具有信息数据特征的脉冲神经网络分类问题的优化Hebbian学习规则

Tingyu Chen, Xin Hu, Yiren Zhou, Zhuo Zou, Longfei Liang, Wen-Chi Yang
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引用次数: 0

摘要

我们提出了一种新的Hebbian学习规则,忽略历史数据,只比较电压(文中称为NHCV)。与传统的Hebbian学习规则依赖于比较峰值时间不同,NHCV的设计是根据神经元放电时的电压来调整突触的权重。NHCV计算效率高,在处理信息特征方面具有优势。与传统的STDP学习规则相比,它加速了训练过程(每个样本提高0.5到2秒),并且在Wine数据集(绝对提高5.7%)和Diabetes数据集(绝对提高12%)上取得了更好的准确性。我们揭示了数据集特征内部的信息量对snn的性能有很大影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An optimized Hebbian Learning Rule for Spiking Neural Networks on the Classification Problems with Informative Data Features
We proposed a new Hebbian learning rule that Neglects Historical data and only Compares Voltages (referred to NHCV in the paper). Unlike the traditional Hebbian learning rules that rely on comparing the spike timing, NHCV is designed to adjust the weight of the synapse based on the voltage of the neuron as soon as it fires. NHCV is computationally efficient and have advantages in processing informative features. Compared to traditional STDP learning rules, it accelerated training process (0.5 to 2 seconds improvement on each sample) and achieved better accuracy on Wine dataset (5.7% absolute improvement) and Diabetes dataset (12% absolute improvement). We reveal that the information amount inside the features of a dataset considerably affects the performance of SNNs.
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