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Learning and stabilization of winner-take-all dynamics through interacting excitatory and inhibitory plasticity

机译:通过相互作用的兴奋性和抑制性可塑性来学习和稳定赢家通吃的动力

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摘要

Winner-Take-All (WTA) networks are recurrently connected populations of excitatory and inhibitory neurons that represent promising candidate microcircuits for implementing cortical computation. WTAs can perform powerful computations, ranging from signal-restoration to state-dependent processing. However, such networks require fine-tuned connectivity parameters to keep the network dynamics within stable operating regimes. In this article, we show how such stability can emerge autonomously through an interaction of biologically plausible plasticity mechanisms that operate simultaneously on all excitatory and inhibitory synapses of the network. A weight-dependent plasticity rule is derived from the triplet spike-timing dependent plasticity model, and its stabilization properties in the mean-field case are analyzed using contraction theory. Our main result provides simple constraints on the plasticity rule parameters, rather than on the weights themselves, which guarantee stable WTA behavior. The plastic network we present is able to adapt to changing input conditions, and to dynamically adjust its gain, therefore exhibiting self-stabilization mechanisms that are crucial for maintaining stable operation in large networks of interconnected subunits. We show how distributed neural assemblies can adjust their parameters for stable WTA function autonomously while respecting anatomical constraints on neural wiring.
机译:Winner-Take-All(WTA)网络是兴奋性和抑制性神经元的经常性连接种群,代表了实现皮层计算的有希望的候选微电路。 WTA可以执行强大的计算,范围从信号恢复到依赖状态的处理。但是,这样的网络需要微调的连接性参数,以将网络动态保持在稳定的操作范围内。在本文中,我们展示了如何通过在网络上所有兴奋性和抑制性突触上同时起作用的生物学上可能的可塑性机制的相互作用来自动出现这种稳定性。从三重态峰时变相关的可塑性模型导出了重量相关的可塑性规则,并使用收缩理论分析了其在平均场情况下的稳定性。我们的主要结果为可塑性规则参数提供了简单的约束,而不是权重本身,从而保证了稳定的WTA行为。我们目前提供的塑料网络能够适应不断变化的输入条件,并能够动态调整其增益,因此展现出自稳定机制,这对于在互连的子单元的大型网络中维持稳定的运行至关重要。我们将展示分布式神经组件如何在尊重神经连线的解剖学约束的同时,自动调整其参数以实现稳定的WTA功能。

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