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Coupling the SAEM algorithm and the extended Kalman filter for maximum likelihood estimation in mixed-effects diffusion models

机译:结合SAEM算法和扩展卡尔曼滤波器在混合效应扩散模型中进行最大似然估计

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We consider some general mixed-effects diffusion models, in which the observations are made at discrete time points and include measurement errors. In these models, the observed likelihood is generally not explicit, making maximum likelihood estimation of the parameters particularly complex. We propose a specific inference methodology for these models. In particular, we combine the SAEM algorithm with the extended Kalman filter to estimate the population parameters. We also provide some tools for estimating the individual parameters, for recovering the individual underlying diffusion trajectories and for evaluating the model. The methods are evaluated on simulations and applied to a pharmacokinetics example.
机译:我们考虑一些通用的混合效应扩散模型,其中观察是在离散时间点进行的,其中包括测量误差。在这些模型中,观察到的似然性通常不是明确的,这使得参数的最大似然性估计特别复杂。我们为这些模型提出了一种特定的推理方法。特别是,我们将SAEM算法与扩展的Kalman滤波器相结合,以估计总体参数。我们还提供了一些工具,用于估计各个参数,恢复各个基本的扩散轨迹以及评估模型。该方法在模拟中进行评估,并应用于药代动力学实例。

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