A More Accurate Approximation of Activation Function with Few Spikes Neurons

Dayena Jeong, Jaewoo Park, Jeonghee Jo, Jongkil Park, Jaewook Kim, Hyun Jae Jang, Suyoun Lee, Seongsik Park
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Abstract

Recent deep neural networks (DNNs), such as diffusion models [1], have faced high computational demands. Thus, spiking neural networks (SNNs) have attracted lots of attention as energy-efficient neural networks. However, conventional spiking neurons, such as leaky integrate-and-fire neurons, cannot accurately represent complex non-linear activation functions, such as Swish [2]. To approximate activation functions with spiking neurons, few spikes (FS) neurons were proposed [3], but the approximation performance was limited due to the lack of training methods considering the neurons. Thus, we propose tendency-based parameter initialization (TBPI) to enhance the approximation of activation function with FS neurons, exploiting temporal dependencies initializing the training parameters.
用少量尖峰神经元更精确地逼近激活函数
最近的深度神经网络(DNN),如扩散模型[1],面临着很高的计算要求。因此,尖峰神经网络(SNN)作为高能效神经网络吸引了大量关注。然而,传统的尖峰神经元(如泄漏整合-发射神经元)无法准确地表示复杂的非线性激活函数,如 Swish[2]。为了用尖峰神经元逼近激活函数,有人提出了少尖峰(FS)神经元 [3],但由于缺乏考虑神经元的训练方法,逼近性能有限。因此,我们提出了基于时序的参数初始化(TBPI),利用训练参数初始化的时序依赖性来提高 FS 神经元激活函数的近似性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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