论文标题
基于峰值神经网络的文件分类
File Classification Based on Spiking Neural Networks
论文作者
论文摘要
在本文中,我们提出了一个基于峰值神经网络(SNN)的大数据集中的文件分类系统。键值元数据对中包含的文件信息由一种新颖的相关时间编码方案映射到snn输入的尖峰模式。输入尖峰模式之间的相关性由文件相似度度量确定。首先解决了使用峰值依赖性可塑性(STDP)对此类网络的无监督训练。然后,通过将输出神经元处的尖峰模式与代表所需类别的目标模式进行比较,通过将误差信号的反向传播来考虑,该训练是通过反向传播来考虑的。分类精度是针对具有数万个元素的各种公开数据集测量的,并与其他学习算法(包括逻辑回归和支持向量机器)进行了比较。仿真结果表明,使用回忆突触的基于SNN的系统可能代表用于推理任务的经典机器学习算法的有效替代方案,尤其是在异步摄入输入数据和有限资源的环境中。
In this paper, we propose a system for file classification in large data sets based on spiking neural networks (SNNs). File information contained in key-value metadata pairs is mapped by a novel correlative temporal encoding scheme to spike patterns that are input to an SNN. The correlation between input spike patterns is determined by a file similarity measure. Unsupervised training of such networks using spike-timing-dependent plasticity (STDP) is addressed first. Then, supervised SNN training is considered by backpropagation of an error signal that is obtained by comparing the spike pattern at the output neurons with a target pattern representing the desired class. The classification accuracy is measured for various publicly available data sets with tens of thousands of elements, and compared with other learning algorithms, including logistic regression and support vector machines. Simulation results indicate that the proposed SNN-based system using memristive synapses may represent a valid alternative to classical machine learning algorithms for inference tasks, especially in environments with asynchronous ingest of input data and limited resources.