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一种用于非线性函数逼近的脉冲神经网络架构。

A spiking neural network architecture for nonlinear function approximation.

作者信息

Iannella N, Back A D

机构信息

Brain Science Institute, RIKEN, Saitama, Japan.

出版信息

Neural Netw. 2001 Jul-Sep;14(6-7):933-9. doi: 10.1016/s0893-6080(01)00080-6.

Abstract

Multilayer perceptrons have received much attention in recent years due to their universal approximation capabilities. Normally, such models use real valued continuous signals, although they are loosely based on biological neuronal networks that encode signals using spike trains. Spiking neural networks are of interest both from a biological point of view and in terms of a method of robust signaling in particularly noisy or difficult environments. It is important to consider networks based on spike trains. A basic question that needs to be considered however, is what type of architecture can be used to provide universal function approximation capabilities in spiking networks? In this paper, we propose a spiking neural network architecture using both integrate-and-fire units as well as delays, that is capable of approximating a real valued function mapping to within a specified degree of accuracy.

摘要

近年来,多层感知器因其通用逼近能力而备受关注。通常,此类模型使用实值连续信号,尽管它们在一定程度上基于使用尖峰序列对信号进行编码的生物神经网络。从生物学角度以及在特别嘈杂或困难环境中的一种鲁棒信号传输方法方面来看,脉冲神经网络都很受关注。考虑基于尖峰序列的网络很重要。然而,一个需要考虑的基本问题是,哪种类型的架构可用于在脉冲网络中提供通用函数逼近能力?在本文中,我们提出了一种使用积分发放单元以及延迟的脉冲神经网络架构,它能够在指定的精度范围内逼近实值函数映射。

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