脉冲神经网络的在线与离线学习:综述与新策略

Jinling Wang, A. Belatreche, L. Maguire, M. McGinnity
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引用次数: 19

摘要

脉冲神经网络(snn)被认为是第三代神经网络,并已被证明比前几代经典人工神经网络更强大。研究snn的主要原因在于它与生物神经网络非常相似。然而,由于缺乏有效的训练方法,它们在实际应用中的适用性受到限制。对于在大型数据集上训练大型网络,在线学习是学习非平稳任务的更自然的方法。本文将回顾现有的snn离线和在线学习算法,突出snn在线学习算法欠发达的问题,并介绍snn在线训练的未来研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online versus offline learning for spiking neural networks: A review and new strategies
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.
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