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How Neuronal Noises Influence the Spiking Neural Networks’s Cognitive Learning Process: A Preliminary Study

机译:神经元噪音如何影响尖刺神经网络的认知学习过程:初步研究

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摘要

In neuroscience, the Default Mode Network (DMN), also known as the default network or the default-state network, is a large-scale brain network known to have highly correlated activities that are distinct from other networks in the brain. Many studies have revealed that DMNs can influence other cognitive functions to some extent. This paper is motivated by this idea and intends to further explore on how DMNs could help Spiking Neural Networks (SNNs) on image classification problems through an experimental study. The approach emphasizes the bionic meaning on model selection and parameters settings. For modeling, we select Leaky Integrate-and-Fire (LIF) as the neuron model, Additive White Gaussian Noise (AWGN) as the input DMN, and design the learning algorithm based on Spike-Timing-Dependent Plasticity (STDP). Then, we experiment on a two-layer SNN to evaluate the influence of DMN on classification accuracy, and on a three-layer SNN to examine the influence of DMN on structure evolution, where the results both appear positive. Finally, we discuss possible directions for future works.
机译:在神经科学中,默认模式网络(DMN),也称为默认网络或默认状态网络,是一个已知具有高度相关活动的大型大脑网络,其与大脑中的其他网络不同。许多研究表明,DMN可以在一定程度上影响其他认知功能。本文通过这种想法激励,并进一步探索DMNS如何通过实验研究帮助尖刺神经网络(SNNS)在图像分类问题上。该方法强调了仿生含义在模型选择和参数设置上。对于建模,我们选择泄漏整合 - 和火(LIF)作为神经元模型,添加的白色高斯噪声(AWGN)作为输入DMN,基于尖峰定时依赖性塑性(STDP)设计了学习算法。然后,我们在两层SNN上进行实验,以评估DMN对分类精度的影响,以及在三层SNN上检查DMN对结构演进的影响,结果均出现阳性。最后,我们讨论了未来作品的可能指示。

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