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Online versus offline learning for spiking neural networks: A review and new strategies

机译:在线与离线学习飙升神经网络:审查和新策略

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Spiking Neural Networks (SNNs) are considered to be the third generation of neural networks, and have proved more powerful than classical artificial neural networks from the previous generations. The main reason for studying SNNs lies in their close resemblance with biological neural networks. However their applicability in real world applications has been limited due to the lack of efficient training methods. For training large networks on large data sets, online learning is the more natural approach for learning non-stationary tasks. In this paper, existing offline and online learning algorithms for SNNs will be reviewed, the issue that online learning algorithms for SNNs were less developed will be highlighted, and future lines of research related to online training of SNNs will be presented.
机译:尖峰神经网络(SNNS)被认为是第三代神经网络,并且已从前几代证明比经典人工神经网络更强大。 学习SNNS的主要原因是与生物神经网络的密切相似。 然而,由于缺乏有效的培训方法,他们在现实世界的适用性受到限制。 对于大型数据集的大型网络进行培训,在线学习是学习非稳定性任务的更自然的方法。 在本文中,将讨论SNNS的现有离线和在线学习算法,该问题将突出显示SNNS的在线学习算法,并展示与SNN的在线培训相关的未来研究线。

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