Improving Performance in Reinforcement Learning by Breaking Generalization in Neural Networks

作者: Adam White , Banafsheh Rafiee , Sina Ghiassian , Yat Long Lo

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摘要: Reinforcement learning systems require good representations to work well. For decades practical success in reinforcement learning was limited to small domains. Deep …

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