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Robust estimation of constant and time-varying parameters in nonlinear ordinary differential equation models

机译:非线性常微分方程模型中常数和时变参数的鲁棒估计

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摘要

Ordinary differential equation (ODE) models are quite popular for modelling complex dynamic processes in many scientific fields, and the parameters in these models are usually unknown, and we need to estimate them using statistical methods. When some observations are contaminated, regular estimation methods, such as nonlinear least-square estimation, will bring large bias. In this paper, robust estimations of both constant and time-varying parameters in ODE models using M-estimators are proposed, and their asymptotic properties are obtained under some mild conditions. We focus on Huber M-estimator, and also provide a method to adjust the Huber parameter automatically to the observations. The proposed method is compared to existing methods in numerical simulations and CD8+ T cell data analysis. It is demonstrated that our method gain substantial efficiency as well as robust properties.
机译:在许多科学领域中,通常使用微分方程(ODE)模型来建模复杂的动态过程,并且这些模型中的参数通常是未知的,因此我们需要使用统计方法对其进行估算。当某些观测值受到污染时,常规估计方法(例如非线性最小二乘估计)将带来较大偏差。本文提出了使用M估计量对ODE模型中的常数和时变参数进行鲁棒估计的方法,并在某些温和条件下获得了它们的渐近性质。我们专注于Huber M估计器,还提供了一种根据观察值自动调整Huber参数的方法。在数值模拟和CD8 + T细胞数据分析中,将该方法与现有方法进行了比较。证明了我们的方法获得了相当大的效率以及鲁棒的性能。

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