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Noisy Softplus: A Biology Inspired Activation Function

机译:嘈杂的Softplus:受生物启发的激活功能

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The Spiking Neural Network (SNN) has not achieved the recognition/classification performance of its non-spiking competitor, the Artificial Neural Network(ANN), particularly when used in deep neural networks. The mapping of a well-trained ANN to an SNN is a hot topic in this field, especially using spiking neurons with biological characteristics. This paper proposes a new biologically-inspired activation function, Noisy Softplus, which is well-matched to the response function of LIF (Leaky Integrate-and-Fire) neurons. A convolutional network (ConvNet) was trained on the MNIST database with Noisy Softplus units and converted to an SNN while maintaining a close classification accuracy. This result demonstrates the equivalent recognition capability of the more biologically-realistic SNNs and bring biological features to the activation units in ANNs.
机译:尖刺神经网络(SNN)尚未实现其非尖刺竞争对手的人工神经网络(ANN)的识别/分类性能,尤其是在深层神经网络中使用时。将训练有素的ANN映射到SNN是该领域的热门话题,尤其是使用具有生物学特征的尖峰神经元。本文提出了一种新的具有生物启发性的激活功能Noisy Softplus,它与LIF(泄漏整合并发射)神经元的响应功能非常匹配。卷积网络(ConvNet)在MNIST数据库上使用Noisy Softplus单元进行了训练,并转换为SNN,同时保持了精确的分类精度。该结果证明了更具生物学现实意义的SNN的等效识别能力,并将生物学特征带入了ANN中的激活单元。

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