多神经元延迟学习远程监督方法

A. Taherkhani, A. Belatreche, Yuhua Li, L. Maguire
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引用次数: 13

摘要

脉冲是生物大脑中神经元间信息传递的重要组成部分。生物学证据表明,信息是在个体动作电位的时间中携带的,而不仅仅是放电频率。脉冲神经网络被设计用来捕捉更多的大脑生物特征,以构建更强大的智能系统。在本文中,我们扩展了我们新提出的监督学习算法DL-ReSuMe(延迟学习远程监督方法)来训练多个神经元对时空尖峰模式进行分类。在这种方法中,许多神经元而不是单个神经元被训练来执行分类任务。仿真结果表明,与单个神经元相比,神经元群体具有明显更高的处理能力。当期望尖峰序列中的期望尖峰数量增加到适当的数量时,Multi-DL-ReSuMe (Multiple DL-ReSuMe)的性能得到提高。
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Multi-DL-ReSuMe: Multiple neurons Delay Learning Remote Supervised Method
Spikes are an important part of information transmission between neurons in the biological brain. Biological evidence shows that information is carried in the timing of individual action potentials, rather than only the firing rate. Spiking neural networks are devised to capture more biological characteristics of the brain to construct more powerful intelligent systems. In this paper, we extend our newly proposed supervised learning algorithm called DL-ReSuMe (Delay Learning Remote Supervised Method) to train multiple neurons to classify spatiotemporal spiking patterns. In this method, a number of neurons instead of a single neuron is trained to perform the classification task. The simulation results show that a population of neurons has significantly higher processing ability compared to a single neuron. It is also shown that the performance of Multi-DL-ReSuMe (Multiple DL-ReSuMe) is increased when the number of desired spikes is increased in the desired spike trains to an appropriate number.
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