Event-Based Backpropagation can compute Exact Gradients for Spiking Neural Networks
September 17, 2020 Β· Declared Dead Β· π Scientific Reports
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Authors
Timo C. Wunderlich, Christian Pehle
arXiv ID
2009.08378
Category
q-bio.NC
Cross-listed
cs.NE
Citations
145
Venue
Scientific Reports
Last Checked
4 months ago
Abstract
Spiking neural networks combine analog computation with event-based communication using discrete spikes. While the impressive advances of deep learning are enabled by training non-spiking artificial neural networks using the backpropagation algorithm, applying this algorithm to spiking networks was previously hindered by the existence of discrete spike events and discontinuities. For the first time, this work derives the backpropagation algorithm for a continuous-time spiking neural network and a general loss function by applying the adjoint method together with the proper partial derivative jumps, allowing for backpropagation through discrete spike events without approximations. This algorithm, EventProp, backpropagates errors at spike times in order to compute the exact gradient in an event-based, temporally and spatially sparse fashion. We use gradients computed via EventProp to train networks on the Yin-Yang and MNIST datasets using either a spike time or voltage based loss function and report competitive performance. Our work supports the rigorous study of gradient-based learning algorithms in spiking neural networks and provides insights toward their implementation in novel brain-inspired hardware.
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