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Modeling dynamic patterns from COVID-19 data using randomized dynamic mode decomposition in predictive mode and ARIMA

机译:在预测模式和Arima中使用随机动态模式分解从Covid-19数据建模动态模式

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The aim of this paper is to gain a deeper understanding of the new Corona virus (Covid-19) dynamics directly from the raw data reported by World Health Organization. We provide a high fidelity mathematical model, fast and computationally inexpensive for modeling the evolution of the pandemic worldwide and we develop an effcient tool for medium term prediction of pandemic dynamics, including infection spreading. We illustrate the excellent behavior of the non-intrusive reduced order model by performing a qualitative analysis.
机译:本文的目的是直接从世界卫生组织报告的原始数据中更深入地了解新的电晕病毒(Covid-19)动态。 我们提供高保真的数学模型,快速和计算地廉价,用于建模大流行全世界的演变,我们开发了一种用于大流行动态的中期预测的效用工具,包括感染扩散。 我们通过执行定性分析来说明非侵入性降低阶模型的优异行为。

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