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A Hybrid Learning Algorithm Fusing STDP with GA based Explicit Delay Learning for Spiking Neurons

机译:一种融合STDP的混合学习算法与GA基于GA的显式延迟学习掺入神经元

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This paper presents a hybrid learning algorithm for spiking neural networks (SNNs), referred to as an evolvable spiking neural network (ESNN) paradigm. The algorithm integrates a supervised and unsupervised learning approach. The unsupervised approach exploits a Spike Timing Dependent Plasticity (STDP) mechanism with explicit delay learning for multiple connections between neurons. Supervision of the synaptic delays and the excitatory/inhibitory connections is governed by a genetic algorithm (GA), while the STDP rule is free to operate in its normal unsupervised manner. A spike train encoding/decoding scheme is developed for the algorithm. The approach is validated by application to the Iris classification problem.
机译:本文介绍了一种用于尖刺神经网络(SNNS)的混合学习算法,称为可进化的尖刺神经网络(ESNN)范式。该算法集成了监督和无监督的学习方法。无监督的方法利用尖峰定时依赖性可塑性(STDP)机制,具有显式延迟学习,用于神经元之间的多个连接。突触延迟和兴奋/抑制连接的监督由遗传算法(GA)管辖,而STDP规则可以以其正常的无监督方式操作。为该算法开发了一种尖峰列车编码/解码方案。该方法是通过应用于IRIS分类问题的验证。

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