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Locally Weighted Score Estimation for Quantile Classification in Binary Regression Models

机译:二元回归模型中分位数分类的局部加权得分估计

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One common use of binary response regression methods is classification based on an arbitrary probability threshold dictated by the particular application. Since this is given to us a priori, it is sensible to incorporate the threshold into our estimation procedure. Specifically, for the linear logistic model, we solve a set of locally weighted score equations, using a kernel-like weight function centered at the threshold. The bandwidth for the weight function is selected by cross validation of a novel hybrid loss function that combines classification error and a continuous measure of divergence between observed and fitted values; other possible cross-validation functions based on more common binary classification metrics are also examined. This workhas much in common with robust estimation, but differs from previous approaches in this area in its focus on prediction, specifically classification into high- and low-risk groups. Simulation results are given showing the reduction in error rates that can be obtained with this method when compared with maximum likelihood estimation, especially under certain forms of model misspecification. Analysis of a melanoma dataset is presented to illustrate the use of the method in practice.
机译:二进制响应回归方法的一种常见用途是基于特定应用程序指定的任意概率阈值进行分类。由于这是先验给我们的,因此将阈值合并到我们的估计程序中是明智的。具体来说,对于线性逻辑模型,我们使用以阈值为中心的类核加权函数来求解一组局部加权的分数方程。权重函数的带宽是通过交叉验证新的混合损耗函数来选择的,该函数结合了分类误差以及对观测值与拟合值之间的差异进行连续测量。还研究了基于更常见的二进制分类指标的其他可能的交叉验证功能。这项工作与鲁棒估计有很多共通之处,但是与该领域以前的方法不同,它专注于预测,特别是将其分为高风险和低风险组。仿真结果显示,与最大似然估计相比,使用此方法可获得的错误率降低,尤其是在某些形式的模型错误指定下。介绍了黑色素瘤数据集的分析,以说明该方法在实践中的使用。

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