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Continuous neural network with windowed Hebbian learning

机译:带有窗口Hebbian学习的连续神经网络

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摘要

We introduce an extension of the classical neural field equation where the dynamics of the synaptic kernel satisfies the standard Hebbian type of learning (synaptic plasticity). Here, a continuous network in which changes in the weight kernel occurs in a specified time window is considered. A novelty of this model is that it admits synaptic weight decrease as well as the usual weight increase resulting from correlated activity. The resulting equation leads to a delay-type rate model for which the existence and stability of solutions such as the rest state, bumps, and traveling fronts are investigated. Some relations between the length of the time window and the bump width is derived. In addition, the effect of the delay parameter on the stability of solutions is shown. Also numerical simulations for solutions and their stability are presented.
机译:我们介绍了经典神经场方程的扩展,其中,突触核的动力学满足学习的标准Hebbian类型(突触可塑性)。在此,考虑了在规定的时间窗内权重内核发生变化的连续网络。该模型的新颖之处在于它允许突触重量减轻以及相关活动导致的通常体重增加。由此产生的方程式导致了一个延迟型速率模型,针对该模型研究了诸如静止状态,颠簸和行进前沿等解的存在性和稳定性。得出时间窗口的长度和凸块宽度之间的一些关系。此外,还显示了延迟参数对解的稳定性的影响。还给出了解决方案及其稳定性的数值模拟。

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