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Spiking Neural Networks with Single-Spike Temporal-Coded Neurons for Network Intrusion Detection

机译:用单穗颞型编码神经元尖刺神经网络,用于网络入侵检测

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Spiking neural network (SNN) is interesting due to its strong bio-plausibility and high energy efficiency. However, its performance is falling far behind conventional deep neural networks (DNNs). In this paper, considering a general class of single-spike temporal-coded integrate-and-fire neurons, we analyze the input-output expressions of both leaky and nonleaky neurons. We show that SNNs built with leaky neurons suffer from the overly-nonlinear and overly-complex input-output response, which is the major reason for their difficult training and low performance. This reason is more fundamental than the commonly believed problem of nondifferentiable spikes. To support this claim, we show that SNNs built with nonleaky neurons can have a less-complex and less-nonlinear input-output response. They can be easily trained and can have superior performance, which is demonstrated by experimenting with the SNNs over two popular network intrusion detection datasets, i.e., the NSL-KDD and the AWID datasets. Our experiment results show that the proposed SNNs outperform a comprehensive list of DNN models and classic machine learning models. This paper demonstrates that SNNs can be promising and competitive in contrast to common beliefs.
机译:由于其强大的生物合理性和高能量效率,尖峰神经网络(SNN)很有趣。然而,其性能远远落后于传统的深度神经网络(DNN)。在本文中,考虑到一般类别的单穗颞型编码整合和火神经元,我们分析了泄漏和非斑层神经元的输入输出表达。我们展示了用泄漏神经元建造的SNN,遭受过度非线性和过度复杂的输入 - 输出响应,这是他们艰难训练和低性能的主要原因。这个原因比常见的尖刺问题更为根本性。为了支持这一主张,我们表明,使用非斑层神经元构建的SNN可以具有更少复杂和较少的非线性输入输出响应。它们可以很容易地培训,并且可以具有卓越的性能,通过在两个流行的网络入侵检测数据集中尝试SNN来证明,即NSL-KDD和AWID数据集。我们的实验结果表明,拟议的SNNS优于DNN模型和经典机器学习模型的全面清单。本文表明,与普通信仰相比,SNNS可能是有前途和竞争力的。

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