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Short term memory in recurrent networks of spiking neurons

机译:尖峰神经元的递归网络中的短期记忆

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We present in this paper a general model of recurrent networks of spiking neurons, composed of several populations, and whose interaction pattern is set with a random draw. We use for simplicity discrete time neuron updating, and the emitted spikes are transmitted through randomly delayed lines. In excitatory-inhibitory networks, we show that inhomo-geneous delays may favour synchronization provided that the inhibitory delays distribution is significantly stronger than the excitatory one. In that case, slow waves of synchronous activity appear (this synchronous activity is stronger in inhibitory population). This synchrony allows for a fast adaptivity of the network to various input stimuli. In networks observing the constraint of short range excitation and long range inhibition, we show that under some parameter settings, this model displays properties of -1- dynamic retention -2- input normalization -3- target tracking. Those properties are of interest for modelling biological topologically organized structures, and for robotic applications taking place in noisy environments where targets vary in size, speed and duration.
机译:我们在本文中提出了一个尖峰神经元递归网络的通用模型,该模型由多个种群组成,并且其交互模式是随机抽取的。为了简单起见,我们使用离散时间神经元更新,并且发射的尖峰通过随机延迟的线传输。在兴奋性抑制性网络中,我们证明,非同质的延迟可能会促进同步,前提是抑制性延迟分布明显比兴奋性延迟强。在这种情况下,会出现同步活动的慢波(这种同步活动在抑制种群中更强)。这种同步允许网络对各种输入刺激的快速适应性。在观察到近距离激励和远距离抑制约束的网络中,我们表明在某些参数设置下,该模型显示-1-动态保留-2-输入归一化-3-目标跟踪的属性。这些特性对于建模生物拓扑组织结构以及在目标大小,速度和持续时间变化的嘈杂环境中发生的机器人应用中非常有用。

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