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Supervised Associative Learning in Spiking Neural Network

机译:尖峰神经网络中的监督联想学习

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In this paper, we propose a simple supervised associative learning approach for spiking neural networks. In an excitatory-inhibitory network paradigm with Izhikevich spiking neurons, synaptic plasticity is implemented on excitatory to excitatory synapses dependent on both spike emission rates and spike timings. As results of learning, the network is able to associate not just familiar stimuli but also novel stimuli observed through synchronised activity within the same subpopulation and between two associated subpopulations.
机译:在本文中,我们提出了一种简单的监督式关联学习方法,用于强化神经网络。在具有Izhikevich尖峰神经元的兴奋性抑制网络范例中,取决于尖峰发射速率和尖峰定时,在兴奋性突触到兴奋性突触上实现突触可塑性。作为学习的结果,网络不仅可以关联熟悉的刺激,而且还可以关联通过相同亚群内以及两个关联亚群之间的同步活动观察到的新颖刺激。

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