Neural Network Dynamics and Computation, Institute for Genetics, University of Bonn, 53115 Bonn, Germany.
Phys Rev E. 2019 Oct;100(4-1):042404. doi: 10.1103/PhysRevE.100.042404.
Networks in the brain consist of different types of neurons. Here we investigate the influence of neuron diversity on the dynamics, phase space structure, and computational capabilities of spiking neural networks. We find that already a single neuron of a different type can qualitatively change the network dynamics and that mixed networks may combine the computational capabilities of ones with a single-neuron type. We study inhibitory networks of concave leaky (LIF) and convex "antileaky" (XIF) integrate-and-fire neurons that generalize irregularly spiking nonchaotic LIF neuron networks. Endowed with simple conductance-based synapses for XIF neurons, our networks can generate a balanced state of irregular asynchronous spiking as well. We determine the voltage probability distributions and self-consistent firing rates assuming Poisson input with finite-size spike impacts. Further, we compute the full spectrum of Lyapunov exponents (LEs) and the covariant Lyapunov vectors (CLVs) specifying the corresponding perturbation directions. We find that there is approximately one positive LE for each XIF neuron. This indicates in particular that a single XIF neuron renders the network dynamics chaotic. A simple mean-field approach, which can be justified by properties of the CLVs, explains the finding. As an application, we propose a spike-based computing scheme where our networks serve as computational reservoirs and their different stability properties yield different computational capabilities.
大脑中的网络由不同类型的神经元组成。在这里,我们研究了神经元多样性对尖峰神经网络的动力学、相空间结构和计算能力的影响。我们发现,即使是单个不同类型的神经元也可以定性地改变网络的动力学,而混合网络可能会结合具有单一神经元类型的网络的计算能力。我们研究了凹形漏电(LIF)和凸形“抗漏电”(XIF)积分点火神经元的抑制性网络,这些神经元概括了不规则尖峰混沌 LIF 神经元网络。我们的网络为 XIF 神经元配备了基于电导的简单突触,因此也可以产生不规则异步尖峰的平衡状态。我们假设具有有限大小尖峰影响的泊松输入来确定电压概率分布和自洽发射率。此外,我们计算了 Lyapunov 指数(LE)的全谱和协方差 Lyapunov 向量(CLV),指定了相应的扰动方向。我们发现,每个 XIF 神经元大约有一个正 LE。这特别表明,单个 XIF 神经元使网络动力学混沌。一种简单的平均场方法可以用 CLV 的性质来解释这一发现。作为一种应用,我们提出了一种基于尖峰的计算方案,其中我们的网络作为计算储层,其不同的稳定性特性产生不同的计算能力。