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Pairwise Analysis Can Account for Network Structures Arising from Spike-Timing Dependent Plasticity

机译:成对分析可以解释由峰值计时相关可塑性引起的网络结构

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摘要

Spike timing-dependent plasticity (STDP) modifies synaptic strengths based on timing information available locally at each synapse. Despite this, it induces global structures within a recurrently connected network. We study such structures both through simulations and by analyzing the effects of STDP on pair-wise interactions of neurons. We show how conventional STDP acts as a loop-eliminating mechanism and organizes neurons into in- and out-hubs. Loop-elimination increases when depression dominates and turns into loop-generation when potentiation dominates. STDP with a shifted temporal window such that coincident spikes cause depression enhances recurrent connections and functions as a strict buffering mechanism that maintains a roughly constant average firing rate. STDP with the opposite temporal shift functions as a loop eliminator at low rates and as a potent loop generator at higher rates. In general, studying pairwise interactions of neurons provides important insights about the structures that STDP can produce in large networks.
机译:尖峰时序相关可塑性(STDP)根据每个突触处本地可用的时序信息来修改突触强度。尽管如此,它仍会在循环连接的网络中引发全局结构。我们通过模拟和通过分析STDP对神经元的成对相互作用的影响来研究这种结构。我们展示了传统的STDP如何充当消除环路的机制,并将神经元组织为入站和出站。当抑郁情绪占主导时,消除环路的作用增加;当增强电位占优势时,消除环路的产生。 STDP的时间窗口发生了偏移,使得尖峰同时发生导致压低,从而增强了重复连接,并充当了严格的缓冲机制,可保持大致恒定的平均发射速率。具有相反时间偏移的STDP在低速率时起环路消除器的作用,而在高速率时起强大的环路发生器的作用。通常,研究神经元的成对相互作用可提供有关STDP可以在大型网络中产生的结构的重要见解。

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