Gerstner Wulfram, Kistler Werner M
Swiss Federal Institute of Technology Lausanne, Laboratory of Computational Neuroscience, EPFL-LCN, 1015 Lausanne EPFL, Switzerland.
Biol Cybern. 2002 Dec;87(5-6):404-15. doi: 10.1007/s00422-002-0353-y.
Several formulations of correlation-based Hebbian learning are reviewed. On the presynaptic side, activity is described either by a firing rate or by presynaptic spike arrival. The state of the postsynaptic neuron can be described by its membrane potential, its firing rate, or the timing of backpropagating action potentials (BPAPs). It is shown that all of the above formulations can be derived from the point of view of an expansion. In the absence of BPAPs, it is natural to correlate presynaptic spikes with the postsynaptic membrane potential. Time windows of spike-time-dependent plasticity arise naturally if the timing of postsynaptic spikes is available at the site of the synapse, as is the case in the presence of BPAPs. With an appropriate choice of parameters, Hebbian synaptic plasticity has intrinsic normalization properties that stabilizes postsynaptic firing rates and leads to subtractive weight normalization.
本文综述了几种基于相关性的赫布学习公式。在突触前侧,活动可以用发放率或突触前尖峰到达来描述。突触后神经元的状态可以用其膜电位、发放率或反向传播动作电位(BPAPs)的时间来描述。结果表明,上述所有公式都可以从展开的角度推导出来。在没有BPAPs的情况下,将突触前尖峰与突触后膜电位相关联是很自然的。如果在突触部位可以获得突触后尖峰的时间,就像存在BPAPs时的情况一样,那么尖峰时间依赖可塑性的时间窗口就会自然出现。通过适当选择参数,赫布突触可塑性具有内在的归一化特性,可稳定突触后发放率并导致减法权重归一化。