Session #02: Playing Atari With Deep Reinforcement Learning

Title: Playing Atari With Deep Reinforcement Learning
Presenter: Anoop Aroor
Date: Thursday January 14th 2016 at 1:00pm
Location: CS Lab – Rm 4435
Materials: Paper on ArxivSlides

Paper Abstract: We present the first deep learning model to successfully learn control policies directly from high-dimensional sensory input using  reinforcement learning. The model is a convolutional neural network, trained with a variant of Q-learning, whose input is raw pixels and whose output is a value function estimating future rewards. We apply our method to seven Atari 2600 games from the Arcade Learning Environment, with no adjustment of the architecture or learning algorithm. We find that it outperforms all previous approaches on six of the games and surpasses a human expert on three of them.

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