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Parametric Inference For Mixed Models Defined By Stochastic Differential Equations

机译:随机微分方程定义的混合模型的参数推论

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摘要

Non-linear mixed models defined by stochastic differential equations (SDEs) are considered: the parameters of the diffusion process are random variables and vary among the individuals. A maximum likelihood estimation method based on the Stochastic Approximation EM algorithm, is proposed. This estimation method uses the Euler-Maruyama approximation of the diffusion, achieved using latent auxiliary data introduced to complete the diffusion process between each pair of measurement instants. A tuned hybrid Gibbs algorithm based on conditional Brownian bridges simulations of the unobserved process paths is included in this algorithm. The convergence is proved and the error induced on the likelihood by the Euler-Maruyama approximation is bounded as a function of the step size of the approximation. Results of a pharmacokinetic simulation study illustrate the accuracy of this estimation method. The analysis of the Theophyllin real dataset illustrates the relevance of the SDE approach relative to the deterministic approach.
机译:考虑了由随机微分方程(SDE)定义的非线性混合模型:扩散过程的参数是随机变量,并且在个体之间有所不同。提出了一种基于随机近似EM算法的最大似然估计方法。这种估算方法使用了扩散的Euler-Maruyama近似值,该近似值是使用引入的潜在辅助数据完成的,以完成每对测量瞬间之间的扩散过程。该算法包括基于未观察到的过程路径的条件布朗桥模拟的调谐混合Gibbs算法。证明了收敛性,并且由Euler-Maruyama近似在似然上引起的误差被限制为近似步长的函数。药代动力学模拟研究的结果说明了这种估算方法的准确性。对茶碱实际数据集的分析说明了SDE方法相对于确定性方法的相关性。

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