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Passive Dendrites Enable Single Neurons to Compute Linearly Non-separable Functions

机译:被动树突使单个神经元能够计算线性不可分的函数

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摘要

Local supra-linear summation of excitatory inputs occurring in pyramidal cell dendrites, the so-called dendritic spikes, results in independent spiking dendritic sub-units, which turn pyramidal neurons into two-layer neural networks capable of computing linearly non-separable functions, such as the exclusive OR. Other neuron classes, such as interneurons, may possess only a few independent dendritic sub-units, or only passive dendrites where input summation is purely sub-linear, and where dendritic sub-units are only saturating. To determine if such neurons can also compute linearly non-separable functions, we enumerate, for a given parameter range, the Boolean functions implementable by a binary neuron model with a linear sub-unit and either a single spiking or a saturating dendritic sub-unit. We then analytically generalize these numerical results to an arbitrary number of non-linear sub-units. First, we show that a single non-linear dendritic sub-unit, in addition to the somatic non-linearity, is sufficient to compute linearly non-separable functions. Second, we analytically prove that, with a sufficient number of saturating dendritic sub-units, a neuron can compute all functions computable with purely excitatory inputs. Third, we show that these linearly non-separable functions can be implemented with at least two strategies: one where a dendritic sub-unit is sufficient to trigger a somatic spike; another where somatic spiking requires the cooperation of multiple dendritic sub-units. We formally prove that implementing the latter architecture is possible with both types of dendritic sub-units whereas the former is only possible with spiking dendrites. Finally, we show how linearly non-separable functions can be computed by a generic two-compartment biophysical model and a realistic neuron model of the cerebellar stellate cell interneuron. Taken together our results demonstrate that passive dendrites are sufficient to enable neurons to compute linearly non-separable functions.
机译:发生在锥体细胞树突中的兴奋性输入的局部超线性求和,即所谓的树突状尖峰,导致独立的尖峰树突状亚基,将锥体神经元转变为能够计算线性不可分功能的两层神经网络,例如作为异或。其他神经元类,例如中间神经元,可能仅具有少数独立的树突状亚基,或者仅具有被动的树突状,其中输入总和纯粹是亚线性的,而树突状亚基仅饱和。为了确定此类神经元是否还可以计算线性不可分函数,我们针对给定的参数范围,枚举布尔函数,该布尔函数可由具有线性子单元和单个尖峰或饱和树突状子单元的二进制神经元模型实现。然后,我们将这些数值结果分析性地推广为任意数量的非线性子单元。首先,我们表明,除了体非线性之外,单个非线性树突状亚基足以计算线性不可分离的函数。其次,我们通过分析证明,具有足够数量的饱和树突状亚基,神经元可以计算出所有可利用纯兴奋性输入进行计算的功能。第三,我们证明了这些线性不可分离的功能至少可以通过两种策略来实现:一种是树突状亚基足以触发体细胞突增的策略;另一种是通过线性策略实现的。另一个地方,体细胞突刺需要多个树突状亚基的配合。我们正式证明,对于两种类型的树突状亚基,都可以实现后者的体系结构,而对于前者,只有尖刺的树突状结构才有可能实现。最后,我们展示了如何通过通用的两室生物物理模型和小脑星状细胞间神经元的现实神经元模型来计算线性不可分离的函数。总之,我们的结果表明,被动树突足以使神经元能够计算线性不可分的函数。

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