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Spiking Neural Networks Enable Two-Dimensional Neurons and Unsupervised Multi-Timescale Learning

机译:尖峰神经网络可实现二维神经元和无监督的多时标学习

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The capabilities of artificial neural networks (ANNs) are limited by the operations possible at their individual neurons and synapses. For instance, each neuron's activation only represents a single scalar variable. In addition, because neuronal activations may be dominated by a single timescale in the synaptic input, unsupervised learning from data with multiple timescales has not been generally possible. Here we address these by exploiting the continuous-time and asynchronous operation of spiking neural networks (SNNs), i.e. a biologically-inspired type of ANNs. First, we demonstrate how input neurons can be two-dimensional (2D), i.e. each represent two variables. Second, we show unsupervised learning from multiple timescales simultaneously. 2D neurons operate by allocating each variable to a different timescale in their activation, i.e. one variable corresponds to the timing of individual spikes, and another to the spike rate. We show how these can be modulated separately but simultaneously, and we apply this mixed coding technique to encoding images with two modalities, namely, colour and brightness. Unsupervised multi-timescale learning is achieved by synapses with spike-timing-dependent plasticity, combined with varying degrees of short-term plasticity. We demonstrate the successful application of this learning scheme on the unsupervised classification of bimodal pictures encoded by our 2D neurons. Taken together, our results show that SNNs are capable of increasing both the information content of each neuron and the exploitable data in the input. We suggest that through these unique features, SNNs may increase the performance and broaden the applicability of ANNs.
机译:人工神经网络(ANN)的功能受到其单个神经元和突触可能进行的操作的限制。例如,每个神经元的激活仅代表一个标量变量。另外,由于神经元的激活可能由突触输入中的单个时间尺度决定,因此从多个时间尺度的数据进行无监督学习通常是不可能的。在这里,我们通过利用尖峰神经网络(SNN)的连续时间和异步操作来解决这些问题,即神经启发型的ANN。首先,我们演示输入神经元如何可以是二维(2D)的,即每个代表两个变量。其次,我们展示了同时从多个时间尺度进行无监督学习的过程。二维神经元通过在激活时将每个变量分配给不同的时间尺度来进行操作,即一个变量对应于各个峰值的时间,另一个变量对应于峰值速率。我们展示了如何分别但同时地对它们进行调制,并将这种混合编码技术应用于对具有两种模式(即颜色和亮度)的图像进行编码。无监督的多时标学习是通过突触时序依赖可塑性的突触来实现的,结合了不同程度的短期可塑性。我们证明了这种学习方案在由我们的2D神经元编码的双峰图片的无监督分类中的成功应用。综上所述,我们的结果表明SNN能够增加每个神经元的信息内容和输入中的可利用数据。我们建议通过这些独特的功能,SNN可以提高性能并扩大ANN的适用性。

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