Bernstein Center Freiburg, University of Freiburg Freiburg, Germany.
Front Comput Neurosci. 2011 Dec 23;5:59. doi: 10.3389/fncom.2011.00059. eCollection 2011.
Dynamic neuronal networks are a key paradigm of increasing importance in brain research, concerned with the functional analysis of biological neuronal networks and, at the same time, with the synthesis of artificial brain-like systems. In this context, neuronal network models serve as mathematical tools to understand the function of brains, but they might as well develop into future tools for enhancing certain functions of our nervous system. Here, we present and discuss our recent achievements in developing multiplicative point processes into a viable mathematical framework for spiking network modeling. The perspective is that the dynamic behavior of these neuronal networks is faithfully reflected by a set of non-linear rate equations, describing all interactions on the population level. These equations are similar in structure to Lotka-Volterra equations, well known by their use in modeling predator-prey relations in population biology, but abundant applications to economic theory have also been described. We present a number of biologically relevant examples for spiking network function, which can be studied with the help of the aforementioned correspondence between spike trains and specific systems of non-linear coupled ordinary differential equations. We claim that, enabled by the use of multiplicative point processes, we can make essential contributions to a more thorough understanding of the dynamical properties of interacting neuronal populations.
动态神经元网络是大脑研究中日益重要的一个关键范例,它涉及到对生物神经元网络的功能分析,同时也涉及到人工类脑系统的综合。在这种背景下,神经元网络模型作为理解大脑功能的数学工具,但也可能发展成为增强我们神经系统某些功能的未来工具。在这里,我们介绍并讨论了我们最近在将乘法点过程发展为一个可行的尖峰网络建模数学框架方面的成果。从这个角度来看,这些神经元网络的动态行为通过一组非线性率方程得到忠实反映,这些方程描述了群体水平上的所有相互作用。这些方程在结构上与众所周知的Lotka-Volterra 方程相似,它们在种群生物学中用于模拟捕食者-猎物关系,但也有大量关于经济理论的应用。我们提出了一些与尖峰网络功能相关的生物学实例,可以借助于尖峰序列和特定的非线性耦合常微分方程组系统之间的上述对应关系来研究这些实例。我们声称,通过使用乘法点过程,我们可以为更深入地理解相互作用的神经元群体的动力学特性做出重要贡献。