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Positive False Discovery Rate Estimate in Step-Wise Variable Selection

机译:逐步变量选择中的正错误发现率估计

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摘要

Selecting predictors to optimize the outcome prediction is an important statistical method. However, it usually ignores the false positives in the selected predictors. In this article, we advocate a conventional stepwise forward variable selection method based on the predicted residual sum of squares, and develop a positive false discovery rate (pFDR) estimate for the selected predictor subset, and a local pFDR estimate to prioritize the selected predictors. This pFDR estimate takes account of the existence of non null predictors, and is proved to be asymptotically conservative. In addition, we propose two views of a variable selection process: an overall and an individual test. An interesting feature of the overall test is that its power of selecting non null predictors increases with the proportion of non null predictors among all candidate predictors. Data analysis is illustrated with an example, in which genetic and clinical predictors were selected to predict the cholesterol level change after four months of tamoxifen treatment, and pFDR was estimated. Our method's performance is evaluated through statistical simulations.
机译:选择预测变量以优化结果预测是一种重要的统计方法。但是,它通常会忽略所选预测变量中的误报。在本文中,我们提倡基于预测的残差平方和的常规逐步前向变量选择方法,并为选定的预测变量子集开发正错误发现率(pFDR)估计,并为局部优先选择预测因子建立局部pFDR估计。该pFDR估计考虑了非null预测变量的存在,并且被证明是渐近保守的。此外,我们提出了变量选择过程的两种观点:整体测试和个体测试。整体测试的一个有趣特征是,选择非无效预测变量的能力会随着所有候选预测变量中非无效预测变量的比例的增加而增加。举例说明了数据分析,其中选择了遗传和临床预测因子来预测他莫昔芬治疗四个月后的胆固醇水平变化,并评估了pFDR。我们的方法的性能通过统计模拟进行评估。

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