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Closed-Form Treatment of the Interactions between Neuronal Activity and Timing-Dependent Plasticity in Networks of Linear Neurons

机译:线性神经元网络中神经元活动与时序依赖可塑性之间相互作用的闭式处理

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摘要

Network activity and network connectivity mutually influence each other. Especially for fast processes, like spike-timing-dependent plasticity (STDP), which depends on the interaction of few (two) signals, the question arises how these interactions are continuously altering the behavior and structure of the network. To address this question a time-continuous treatment of plasticity is required. However, this is - even in simple recurrent network structures - currently not possible. Thus, here we develop for a linear differential Hebbian learning system a method by which we can analytically investigate the dynamics and stability of the connections in recurrent networks. We use noisy periodic external input signals, which through the recurrent connections lead to complex actual ongoing inputs and observe that large stable ranges emerge in these networks without boundaries or weight-normalization. Somewhat counter-intuitively, we find that about 40% of these cases are obtained with a long-term potentiation-dominated STDP curve. Noise can reduce stability in some cases, but generally this does not occur. Instead stable domains are often enlarged. This study is a first step toward a better understanding of the ongoing interactions between activity and plasticity in recurrent networks using STDP. The results suggest that stability of (sub-)networks should generically be present also in larger structures.
机译:网络活动和网络连接性相互影响。尤其是对于依赖于少量(两个)信号相互作用的快速过程,如依赖于峰值定时的可塑性(STDP),出现了一个问题,这些相互作用如何不断改变网络的行为和结构。为了解决这个问题,需要对可塑性进行时间连续处理。但是,即使在简单的循环网络结构中,目前也无法实现。因此,在这里,我们为线性差分Hebbian学习系统开发了一种方法,通过该方法,我们可以分析性地研究循环网络中连接的动力学和稳定性。我们使用有噪声的周期性外部输入信号,这些信号通过循环连接导致复杂的实际正在进行的输入,并观察到这些网络中出现了大的稳定范围,而没有边界或权重归一化。有点与直觉相反,我们发现其中约40%的情况是通过长期以增强作用为主的STDP曲线获得的。在某些情况下,噪声会降低稳定性,但通常不会发生这种情况。相反,稳定域通常会扩大。这项研究是使用STDP更好地了解循环网络中活动与可塑性之间正在进行的相互作用的第一步。结果表明,(子)网络的稳定性一般也应存在于较大的结构中。

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