            Hung Le

            Sprecher:in · 1 Follower:in

            TKG

            Thommen Karimpanal George

            Sprecher:in · 0 Follower:innen

            MA

            Majid Abdolshah

            Sprecher:in · 0 Follower:innen

            About

            Episodic control enables sample efficiency in reinforcement learning by recalling past experiences from an episodic memory. We propose a new model-based episodic memory of trajectories addressing current limitations of episodic control. Our memory estimates trajectory values, guiding the agent towards good policies. Built upon the memory, we construct a complementary learning model via a dynamic hybrid control unifying model-based, episodic and habitual learning into a single architecture. Exper…

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            NeurIPS 2021

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