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Synaptic weighting for physiological responses in recurrent spiking neural networks

机译:突跳神经网络中生理反应的突触加权。

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Recurrently connected neural networks have been used extensively in the literature to describe various neuro-physiological phenomena, such as coordinate transformations during sensorimotor integration. Due to the directed cycles that can exist in recurrent networks, there is no well-known way to a priori specify synaptic weights to elicit neuron spiking responses to stimuli based on available neurophysiology. Using a common mean field assumption in which synaptic inputs are uncorrelated for sufficiently large populations of neurons, we show that the connection topology and a neuron's response characteristics can be decoupled. This allows specification of neuron steady-state responses independent of the connection topology. We provide evidence from two case studies which serve to validate this synaptic weighting approach.
机译:递归连接的神经网络已在文献中广泛用于描述各种神经生理现象,例如感觉运动整合过程中的坐标转换。由于循环网络中可能存在定向循环,因此尚无众所周知的方法可以根据现有的神经生理先验地指定突触权重来引起神经元对刺激的尖峰反应。使用一个通用的平均场假设,其中突触输入与足够大的神经元群体不相关,我们证明了连接拓扑结构和神经元的响应特性可以解耦。这允许独立于连接拓扑的神经元稳态响应的规范。我们从两个案例研究中提供证据,以验证这种突触加权方法。

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