数据驱动的时变自回归模型下的风险估计

IF 3.6 2区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Barbara Pascal , Samuel Vaiter
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引用次数: 0

摘要

COVID-19大流行使流行病学模型脱颖而出,这些模型虽然描述了丰富的行为,但以前在信号处理文献中很少受到关注。在这项工作中,一个广义的时变自回归模型被考虑,包括,但不减少到,一个最先进的病毒流行传播模型。该模型的时变参数是通过最小化惩罚似然估计来估计的。一个主要的挑战是估计精度强烈依赖于超参数微调。如果没有可用的基础真理,则通过最小化专门设计的数据驱动的预言来选择超参数,用作估计误差的代理。针对时变自回归泊松模型,将Stein的无偏风险估计形式推广到构造渐近无偏风险估计,其基础是推导Stein引理的原始自回归对应项。这些预言和由此产生的估计的准确性是通过对合成数据进行密集的蒙特卡罗模拟来评估的。然后,详细阐述了最近的流行病学模型,提出了一种新的每周缩放泊松模型,更好地说明了污染的内在可变性,同时对报告错误具有鲁棒性。最后,数据驱动程序专门用于根据每周感染计数估计COVID-19的繁殖数,展示了其解决实际应用的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Risk estimate under a time-varying autoregressive model for data-driven reproduction number estimation
COVID-19 pandemic has brought to the fore epidemiological models which, though describing a wealth of behaviors, have previously received little attention in signal processing literature. In this work, a generalized time-varying autoregressive model is considered, encompassing, but not reducing to, a state-of-the-art model of viral epidemics propagation. The time-varying parameter of this model is estimated via the minimization of a penalized likelihood estimator. A major challenge is that the estimation accuracy strongly depends on hyperparameters fine-tuning. Without available ground truth, hyperparameters are selected by minimizing specifically designed data-driven oracles, used as proxy for the estimation error. Focusing on the time-varying autoregressive Poisson model, Stein’s Unbiased Risk Estimate formalism is generalized to construct asymptotically unbiased risk estimators based on the derivation of an original autoregressive counterpart of Stein’s lemma. The accuracy of these oracles and of the resulting estimates are assessed through intensive Monte Carlo simulations on synthetic data. Then, elaborating on recent epidemiological models, a novel weekly scaled Poisson model is proposed, better accounting for intrinsic variability of the contaminations while being robust to reporting errors. Finally, the data-driven procedure is particularized to the estimation of COVID-19 reproduction number from weekly infection counts demonstrating its ability to tackle real-world applications.
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来源期刊
Signal Processing
Signal Processing 工程技术-工程:电子与电气
CiteScore
9.20
自引率
9.10%
发文量
309
审稿时长
41 days
期刊介绍: Signal Processing incorporates all aspects of the theory and practice of signal processing. It features original research work, tutorial and review articles, and accounts of practical developments. It is intended for a rapid dissemination of knowledge and experience to engineers and scientists working in the research, development or practical application of signal processing. Subject areas covered by the journal include: Signal Theory; Stochastic Processes; Detection and Estimation; Spectral Analysis; Filtering; Signal Processing Systems; Software Developments; Image Processing; Pattern Recognition; Optical Signal Processing; Digital Signal Processing; Multi-dimensional Signal Processing; Communication Signal Processing; Biomedical Signal Processing; Geophysical and Astrophysical Signal Processing; Earth Resources Signal Processing; Acoustic and Vibration Signal Processing; Data Processing; Remote Sensing; Signal Processing Technology; Radar Signal Processing; Sonar Signal Processing; Industrial Applications; New Applications.
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