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Modeling epidemics on adaptively evolving networks: A data-mining perspective

机译:在适应性发展的网络上对流行病进行建模:数据挖掘的观点

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The exploration of epidemic dynamics on dynamically evolving ("adaptive") networks poses nontrivial challenges to the modeler, such as the determination of a small number of informative statistics of the detailed network state (that is, a few "good observables") that usefully summarize the overall (macroscopic, systems-level) behavior. Obtaining reduced, small size accurate models in terms of these few statistical observables - that is, trying to coarse-grain the full network epidemic model to a small but useful macroscopic one - is even more daunting. Here we describe a data-based approach to solving the first challenge: the detection of a few informative collective observables of the detailed epidemic dynamics. This is accomplished through Diffusion Maps (DMAPS), a recently developed data-mining technique. We illustrate the approach through simulations of a simple mathematical model of epidemics on a network: a model known to exhibit complex temporal dynamics. We discuss potential extensions of the approach, as well as possible shortcomings.
机译:在动态演化(“自适应”)网络上探索流行病动态给建模者带来了不小的挑战,例如确定有用的详细网络状态的少量信息统计(即,一些“良好可观察性”)总结整体(宏观,系统级)行为。根据这少数几个统计可观的数据(即试图将整个网络流行病模型粗粒度化为一个小的但有用的宏观模型),获得精简的,小规模的准确模型甚至更加艰巨。在这里,我们描述了一种基于数据的方法来解决第一个挑战:检测详细的流行病动态的一些有益的集体观测数据。这是通过扩散地图(DMAPS)(一种最近开发的数据挖掘技术)来完成的。我们通过对网络上的流行病的简单数学模型进行仿真来说明该方法:已知具有复杂时间动态的模型。我们讨论了该方法的潜在扩展以及可能的缺点。

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