활성화 함수를 시간적으로 근사하기 위한 스파이킹 뉴런 모델의 노이즈 주입에 따른 학습 성능 분석

Authors
박재우정다예나박소희조정희박성식
Issue Date
2024-06-28
Publisher
대한전자공학회
Citation
2024년도 하계종합학술대회
Abstract
IN spiking neural networks (SNNs), the leaky integrate-and-fire (LIF) neurons, which are widely used model, have limitations in approximating various activation functions, such as Swish and GeLU. To address this, few spikes (FS) neurons were proposed but encountered generalization challengers. This study investigate noise injection in training of FS neurons to enhance the generalization performance. Experimental results with Gaussian noise showed that there was insufficient improvement in training results. This suggests the need for training algotithms to improve the generalization performance of FS neurons.
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