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The emergence of polychronous groups under varying input patterns, plasticity rules and network connectivities

机译:在不同的输入模式,可塑性规则和网络连通性下出现多时基群

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Polychronous groups are unique temporal patterns of neural activity that exist implicitly within non-linear, recurrently connected networks. Through Hebbian based learning these groups can be strengthened to give rise to larger chains of spatiotemporal activity. Compared to other structures such as Synfire chains, they have demonstrated the potential of a much larger capacity for memory or computation within spiking neural networks. Polychronous groups are believed to relate to the input signals under which they emerge. Here we investigate the quantity of groups that emerge from increasing numbers of repeating input patterns, whilst also comparing the differences between two plasticity rules and two network connectivities. We find - perhaps counter-intuitively - that fewer groups are formed as the number of repeating input patterns increases. Furthermore, we find that a tri-phasic learning rule gives rise to fewer groups than the ‘classical’ double decaying exponential STDP plasticity window. It is also found that a scale-free network structure produces a similar quantity, but generally smaller groups than a randomly connected Erdös-Rényi structure.
机译:多元群是神经活动的独特时间模式,它们隐式地存在于非线性,递归连接的网络中。通过基于Hebbian的学习,​​可以增强这些群体,以产生更大的时空活动链。与诸如Synfire链之类的其他结构相比,它们证明了在尖峰神经网络中具有更大的存储或计算能力的潜力。人们认为多时群与它们出现时的输入信号有关。在这里,我们研究了不断增加的重复输入模式中出现的组的数量,同时还比较了两个可塑性规则和两个网络连通性之间的差异。我们发现-也许是违反直觉的-随着重复输入模式数量的增加,形成的组越来越少。此外,我们发现,与“经典”双衰减指数STDP可塑性窗口相比,三相学习规则产生的组更少。还发现,与随机连接的Erdös-Rényi结构相比,无标度网络结构产生的数量类似,但组通常较小。

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