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首页> 外文期刊>Mathematical Biosciences: An International Journal >The structural identifiability of the susceptible infected recovered model with seasonal forcing
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The structural identifiability of the susceptible infected recovered model with seasonal forcing

机译:具有季节性强迫的易感感染恢复模型的结构可识别性

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摘要

In this paper, it is shown that the SIR epidemic model, with the force of infection subject to seasonal variation, and a proportion of either the prevalence or the incidence measured, is unidentifiable unless certain key system parameters are known, or measurable. This means that an uncountable number of different parameter vectors can, theoretically, give rise to the same idealised output data. Any subsequent parameter estimation from real data must be viewed with little confidence as a result. The approach adopted for the structural identifiability analysis utilises the existence of an infinitely differentiable transformation that connects the state trajectories corresponding to parameter vectors that give rise to identical output data. When this approach proves computationally intractable, it is possible to use the converse idea that the existence of a coordinate transformation between states for particular parameter vectors implies indistinguishability between these vectors from the corresponding model outputs. (c) 2005 Elsevier Inc. All rights reserved.
机译:本文表明,SIR流行病模型无法确定感染力随季节变化而变化的流行率或发生率的比例,除非某些关键系统参数已知或可测量。这意味着从理论上说,无数个不同的参数向量可以产生相同的理想输出数据。结果,从真实数据中进行的任何后续参数估计都必须以很小的信心来查看。结构可识别性分析所采用的方法利用了无限微分变换的存在,该变换将对应于参数矢量的状态轨迹连接起来,从而产生相同的输出数据。当此方法在计算上证明是难处理的时,可以使用相反的想法,即特定参数向量在状态之间存在坐标变换意味着这些向量与相应的模型输出无法区分。 (c)2005 Elsevier Inc.保留所有权利。

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