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首页> 外文期刊>Journal of the royal statistical society >Variable and threshold selection to control predictive accuracy in logistic regression
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Variable and threshold selection to control predictive accuracy in logistic regression

机译:变量和阈值选择以控制逻辑回归中的预测准确性

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Using data collected from the 'Sequenced treatment alternatives to relieve depression' study, we use logistic regression to predict whether a patient will respond to treatment on the basis of early symptom change and patient characteristics. Model selection criteria such as the Akaike information criterion AIC and mean-squared-error of prediction MSEP may not be appropriate if the aim is to predict with a high degree of certainty who will respond or not respond to treatment. Towards this aim, we generalize the definition of the positive and negative predictive value curves to the case of multiple predictors. We point out that it is the ordering rather than the precise values of the response probabilities which is important, and we arrive at a unified approach to model selection via two-sample rank tests. To avoid overfitting, we define a cross-validated version of the positive and negative predictive value curves and compare these curves after smoothing for various models. When applied to the study data, we obtain a ranking of models that differs from those based on AIC and MSEP, as well as a tree-based method and regularized logistic regression using a lasso penalty. Our selected model performs consistently well for both 4-week-ahead and 7-week-ahead predictions.
机译:使用从“缓解抑郁的有序治疗替代方案”研究中收集的数据,我们使用逻辑回归来预测患者是否会根据早期症状变化和患者特征对治疗做出反应。如果目标是高度确定地预测谁将对治疗做出反应,则模型选择标准(例如Akaike信息标准AIC和预测MSEP的均方误差)可能不合适。为此,我们将正预测值和负预测值曲线的定义推广到多个预测变量的情况。我们指出,重要的是响应概率的排序而不是精确值,并且我们通过两个样本的秩检验得出了一种统一的模型选择方法。为避免过度拟合,我们定义了正预测值曲线和负预测值曲线的交叉验证版本,并在平滑各种模型后比较了这些曲线。当应用于研究数据时,我们获得的模型排名不同于基于AIC和MSEP的模型,以及基于树的方法和使用套索罚分的正则logistic回归。我们选择的模型对于提前4周和提前7周的预测始终表现良好。

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