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Biologically plausible neural computation

机译:生物合理的神经计算

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The function of a neuron can be described simultaneously at several levels of abstraction. Fbr instance, a spike train represents the result of a computation done by a single neuron with its inputs, but it also represents the result of a complex function realized by the network in which the neuron is embedded. When models of large parts of the brain are considered, it may be desirable to use computational modules operating at a very abstract level. However, it is shown here that abstract neural functions depend on detailed features of the single neuron model used in the network reproducing the abstract function. Examples are given of the multiplicative function, motion detection, short-term memory and timing. All these operations rely on one or another feature of the extended Leaky Integrate-and-Fire neuron used in this paper, e.g. probabilistic synapses, post-synaptic currents modelled with alpha functions or partial reset of the somatic membrane. Consequently it is suggested that neural modelling at an abstract level does not obviate the need for a clear statement on the nature of the underlying model of biological neuron. In that sense, not many abstract functions are convincingly grounded, not even the standard formal neurons used in most artificial neural networks.
机译:神经元的功能可以在几个抽象级别上同时描述。例如,尖峰序列表示由单个神经元及其输入完成的计算结果,但也表示嵌入神经元的网络所实现的复杂功能的结果。当考虑到大脑大部分的模型时,可能希望使用在非常抽象的水平上运行的计算模块。但是,此处显示的是抽象神经功能取决于网络中用于复制抽象功能的单个神经元模型的详细功能。给出了乘法功能,运动检测,短期记忆和定时的示例。所有这些操作都依赖于本文使用的扩展的Leaky Integrate-and-fire神经元的一个或另一个功能,例如概率突触,突触后电流用alpha函数建模或体膜部分复位。因此,建议在抽象级别进行神经建模不会消除对生物神经元基础模型的性质进行清晰陈述的需要。从这个意义上讲,没有多少说服力的抽象功能令人信服地扎根,甚至没有在大多数人工神经网络中使用的标准形式神经元。

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