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Coarse-Grained Descriptions of Dynamics for Networks with Both Intrinsic and Structural Heterogeneities

机译:具有内在和结构异质性的网络动力学的粗粒度描述

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摘要

Finding accurate reduced descriptions for large, complex, dynamically evolving networks is a crucial enabler to their simulation, analysis, and ultimately design. Here, we propose and illustrate a systematic and powerful approach to obtaining good collective coarse-grained observables—variables successfully summarizing the detailed state of such networks. Finding such variables can naturally lead to successful reduced dynamic models for the networks. The main premise enabling our approach is the assumption that the behavior of a node in the network depends (after a short initial transient) on the node identity: a set of descriptors that quantify the node properties, whether intrinsic (e.g., parameters in the node evolution equations) or structural (imparted to the node by its connectivity in the particular network structure). The approach creates a natural link with modeling and “computational enabling technology” developed in the context of Uncertainty Quantification. In our case, however, we will not focus on ensembles of different realizations of a problem, each with parameters randomly selected from a distribution. We will instead study many coupled heterogeneous units, each characterized by randomly assigned (heterogeneous) parameter value(s). One could then coin the term Heterogeneity Quantification for this approach, which we illustrate through a model dynamic network consisting of coupled oscillators with one intrinsic heterogeneity (oscillator individual frequency) and one structural heterogeneity (oscillator degree in the undirected network). The computational implementation of the approach, its shortcomings and possible extensions are also discussed.
机译:为大型,复杂,动态发展的网络找到准确的简化描述对于它们的仿真,分析和最终设计至关重要。在这里,我们提出并举例说明一种系统有效的方法,以获得良好的集体粗粒度可观测值-成功总结了此类网络的详细状态的变量。找到这样的变量自然可以成功地减少网络的动态模型。支持我们方法的主要前提是假设网络中节点的行为(在短暂的初始瞬变之后)取决于节点身份:一组描述符,这些描述符量化节点的属性,无论其是固有的(例如,节点中的参数)演化方程)或结构(由节点在特定网络结构中的连通性所赋予)。该方法与在不确定性量化的背景下开发的建模和“计算支持技术”建立了自然的联系。但是,在我们的案例中,我们将不关注问题的不同实现的集合,每个集合都具有从分布中随机选择的参数。相反,我们将研究许多耦合的异构单元,每个单元都有随机分配的(异构)参数值。然后,可以为该方法创造一个术语“异质性量化”,我们通过一个模型动态网络进行说明,该模型由具有一个固有异质性(振荡器单个频率)和一个结构异质性(无向网络中的振荡器度)的耦合振荡器组成。还讨论了该方法的计算实现,其缺点和可能的扩展。

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