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Dynamic Hebbian Cross-Correlation Learning Resolves the Spike Timing Dependent Plasticity Conundrum

机译:动态Hebbian互相关学习解决了Spike时序相关的可塑性难题

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摘要

Spike Timing-Dependent Plasticity has been found to assume many different forms. The classic STDP curve, with one potentiating and one depressing window, is only one of many possible curves that describe synaptic learning using the STDP mechanism. It has been shown experimentally that STDP curves may contain multiple LTP and LTD windows of variable width, and even inverted windows. The underlying STDP mechanism that is capable of producing such an extensive, and apparently incompatible, range of learning curves is still under investigation. In this paper, it is shown that STDP originates from a combination of two dynamic Hebbian cross-correlations of local activity at the synapse. The correlation of the presynaptic activity with the local postsynaptic activity is a robust and reliable indicator of the discrepancy between the presynaptic neuron and the postsynaptic neuron's activity. The second correlation is between the local postsynaptic activity with dendritic activity which is a good indicator of matching local synaptic and dendritic activity. We show that this simple time-independent learning rule can give rise to many forms of the STDP learning curve. The rule regulates synaptic strength without the need for spike matching or other supervisory learning mechanisms. Local differences in dendritic activity at the synapse greatly affect the cross-correlation difference which determines the relative contributions of different neural activity sources. Dendritic activity due to nearby synapses, action potentials, both forward and back-propagating, as well as inhibitory synapses will dynamically modify the local activity at the synapse, and the resulting STDP learning rule. The dynamic Hebbian learning rule ensures furthermore, that the resulting synaptic strength is dynamically stable, and that interactions between synapses do not result in local instabilities. The rule clearly demonstrates that synapses function as independent localized computational entities, each contributing to the global activity, not in a simply linear fashion, but in a manner that is appropriate to achieve local and global stability of the neuron and the entire dendritic structure.
机译:已发现与峰值时间相关的可塑性具有多种不同形式。具有一个增强窗口和一个抑制窗口的经典STDP曲线只是描述使用STDP机制的突触学习的许多可能曲线之一。实验表明,STDP曲线可能包含多个LTP和LTD宽度可变的窗口,甚至是倒置窗口。能够产生如此广泛且明显不兼容的学习曲线范围的潜在STDP机制仍在研究中。在本文中,表明STDP源自突触局部活动的两个动态Hebbian互相关的组合。突触前活动与局部突触后活动的相关性是突触前神经元与突触后神经元活动之间差异的有力且可靠的指标。第二个相关性是局部突触后活性与树突状活性之间的关系,这是匹配局部突触和树突状活性的良好指标。我们表明,这种简单的与时间无关的学习规则可以产生许多形式的STDP学习曲线。该规则调节突触强度,而无需峰值匹配或其他监督学习机制。突触中树突活动的局部差异极大地影响了互相关差异,这决定了不同神经活动源的相对贡献。由于附近突触,正向和反向传播的动作电位以及抑制性突触引起的树突状活动将动态地改变突触处的局部活性,以及​​由此产生的STDP学习规则。动态的Hebbian学习规则进一步确保了所产生的突触强度是动态稳定的,并且突触之间的相互作用不会导致局部不稳定。该规则清楚地表明,突触起着独立的局部计算实体的作用,每个实体都不以简单的线性方式,而是以适合于实现神经元和整个树突结构的局部和全局稳定性的方式来促进全局活动。

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