Forbidden Knowledge and Specialized Training: A Versatile Solution for the Two Main Sources of Overfitting in Linear Regression

Chris Rohlfs
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引用次数: 2

Abstract

Abstract Overfitting in linear regression is broken down into two main causes. First, the formula for the estimator includes “forbidden knowledge” about training observations’ residuals, and it loses this advantage when deployed out-of-sample. Second, the estimator has “specialized training” that makes it particularly capable of explaining movements in the predictors that are idiosyncratic to the training sample. An out-of-sample counterpart is introduced to the popular “leverage” measure of training observations’ importance. A new method is proposed to forecast out-of-sample fit at the time of deployment, when the values for the predictors are known but the true outcome variable is not. In Monte Carlo simulations and in an empirical application using MRI brain scans, the proposed estimator performs comparably to Predicted Residual Error Sum of Squares (PRESS) for the average out-of-sample case and unlike PRESS, also performs consistently across different test samples, even those that differ substantially from the training set.
禁忌知识和专门训练:线性回归中两个主要过拟合来源的通用解决方案
线性回归中的过拟合主要有两个原因。首先,估计器的公式包含关于训练观测值残差的“禁忌知识”,当部署在样本外时,它失去了这一优势。其次,估计器有“专门的训练”,这使得它特别有能力解释训练样本特有的预测器中的运动。一个样本外的对应物被引入到流行的“杠杆”度量训练观察值的重要性。提出了一种预测部署时样本外拟合的新方法,当预测变量的值已知而真实结果变量未知时。在蒙特卡罗模拟和使用MRI脑扫描的经验应用中,所提出的估计器在平均样本外情况下的表现与预测残差平方和(PRESS)相当,与PRESS不同的是,它在不同的测试样本中也表现一致,即使是那些与训练集有很大差异的样本。
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