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Bursting dynamics remarkably improve the performance of neural networks on liquid computing

机译:爆发动力学显着提高了液体计算中神经网络的性能

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Burst firings are functionally important behaviors displayed by neural circuits, which plays a primary role in reliable transmission of electrical signals for neuronal communication. However, with respect to the computational capability of neural networks, most of relevant studies are based on the spiking dynamics of individual neurons, while burst firing is seldom considered. In this paper, we carry out a comprehensive study to compare the performance of spiking and bursting dynamics on the capability of liquid computing, which is an effective approach for intelligent computation of neural networks. The results show that neural networks with bursting dynamic have much better computational performance than those with spiking dynamics, especially for complex computational tasks. Further analysis demonstrate that the fast firing pattern of bursting dynamics can obviously enhance the efficiency of synaptic integration from pre-neurons both temporally and spatially. This indicates that bursting dynamic can significantly enhance the complexity of network activity, implying its high efficiency in information processing.
机译:爆炸是神经回路在功能上的重要表现,在神经元电信号的可靠传输中起着主要作用。但是,关于神经网络的计算能力,大多数相关研究都是基于单个神经元的尖峰动态,而很少考虑爆发。在本文中,我们进行了全面的研究,以比较尖峰和爆发动力学在液体计算能力方面的性能,这是用于神经网络智能计算的有效方法。结果表明,具有动态爆发性的神经网络比具有突增动态的神经网络具有更好的计算性能,尤其是对于复杂的计算任务。进一步的分析表明,爆发动力学的快速发射方式可以在时间和空间上明显提高前神经元突触整合的效率。这表明动态爆发可以显着提高网络活动的复杂性,这意味着其在信息处理中的高效性。

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