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This paper is concerned with the Bayesian estimation parameters of the stochastic SIR (Susceptible-Infective-Removed) epidemic model from the trajectory data. Specifically, the data from the count of both infectives and susceptibles is assumed to be available on some time grid as the epidemic progresses. The diffusion approximation of the appropriate jump process is then used to estimate missing data between every pair of observation times. If the time step of imputations is small enough, we derive the posterior distributions of the infection and recovery rates using the Milstein scheme. The paper also presents Markov-chain Monte Carlo (MCMC) simulation that demonstrates that the method provides accurate estimates, as illustrated by the synthetic data from SIR epidemic model and the real data. 相似文献
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Maximum likelihood estimations for the parameters of extreme value distributions are discussed in this article using fixed point iteration. The commonly used numerical approach for addressing this problem is the Newton–Raphson approach which requires differentiation unlike the fixed point iteration which is also easier to implement. Graphical approaches are also usually proposed in the literature. We prove that these reduce in fact to the fixed point solution proposed in this article. 相似文献
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Lounis Tewfik 《统计学通讯:模拟与计算》2017,46(2):1583-1610
In the univariate framework, two problems of testing the nonlinearity are investigated in Hwang and Basawa. The first one is concerned with the testing problem for a nonlinear class contiguous to the AR(1) process. The second one is focused on the testing problem of the ARCH model contiguous to the AR(1) models. In each case, an efficient test of linearity was obtained, the local asymptotic normality (LAN) was proved, an efficient test of linearity was constructed, and the asymptotic power function was derived. All these results were obtained under the assumption where the parameter of the time series model is assumed to be known. In practical situation, this parameter is unspecified and its estimation induces an error that has an impact on the asymptotic limit distribution. A new method for the good evaluation of this error is introduced and investigated in the present article. Consequently, its application allows us to preserve the local asymptotic optimality with the estimated parameter. An extension to testing in class of ARCH models contiguous to p-order autoregressive processes is obtained. The LAN property plays a fundamental role in the present study. 相似文献
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