Are skip connections necessary for biologically plausible learning rules?
Im, Daniel Jiwoong, Patil, Rutuja, Branson, Kristin
Backpropagation is the workhorse of deep learning, however, several other biologically-motivated learning rules have been introduced, such as random feedback alignment and difference target propagation. None of these methods have produced a competitive performance against backpropagation. In this paper, we show that biologically-motivated learning rules with skip connections between intermediate layers can perform as well as backpropagation on the MNIST dataset and are robust to various sets of hyper-parameters.
Dec-4-2019
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