RIKEN Brain Science Institute, 2-1 Hirosawa, Wako, Saitama 351-0198, Japan.
Sci Rep. 2012;2:485. doi: 10.1038/srep00485. Epub 2012 Jul 2.
The connectivity of complex networks and functional implications has been attracting much interest in many physical, biological and social systems. However, the significance of the weight distributions of network links remains largely unknown except for uniformly- or Gaussian-weighted links. Here, we show analytically and numerically, that recurrent neural networks can robustly generate internal noise optimal for spike transmission between neurons with the help of a long-tailed distribution in the weights of recurrent connections. The structure of spontaneous activity in such networks involves weak-dense connections that redistribute excitatory activity over the network as noise sources to optimally enhance the responses of individual neurons to input at sparse-strong connections, thus opening multiple signal transmission pathways. Electrophysiological experiments confirm the importance of a highly broad connectivity spectrum supported by the model. Our results identify a simple network mechanism for internal noise generation by highly inhomogeneous connection strengths supporting both stability and optimal communication.
复杂网络的连通性及其功能意义在许多物理、生物和社会系统中引起了广泛关注。然而,除了均匀加权或高斯加权链路之外,网络链路权重分布的意义在很大程度上仍然未知。在这里,我们通过分析和数值模拟表明,在递归连接权重的长尾分布的帮助下,递归神经网络可以稳健地生成内部噪声,从而为神经元之间的尖峰传输提供最佳条件。此类网络中自发活动的结构涉及弱密集连接,这些连接将兴奋性活动重新分配为网络中的噪声源,以最佳地增强个体神经元对稀疏强连接输入的响应,从而开辟多条信号传输途径。电生理实验证实了该模型支持的高度宽带连接谱的重要性。我们的研究结果确定了一种通过支持稳定性和最佳通信的高度非均匀连接强度生成内部噪声的简单网络机制。