Free-Lunch Saliency via Attention in Atari Agents

7 Aug 2019Dmitry NikulinAnastasia IaninaVladimir AlievSergey Nikolenko

We propose a new approach to visualize saliency maps for deep neural network models and apply it to deep reinforcement learning agents trained on Atari environments. Our method adds an attention module that we call FLS (Free Lunch Saliency) to the feature extractor from an established baseline (Mnih et al., 2015)... (read more)

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