基于积分-点火采样和重建技术的间接学习径向基函数尖峰模型

Xu Zhang, Greg Foderaro, C. Henriquez, A. VanDongen, S. Ferrari
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引用次数: 13

摘要

本文提出了一种基于径向基函数的确定性自适应脉冲模型,并开发了一种用于训练脉冲神经网络的漏积分点火采样器。已经提出了几种算法,通过生物学上合理的学习机制来训练尖峰神经网络,如尖峰时间依赖的突触可塑性和Hebbian可塑性。这些算法通常依赖于通过权重更新规则直接更新突触强度或权重的能力,其中权重增量可以根据训练方程决定和实现。然而,在自适应尖峰神经网络的一些潜在应用中,包括神经假体设备和CMOS/忆阻纳米级神经形态芯片,权重不能直接控制,而是倾向于通过突触前和突触后的神经活动随时间变化。本文提出了一种间接学习方法,该方法通过控制输入尖峰序列来调节尖峰时间依赖的可塑性,从而诱导突触权的变化。代替权重,该算法操纵输入尖峰序列,通过确定一系列尖峰时间来最小化期望的目标函数,并间接地诱导网络中期望的突触可塑性,从而刺激输入神经元。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Radial Basis Function Spike Model for Indirect Learning via Integrate-and-Fire Sampling and Reconstruction Techniques
This paper presents a deterministic and adaptive spike model derived from radial basis functions and a leaky integrate-and-fire sampler developed for training spiking neural networks without direct weight manipulation. Several algorithms have been proposed for training spiking neural networks through biologically-plausible learning mechanisms, such as spike-timing dependent synaptic plasticity and Hebbian plasticity. These algorithms typically rely on the ability to update the synaptic strengths, or weights, directly, through a weight update rule in which the weight increment can be decided and implemented based on the training equations. However, in several potential applications of adaptive spiking neural networks, including neuroprosthetic devices and CMOS/memristor nanoscale neuromorphic chips, the weights cannot be manipulated directly and, instead, tend to change over time by virtue of the pre- and postsynaptic neural activity. This paper presents an indirect learning method that induces changes in the synaptic weights by modulating spike-timing-dependent plasticity by means of controlled input spike trains. In place of the weights, the algorithmmanipulates the input spike trains used to stimulate the input neurons by determining a sequence of spike timings that minimize a desired objective function and, indirectly, induce the desired synaptic plasticity in the network.
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