论文标题
减少模块化和异构有向网络上动力学的尺寸
Dimension reduction of dynamics on modular and heterogeneous directed networks
论文作者
论文摘要
降低尺寸是研究由大量变量组成的非线性动力系统的常见策略。目的是找到一个较小的系统版本,该系统的时间演变更容易预测,同时保留原始系统的一些关键动力学特征。但是,为复杂系统找到这样的减少表示是一项艰巨的任务。我们解决了加权定向网络动态的问题,并特别强调了模块化和异构网络。我们提出了一种两步减少维度的方法,该方法考虑了邻接矩阵的属性。首先,将单元分为相似的连接曲线组。每个组都与可观察到的是该组中节点活动的加权平均值相关联。其次,我们得出了一组条件,这些条件必须满足这些可观察到的条件,才能正确地表示原始系统的行为,以及用于大致求解它们的方法。结果是一个降低的邻接矩阵和观察力演化的ODES近似系统。我们表明,减少的系统可用于预测不同类型的连接结构的完整动力学特征,包括合成和来自真实数据(包括神经元,生态和社交网络)的特征。我们的形式主义为系统比较各种结构属性对整个网络动态的影响开辟了一种方法。因此,它可以帮助确定指导网络动态过程演变的主要结构驱动力。
Dimension reduction is a common strategy to study non-linear dynamical systems composed by a large number of variables. The goal is to find a smaller version of the system whose time evolution is easier to predict while preserving some of the key dynamical features of the original system. Finding such a reduced representation for complex systems is, however, a difficult task. We address this problem for dynamics on weighted directed networks, with special emphasis on modular and heterogeneous networks. We propose a two-step dimension-reduction method that takes into account the properties of the adjacency matrix. First, units are partitioned into groups of similar connectivity profiles. Each group is associated to an observable that is a weighted average of the nodes' activities within the group. Second, we derive a set of conditions that must be fulfilled for these observables to properly represent the original system's behavior, together with a method for approximately solving them. The result is a reduced adjacency matrix and an approximate system of ODEs for the observables' evolution. We show that the reduced system can be used to predict some characteristic features of the complete dynamics for different types of connectivity structures, both synthetic and derived from real data, including neuronal, ecological, and social networks. Our formalism opens a way to a systematic comparison of the effect of various structural properties on the overall network dynamics. It can thus help to identify the main structural driving forces guiding the evolution of dynamical processes on networks.