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Backpropagation for Population-Temporal Coded Spiking Neural Networks

机译:人口-时间编码尖峰神经网络的反向传播

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Supervised learning rules for spiking neural networks are currently only able to use time-to-first-spike coding and are plagued by very irregular learning curves due to their inability to model spike creation and deletion by weight changes. This paper presents a new learning rule for spiking neurons that uses the general population-temporal coding model. It is inspired by learning rules for locally recurrent analog neural networks. As a result we have a very fast learning rule that is able to operate on a wide class of decoding schemes.
机译:目前,用于尖峰神经网络的监督学习规则只能使用“第一次尖峰时间”编码,并且由于它们无法建模尖峰创建和通过权重变化删除而受到非常不规则的学习曲线的困扰。本文提出了一种新的学习尖峰神经元的学习规则,该规则使用一般的人口-时间编码模型。它受本地循环模拟神经网络学习规则的启发。结果,我们有了一个非常快速的学习规则,该规则可以在各种解码方案上运行。

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