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A pool-adjacent-violators-algorithm approach to detect infinite parameter estimates in one-regressor dose-response models with asymptotes

机译:一种在无渐近体的单回归剂量反应模型中检测无限参数估计的池相邻违反者算法

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摘要

Binary response models are often applied in dose-response settings where the number of dose levels is limited. Commonly, one can find cases where the maximum likelihood estimation process for these models produces infinite values for at least one of the parameters, often corresponding to the 'separated data' issue. Algorithms for detecting such data have been proposed, but are usually incorporated directly into in the parameter estimation. Additionally, they do not consider the use of asymptotes in the model formulation. In order to study this phenomenon in greater detail, we define the class of specifiably degenerate functions where this can occur (including the popular logistic and Weibull models) that allows for asymptotes in the dose-response specification. We demonstrate for this class that the well-known pool-adjacent-violators algorithm can efficiently pre-screen for non-estimable data. A simulation study demonstrates the frequency with which this problem can occur for various response models and conditions.
机译:二元反应模型通常用于剂量水平受限制的剂量反应环境中。通常,人们会发现以下情况:这些模型的最大似然估计过程会为至少一个参数产生无穷大的值,通常对应于“分离数据”问题。已经提出了用于检测这种数据的算法,但是通常将其直接并入参数估计中。此外,他们不考虑在模型公式中使用渐近线。为了更详细地研究这种现象,我们定义了可能发生这种现象的一类简并函数(包括流行的logistic和Weibull模型),这些函数允许剂量反应规范中出现渐近线。对于此类,我们证明了众所周知的pool-adjacent-violators算法可以有效地预筛选不可估计的数据。仿真研究表明,在各种响应模型和条件下,此问题的发生频率。

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