DeepMind's system employed a deep convolutional neural network with tiled convolutional filters to simulate receptive fields. Using a neural network to represent Q in reinforcement learning can be unstable due to correlations in observation sequences and potential significant changes in agent policy. To combat this, the technique applied experience replay, drawing on a random sample of past actions to decouple correlations and smooth data distribution changes.
Brown University
Spring 2022
Brown University's Deep Learning course acquaints students with the transformative capabilities of deep neural networks in computer vision, NLP, and reinforcement learning. Using the TensorFlow framework, topics like CNNs, RNNs, deepfakes, and reinforcement learning are addressed, with an emphasis on ethical applications and potential societal impacts.
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