Assessing the Scalability of Biologically-Motivated Deep Learning Algorithms and Architectures
Bartunov, Sergey, Santoro, Adam, Richards, Blake, Marris, Luke, Hinton, Geoffrey E., Lillicrap, Timothy
–Neural Information Processing Systems
The backpropagation of error algorithm (BP) is impossible to implement in a real brain. The recent success of deep networks in machine learning and AI, however, has inspired proposals for understanding how the brain might learn across multiple layers, and hence how it might approximate BP. As of yet, none of these proposals have been rigorously evaluated on tasks where BP-guided deep learning has proved critical, or in architectures more structured than simple fully-connected networks. Here we present results on scaling up biologically motivated models of deep learning on datasets which need deep networks with appropriate architectures to achieve good performance. We present results on the MNIST, CIFAR-10, and ImageNet datasets and explore variants of target-propagation (TP) and feedback alignment (FA) algorithms, and explore performance in both fully- and locally-connected architectures.
Neural Information Processing Systems
Feb-14-2020, 20:42:35 GMT
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