Paired competing neurons improving STDP supervised local learning in Spiking Neural Networks

IF 3.2 3区 医学 Q2 NEUROSCIENCES Frontiers in Neuroscience Pub Date : 2024-07-24 DOI:10.3389/fnins.2024.1401690
Gaspard Goupy, Pierre Tirilly, Ioan Marius Bilasco
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Abstract

Direct training of Spiking Neural Networks (SNNs) on neuromorphic hardware has the potential to significantly reduce the energy consumption of artificial neural network training. SNNs trained with Spike Timing-Dependent Plasticity (STDP) benefit from gradient-free and unsupervised local learning, which can be easily implemented on ultra-low-power neuromorphic hardware. However, classification tasks cannot be performed solely with unsupervised STDP. In this paper, we propose Stabilized Supervised STDP (S2-STDP), a supervised STDP learning rule to train the classification layer of an SNN equipped with unsupervised STDP for feature extraction. S2-STDP integrates error-modulated weight updates that align neuron spikes with desired timestamps derived from the average firing time within the layer. Then, we introduce a training architecture called Paired Competing Neurons (PCN) to further enhance the learning capabilities of our classification layer trained with S2-STDP. PCN associates each class with paired neurons and encourages neuron specialization toward target or non-target samples through intra-class competition. We evaluate our methods on image recognition datasets, including MNIST, Fashion-MNIST, and CIFAR-10. Results show that our methods outperform state-of-the-art supervised STDP learning rules, for comparable architectures and numbers of neurons. Further analysis demonstrates that the use of PCN enhances the performance of S2-STDP, regardless of the hyperparameter set and without introducing any additional hyperparameters.
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成对竞争神经元改善尖峰神经网络中的 STDP 监督局部学习
在神经形态硬件上直接训练尖峰神经网络(SNN)有望显著降低人工神经网络训练的能耗。利用尖峰时序相关可塑性(STDP)训练的 SNN 可受益于无梯度和无监督的局部学习,这可以在超低功耗的神经形态硬件上轻松实现。然而,分类任务不能仅靠无监督 STDP 来完成。在本文中,我们提出了稳定监督 STDP(S2-STDP),这是一种监督 STDP 学习规则,用于训练配备无监督 STDP 的 SNN 的分类层,以提取特征。S2-STDP 集成了误差调制权重更新,使神经元尖峰与根据层内平均发射时间得出的所需时间戳保持一致。然后,我们引入了一种名为配对竞争神经元(PCN)的训练架构,以进一步增强使用 S2-STDP 训练的分类层的学习能力。PCN 将每个类别与配对神经元关联起来,并通过类内竞争鼓励神经元向目标或非目标样本专业化。我们在 MNIST、Fashion-MNIST 和 CIFAR-10 等图像识别数据集上评估了我们的方法。结果表明,在架构和神经元数量相当的情况下,我们的方法优于最先进的有监督 STDP 学习规则。进一步的分析表明,无论超参数集如何,使用 PCN 都能提高 S2-STDP 的性能,而且无需引入任何额外的超参数。
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来源期刊
Frontiers in Neuroscience
Frontiers in Neuroscience NEUROSCIENCES-
CiteScore
6.20
自引率
4.70%
发文量
2070
审稿时长
14 weeks
期刊介绍: Neural Technology is devoted to the convergence between neurobiology and quantum-, nano- and micro-sciences. In our vision, this interdisciplinary approach should go beyond the technological development of sophisticated methods and should contribute in generating a genuine change in our discipline.
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