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Training Spiking Neural Networks in the Strong Coupling Regime

机译:在强大的耦合制度中训练尖峰神经网络

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摘要

Recurrent neural networks trained to perform complex tasks can provide insight into the dynamic mechanism that underlies computations performed by cortical circuits. However, due to a large number of unconstrained synaptic connections, the recurrent connectivity that emerges from network training may not be biologically plausible. Therefore, it remains unknown if and how biological neural circuits implement dynamic mechanisms proposed by the models. To narrow this gap, we developed a training scheme that, in addition to achieving learning goals, respects the structural and dynamic properties of a standard cortical circuit model: strongly coupled excitatory-inhibitory spiking neural networks. By preserving the strong mean excitatory and inhibitory coupling of initial networks, we found that most of trained synapses obeyedDale’s law without additional constraints, exhibited large trial-to-trial spiking variability, and operated in inhibition-stabilized regime.We derived analytical estimates on how training and network parameters constrained the changes in mean synaptic strength during training. Our results demonstrate that training recurrent neural networks subject to strong coupling constraints can result in connectivity structure and dynamic regime relevant to cortical circuits.
机译:经过训练以执行复杂任务的经常性神经网络可以深入了解由皮质电路执行的计算的动态机制。然而,由于大量无限制的突触连接,从网络训练中出现的经常性连接可能不是生物学上的。因此,如果生物神经电路如何实现模型提出的动态机制,则仍然未知。为了缩小这种差距,我们开发了一种培训方案,除了实现学习目标外,尊重标准皮质电路模型的结构和动态特性:强耦合兴奋性抑制尖峰神经网络。通过保留初始网络的强平均兴奋性和抑制耦合,我们发现大多数训练有素的突触Obeyeddale的法律没有额外的限制,表现出大量的试验尖峰变异性,并在抑制稳定的制度中运作。我们如何衍生出了如何的分析估计培训和网络参数限制了培训期间平均突触强度的变化。我们的结果表明,经过强大耦合约束的培训经常性神经网络可能导致与皮质电路相关的连接结构和动态制度。

著录项

  • 来源
    《Neural computation》 |2021年第5期|1199-1233|共35页
  • 作者单位

    Laboratory of Biological Modeling National Institute of Diabetes and Digestive and Kidney Diseases/National Institutes of Health Bethesda MD 20814 U.S.A;

    Laboratory of Biological Modeling National Institute of Diabetes and Digestive and Kidney Diseases/National Institutes of Health Bethesda MD 20814 U.S.A;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
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