Human-level control through deep reinforcement learning
Volodymyr Mnih(Google DeepMind (United Kingdom)), Demis Hassabis(Google DeepMind (United Kingdom)), Amir Sadik(Google DeepMind (United Kingdom)), Georg Ostrovski(Google DeepMind (United Kingdom)), Charles Beattie(California Institute of Technology), Ioannis Antonoglou(Google DeepMind (United Kingdom)), Andreas Fidjeland(Google DeepMind (United Kingdom)), Martin Riedmiller(Google (United States)), Alex Graves(Google DeepMind (United Kingdom)), Helen King(Google DeepMind (United Kingdom)), Dharshan Kumaran(Google DeepMind (United Kingdom)), Stig Petersen(Google DeepMind (United Kingdom)), Daan Wierstra(Google DeepMind (United Kingdom)), Joel Veness(Google DeepMind (United Kingdom)), Koray Kavukcuoglu(Google DeepMind (United Kingdom)), David Silver(Google (United Kingdom)), Marc G. Bellemare(Google DeepMind (United Kingdom)), Andrei A. Rusu(Google DeepMind (United Kingdom)), Shane Legg(Google DeepMind (United Kingdom))
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