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Improving the Stability for Spiking Neural Networks Using Anti-noise Learning Rule

机译:利用抗噪声学习规则提高尖刺神经网络的稳定性

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Most of the existing SNNs only consider training the noise-free data. However, noise extensively exists in actual SNNs. The stability of networks is affected by noise perturbation during the training period. Therefore, one research challenge is to improve the stability and produce reliable outputs under the present of noises. In this paper, the training method and the exponential method are employed to enhance the neural network ability of noise tolerance. The comparison of conventional and anti-noise SNNs under various tasks shows that the anti-noise SNN can significantly improve the noise tolerance capability.
机译:大多数现有SNN只考虑培训无噪声数据。但是,噪声在实际的SNN中存在广泛存在。网络的稳定性受训练期间噪声扰动的影响。因此,一项研究挑战是提高噪声目前的稳定性并产生可靠的输出。在本文中,采用训练方法和指数方法来增强神经网络的噪声公差能力。在各种任务下传统和抗噪声SNN的比较表明,抗噪声SNN可以显着提高噪声公差能力。

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