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Robust ridge regression estimators for nonlinear models with applications to high throughput screening assay data

机译:非线性模型的鲁棒岭回归估计器,应用于高通量筛选测定数据

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Nonlinear regression is often used to evaluate the toxicity of a chemical or a drug by fitting data from a dose-response study. Toxicologists and pharmacologists may draw a conclusion about whether a chemical is toxic by testing the significance of the estimated parameters. However, sometimes the null hypothesis cannot be rejected even though the fit is quite good. One possible reason for such cases is that the estimated standard errors of the parameter estimates are extremely large. In this paper, we propose robust ridge regression estimation procedures for nonlinear models to solve this problem. The asymptotic properties of the proposed estimators are investigated; in particular, their mean squared errors are derived. The performances of the proposed estimators are compared with several standard estimators using simulation studies. The proposed methodology is also illustrated using high throughput screening assay data obtained from the National Toxicology Program. Copyright (c) 2014 John Wiley & Sons, Ltd.
机译:非线性回归通常用于通过拟合剂量反应研究中的数据来评估化学药品或药物的毒性。毒理学家和药理学家可以通过测试估计参数的显着性来得出有关化学药品是否有毒的结论。但是,有时即使拟合很好,也不能拒绝原假设。这种情况的一个可能原因是参数估计值的估计标准误差非常大。在本文中,我们为非线性模型提出了鲁棒的岭回归估计程序来解决这个问题。研究了所提出估计量的渐近性质;特别地,推导它们的均方误差。使用仿真算例,将拟议的估算器的性能与几种标准的估算器进行比较。还使用从国家毒理学计划获得的高通量筛选测定数据对拟议的方法进行了说明。版权所有(c)2014 John Wiley&Sons,Ltd.

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