NCLGNEMLMay 31, 2017

SuperSpike: Supervised learning in multi-layer spiking neural networks

arXiv:1705.11146v2680 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of training artificial spiking neural networks to better understand biological learning, representing an incremental advance in methods for spiking neural networks.

The paper tackles the problem of supervised learning in multi-layer spiking neural networks by deriving SuperSpike, a learning rule that trains these networks to perform nonlinear computations on spatiotemporal spike patterns, finding that complex tasks require symmetric feedback for error propagation.

A vast majority of computation in the brain is performed by spiking neural networks. Despite the ubiquity of such spiking, we currently lack an understanding of how biological spiking neural circuits learn and compute in-vivo, as well as how we can instantiate such capabilities in artificial spiking circuits in-silico. Here we revisit the problem of supervised learning in temporally coding multi-layer spiking neural networks. First, by using a surrogate gradient approach, we derive SuperSpike, a nonlinear voltage-based three factor learning rule capable of training multi-layer networks of deterministic integrate-and-fire neurons to perform nonlinear computations on spatiotemporal spike patterns. Second, inspired by recent results on feedback alignment, we compare the performance of our learning rule under different credit assignment strategies for propagating output errors to hidden units. Specifically, we test uniform, symmetric and random feedback, finding that simpler tasks can be solved with any type of feedback, while more complex tasks require symmetric feedback. In summary, our results open the door to obtaining a better scientific understanding of learning and computation in spiking neural networks by advancing our ability to train them to solve nonlinear problems involving transformations between different spatiotemporal spike-time patterns.

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