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Neuronal normalization provides effective learning through ineffective synaptic learning rules

机译:神经元正常化通过无效的突触学习规则提供有效的学习

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We revisit here the classical neuroscience paradigm of Hebbian learning showing that a necessary requirement for effective associative memory learning is that the efficacies of the incoming synapses should be uncorrelated. This is difficult to achieve in a robust manner by Hebbian synaptic learning, since it depends on network level information. Effective learning can yet be achieved by a neuronal process that maintains a zero sum of the incoming synaptic efficacies. This normalization drastically improves the memory capacity of associative net- works, from an essentially bounded capacity to one that linearly scales with the network's size. Such neuronal normalization can be successfully carried out by activity-dependent homeostasis of the neuron's synaptic efficacies, which was recently observed in cortical tissue. Thus, our findings suggest that effective associative learning with Hebbian synapses alone is biologically implausible and that Hebbian synapses must be continuously remodeled by neuronally driven regulatory processes in the brain.
机译:我们在这里重新审视了Hebbian学习的经典神经科学范式,它表明有效联想记忆学习的必要条件是传入突触的功效应不相关。通过Hebbian突触学习很难以鲁棒的方式实现这一点,因为它依赖于网络级信息。有效的学习仍可以通过神经过程来实现,该过程将传入突触功效维持为零。这种归一化从根本上限制了容量到随网络规模线性扩展的容量,极大地提高了关联网络的存储容量。这样的神经元正常化可以通过神经元突触功效的活动依赖性稳态来成功进行,最近在皮质组织中观察到这种稳态。因此,我们的发现表明,仅靠Hebbian突触进行有效的联想学习在生物学上是难以置信的,而且Hebbian突触必须通过大脑中神经元驱动的调节过程进行连续重塑。

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