Spike-Rate Perceptrons

Xuyan Xiang, Yingchun Deng, Xiangqun Yang
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引用次数: 7

Abstract

According to the diffusion approximation, we present a more biologically plausible so-called spike-rate perceptron based on IF model with renewal process inputs, which employs both first and second statistical representation, i.e. the means, variances and correlations of the synaptic input. We first identify the input-output relationship of the spike-rate model and apply an error minimization technique to train the model. We then show that it is possible to train these networks with a mathematically derived learning rule. We show through various examples that such perceptron, even a single neuron, is able to perform various complex non-linear tasks like the XOR problem. Here our perceptrons offer a significant advantage over classical models, in that they include both the mean and the variance of the input signal. Our ultimate purpose is to open up the possibility of carrying out a random computation in neuronal networks, by introducing second order statistics in computations.
Spike-Rate感知器
根据扩散近似,我们提出了一种具有更新过程输入的中频模型,该模型采用了一阶和二阶统计表示,即突触输入的均值、方差和相关性。我们首先确定了尖峰率模型的输入-输出关系,并应用误差最小化技术来训练模型。然后我们展示了用数学推导的学习规则来训练这些网络是可能的。我们通过各种例子表明,这种感知器,即使是单个神经元,也能够执行各种复杂的非线性任务,如异或问题。在这里,我们的感知器比经典模型提供了一个显著的优势,因为它们包括输入信号的均值和方差。我们的最终目的是通过在计算中引入二阶统计量,打开在神经网络中进行随机计算的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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