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For questions related to the deep Q-network (DQN), which is a deep neural network (e.g. a convolutional neural network) trained with a variant of Q-learning. The expression was coined in the paper "Playing Atari with Deep Reinforcement Learning" (2013) by Google's DeepMind.
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What is a high dimensional state in reinforcement learning?
In the DQN paper, it is written that the state-space is high dimensional. I am a little bit confused about this terminology. … On the other hand, DQN would easily work, as neural networks can generalize for other vectors in the state-space. …