Jung Yoonsuh, MacEachern Steven N, Joon Kim Hang
Department of Statistics, Korea University, Seoul, South Korea.
Department of Statistics, The Ohio State University, Columbus, OH, USA.
J Appl Stat. 2020 Apr 16;48(5):866-886. doi: 10.1080/02664763.2020.1753023. eCollection 2021.
The check loss function is used to define quantile regression. In cross-validation, it is also employed as a validation function when the true distribution is unknown. However, our empirical study indicates that validation with the check loss often leads to overfitting the data. In this work, we suggest a modified or L2-adjusted check loss which rounds the sharp corner in the middle of check loss. This has the effect of guarding against overfitting to some extent. The adjustment is devised to shrink to zero as sample size grows. Through various simulation settings of linear and nonlinear regressions, the improvement due to modification of the check loss by quadratic adjustment is examined empirically.
检验损失函数用于定义分位数回归。在交叉验证中,当真实分布未知时,它也被用作验证函数。然而,我们的实证研究表明,使用检验损失进行验证往往会导致数据过度拟合。在这项工作中,我们提出了一种改进的或L2调整的检验损失,它将检验损失中间的尖角进行了圆滑处理。这在一定程度上具有防止过度拟合的效果。这种调整设计为随着样本量的增加而收缩至零。通过线性和非线性回归的各种模拟设置,对通过二次调整改进检验损失所带来的改进进行了实证检验。