Training Neural Networks Using Features Replay
Huo, Zhouyuan, Gu, Bin, Huang, Heng
–Neural Information Processing Systems
Training a neural network using backpropagation algorithm requires passing error gradients sequentially through the network. The backward locking prevents us from updating network layers in parallel and fully leveraging the computing resources. Recently, there are several works trying to decouple and parallelize the backpropagation algorithm. However, all of them suffer from severe accuracy loss or memory explosion when the neural network is deep. To address these challenging issues, we propose a novel parallel-objective formulation for the objective function of the neural network.
Neural Information Processing Systems
Feb-14-2020, 18:44:07 GMT
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