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Hebbian learning and spiking neurons

机译:希伯来语学习和尖刺神经元

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A correlation-based ("Hebbian") learning rule at a spike level with millisecond resolution is formulated, mathematically analyzed, and compared with learning in a firing-rate description. The relative timing of presynaptic and postsynaptic spikes influences synaptic weights via an asymmetric "learning window." A differential equation for the learning dynamics is derived under the assumption that the time scales of learning and neuronal spike dynamics can be separated. The differential equation is solved for a Poissonian neuron model with stochastic spike arrival. It is shown that correlations between input and output spikes tend to stabilize structure formation. With an appropriate choice of parameters, learning leads to an intrinsic normalization of the average weight and the output firing rate. Noise generates diffusion-like spreading of synaptic weights. [References: 68]
机译:在毫秒级分辨率的峰值水平上制定基于相关的(“ Hebbian”)学习规则,对其进行数学分析,并将其与射击速率描述中的学习进行比较。突触前和突触后尖峰的相对时间会通过不对称的“学习窗口”影响突触权重。在可以将学习时间尺度和神经元棘突动力学可以分开的假设下,得出了学习动力学的微分方程。求解带有随机峰值到达的泊松神经元模型的微分方程。结果表明,输入和输出尖峰之间的相关性趋于稳定结构的形成。随着参数的适当选择,学习导致平均体重的固有正常化和输出射速。噪声会产生突触权重的扩散状扩散。 [参考:68]

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