Penalized spline estimation with discrete difference penalties (P-splines) is a popular estimation method for semiparametric models, but the classical least-squares estimator is highly sensitive to deviations from its ideal model assumptions. To remedy this deficiency, a broad class of P-spline estimators based on general loss functions is introduced and studied. Robust estimators are obtained by well-chosen loss functions, such as the Huber or Tukey loss function. A preliminary scale estimator can also be included in the loss function. It is shown that this class of P-spline estimators enjoys the same optimal asymptotic properties as least-squares P-splines, thereby providing strong theoretical motivation for its use. The proposed estimators may be computed very efficiently through a simple adaptation of well-established iterative least squares algorithms and exhibit excellent performance even in finite samples, as evidenced by a numerical study and a real-data example.
翻译:带有离散差别罚款(P-splines)的刑事性样条估计是半参数模型的流行估计方法,但古典最低比例估计值对于偏离其理想模型假设的情况非常敏感。为弥补这一缺陷,引入并研究了基于一般损失功能的一大批P-spline估计值。强选估计值是通过精选的损失函数,如Huber或Tukey损失函数获得的。初步比例估计值也可以包括在损失函数中。据证明,这一类P-spline估计值具有与最低比例的P-splines相同的最佳性能,从而为其使用提供了很强的理论动力。拟议的估计值可以通过简单调整既有的迭代最小方方算法来非常高效地计算,即使在有限的样本中也表现出出色的性能,如数字研究和真实数据实例所证明的那样。