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首页> 外文期刊>NII Technical Report >Cluster Gauss-Newton method for finding multiple approximate minimisers of nonlinear least squares problems with applications to parameter estimation of pharmacokinetic models
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Cluster Gauss-Newton method for finding multiple approximate minimisers of nonlinear least squares problems with applications to parameter estimation of pharmacokinetic models

机译:集群高斯 - 牛顿方法,用于查找多种近似值的非线性最小二乘问题的应用与药代动力学模型的参数估计

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Parameter estimation problems of mathematical models can often be formulated as nonlinear least squares problems. Typically these problems are solved numerically using iterative methods. The local minimiser obtained using these iterative methods usually depends on the choice of the initial iterate. Thus, the estimated parameter and subsequent analyses using it depend on the choice of the initial iterate. One way to reduce the analysis bias due to the choice of the initial iterate is to repeat the algorithm from multiple initial iterates (i.e. use a multi-start method). However, the procedure can be computationally intensive and is not always used in practice. To overcome this problem, we pro-pose the Cluster Gauss-Newton (CGN) method, an e cient algorithm for nding multiple approximate minimisers of nonlinear-least squares problems. CGN simultaneously solves the nonlinear least squares problem from multiple initial iterates. Then, CGN iteratively improves the solutions from these initial iterates similarly to the Gauss-Newton method. However, it uses a global linear approximation instead of the Jacobian. The global linear approximations are computed collectively among all the iterates to minimise the computational cost. We use physiologically based pharmacokinetic (PBPK) models used in pharmaceutical drug development to demonstrate its use and show that CGN is computationally more e cient and more robust against local minima compared to the standard Levenberg-Marquardt method, as well as state-of-the art multi-start and derivative-free methods.
机译:数学模型的参数估计问题通常可以将其标准为非线性最小二乘问题。通常,这些问题在数值上使用迭代方法解决。使用这些迭代方法获得的局部最小机构通常取决于初始迭代的选择。因此,使用它估计的参数和随后的分析取决于初始迭代的选择。减少由于初始迭代的选择引起的分析偏差的一种方法是从多个初始迭代重复算法(即使用多启动方法)。但是,该过程可以是计算密集的,并且并不总是在实践中使用。为了克服这个问题,我们可以提高群集高斯 - 牛顿(CGN)方法,这是一种关于非线性最小二乘问题的多个近似最小体的e CIET算法。 CGN同时解决了来自多个初始迭代的非线性最小二乘问题。然后,CGN迭代地改善了这些初始迭代的解决方案与Gauss-Newton方法类似。但是,它使用全局线性近似而不是雅可碧眼的近似。全局线性近似在所有迭代中都集体计算,以最小化计算成本。我们使用用于药物开发的生理基础的药代动力学(PBPK)模型来证明其使用,并表明CGN与标准Levenberg-Marquardt方法相比,CGN与局部最小值相比,局部最小值更加稳健,以及状态艺术多启动和衍生方法。

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