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Threshold estimation based on a p-value framework in dose-response and regression settings

机译:基于剂量响应和回归设置中的p值框架的阈值估计

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摘要

We use p-values to identify the threshold level at which a regression function leaves its baseline value, a problem motivated by applications in toxicological and pharmacological dose-response studies and environmental statistics. We study the problem in two sampling settings: one where multiple responses can be obtained at a number of different covariate levels, and the other the standard regression setting involving limited number of response values at each covariate. Our procedure involves testing the hypothesis that the regression function is at its baseline at each covariate value and then computing the potentially approximate p-value of the test. An estimate of the threshold is obtained by fitting a piecewise constant function with a single jump discontinuity, known as a stump, to these observed p-values, as they behave in markedly different ways on the two sides of the threshold. The estimate is shown to be consistent and its finite sample properties are studied through simulations. Our approach is computationally simple and extends to the estimation of the baseline value of the regression function, heteroscedastic errors and to time series. It is illustrated on some real data applications.
机译:我们使用p值来确定回归函数离开其基线值的阈值水平,这是由于在毒理学和药理学剂量反应研究以及环境统计中的应用而引起的。我们在两个抽样设置中研究了这个问题:一种可以在多个不同的协变量水平上获得多个响应,另一种是在每个协变量中涉及有限数量的响应值的标准回归设置。我们的过程涉及检验假设,即每个协变量值处的回归函数均处于基线,然后计算检验的潜在近似p值。通过将具有单个跳跃间断的分段常数函数(称为树桩)拟合到这些观察到的p值,可以得到阈值的估计值,因为它们在阈值的两侧表现出明显不同的方式。估计值是一致的,并且通过仿真研究了其有限的样本属性。我们的方法在计算上很简单,并且扩展到回归函数的基线值的估计,异方差误差和时间序列。在某些实际数据应用程序上已对此进行了说明。

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  • 来源
    《Biometrika》 |2011年第4期|p.887-900|共14页
  • 作者

    A. Mallik;

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  • 正文语种 eng
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  • 入库时间 2022-08-18 01:12:06

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