Joint Estimation of States and Parameters in Stochastic SIR Model

Peng Liu, Gustaf Hendeby, Fredrik K. Gustafsson
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引用次数: 1

Abstract

The classical SIR model is a fundamental building block in most epidemiological models. Despite its widespread use, its properties in filtering and estimation applications are much less well explored. Independently of how the basic SIR model is integrated into more complex models, the fundamental question is whether the states and parameters can be estimated from a fusion of available numeric measurements. The problem studied in this paper focuses on the parameter and state estimation of a stochastic SIR model from assumed direct measurements of the number of infected people in the population, and the generalisation to other measurements is left for future research. In terms of parameter estimation, two components are discussed separately. The first component is model parameter estimation assuming that the all states are measured directly. The second component is state estimation assuming known parameters. These two components are combined into an iterative state and parameter estimator. This iterative method is compared to a straightforward approach based on state augmentation of the unknown parameters. Feasibility of the problem is studied from an information-theoretic point of view using the Cramér Rao Lower Bound (CRLB). Using simulated data resembling the first wave of Covid-19 in Sweden, the iterative method outperforms the state augmentation approach.
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随机SIR模型中状态和参数的联合估计
经典SIR模型是大多数流行病学模型的基本组成部分。尽管它被广泛使用,但它在过滤和估计应用中的特性却很少被很好地探索。独立于如何将基本SIR模型集成到更复杂的模型中,基本问题是是否可以从可用的数值测量融合中估计状态和参数。本文研究的问题集中在一个随机SIR模型的参数和状态估计,从假定的人群中感染人数的直接测量,并推广到其他测量将留给未来的研究。在参数估计方面,分别讨论了两个组成部分。第一部分是模型参数估计,假设所有状态都是直接测量的。第二个部分是假设已知参数的状态估计。这两个部分被组合成一个迭代状态和参数估计器。将这种迭代方法与基于未知参数状态增广的直接方法进行了比较。从信息论的角度,利用cramsamr - Rao下界(CRLB)研究了问题的可行性。使用类似瑞典第一波Covid-19的模拟数据,迭代方法优于状态增强方法。
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