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Surrogate Gradient Learning in Spiking Neural Networks: Bringing the Power of Gradient-Based Optimization to Spiking Neural Networks

机译:尖峰神经网络中的替代梯度学习:将基于梯度的优化功能带给尖峰神经网络

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摘要

Spiking neural networks (SNNs) are nature's versatile solution to fault-tolerant, energy-efficient signal processing. To translate these benefits into hardware, a growing number of neuromorphic spiking NN processors have attempted to emulate biological NNs. These developments have created an imminent need for methods and tools that enable such systems to solve real-world signal processing problems. Like conventional NNs, SNNs can be trained on real, domain-specific data; however, their training requires the overcoming of a number of challenges linked to their binary and dynamical nature. This article elucidates step-by-step the problems typically encountered when training SNNs and guides the reader through the key concepts of synaptic plasticity and data-driven learning in the spiking setting. Accordingly, it gives an overview of existing approaches and provides an introduction to surrogate gradient (SG) methods, specifically, as a particularly flexible and efficient method to overcome the aforementioned challenges.
机译:尖峰神经网络(SNN)是自然界对容错,节能信号处理的通用解决方案。为了将这些好处转化为硬件,越来越多的神经形态突增的NN处理器试图模仿生物NN。这些发展迫切需要使这些系统能够解决实际信号处理问题的方法和工具。像传统的NN一样,可以在真实的特定领域数据上训练SNN。但是,他们的训练需要克服与其二元性和动态性有关的许多挑战。本文分步介绍了在训练SNN时通常遇到的问题,并通过突触设置指导读者了解突触可塑性和数据驱动学习的关键概念。因此,它概述了现有方法,并特别介绍了替代梯度(SG)方法,作为克服上述挑战的一种特别灵活和有效的方法。

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