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Shrinkage for categorical regressors

机译:分类回归的收缩

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This paper introduces a flexible regularization approach that reduces point estimation risk of group means stemming from e.g. categorical regressors, (quasi-)experimental data or panel data models. The loss function is penalized by adding weighted squared l(2)-norm differences between group location parameters and informative first stage estimates. Under quadratic loss, the penalized estimation problem has a simple interpretable closed-form solution that nests methods established in the literature on ridge regression, discretized support smoothing kernels and model averaging methods. We derive risk-optimal penalty parameters and propose a plug-in approach for estimation. The large sample properties are analyzed in an asymptotic local to zero framework by introducing a class of sequences for close and distant systems of locations that is sufficient for describing a large range of data generating processes. We provide the asymptotic distributions of the shrinkage estimators under different penalization schemes. The proposed plug-in estimator uniformly dominates the ordinary least squares estimator in terms of asymptotic risk if the number of groups is larger than three. Monte Carlo simulations reveal robust improvements over standard methods in finite samples. Real data examples of estimating time trends in a panel and a difference-in-differences study illustrate potential applications. (C) 2020 Elsevier B.V. All rights reserved.
机译:本文介绍了一种灵活的正则化方法,该方法可以降低来自分类回归(准)实验数据或面板数据模型的组均值的点估计风险。损失函数通过在组位置参数和信息性第一阶段估计之间添加加权平方l(2)-范数差来惩罚。在二次损失下,惩罚估计问题有一个简单的可解释的闭式解,它嵌套了文献中关于岭回归、离散支持平滑核和模型平均方法的方法。我们推导了风险最优惩罚参数,并提出了一种插件估计方法。通过引入一类足以描述大范围数据生成过程的近距离和远距离位置系统序列,在渐近局部到零的框架中分析了大样本特性。我们给出了不同惩罚方案下收缩估计量的渐近分布。当组数大于3时,所提出的插件估计在渐近风险方面一致地优于普通最小二乘估计。蒙特卡罗模拟显示,在有限样本中,与标准方法相比,该方法有了稳健的改进。在小组中估计时间趋势和差异研究的实际数据示例说明了潜在的应用。(C) 2020爱思唯尔B.V.版权所有。

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