ChFrenkel / DirectRandomTargetProjection
PyTorch-based code for training fully-connected and convolutional networks using backpropagation (BP), feedback alignment (FA), direct feedback alignment (DFA), and direct random target projection (DRTP).
☆66Updated 4 years ago
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