Abstract:Non-differentiable controllers and rule-based policies are widely used for controlling real systems such as robots and telecommunication networks. In this paper, we present a practical reinforcement learning method which improves upon such existing policies with a model-based approach for better sample efficiency. Our method significantly outperforms state-of-the-art model-based methods, in terms of sample efficiency, on several widely used robotic benchmark tasks. We also demonstrate the effectiveness of our … Show more
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