Nonparametric Regressin with Correlated Errors 论文
2001Statistical Science引用 276
Statistical Methods and InferenceImage and Signal Denoising MethodsControl Systems and Identification
摘要
Nonparametric regression techniques are often sensitive to the presence of correlation in the errors. The practical consequences of this sensitivity are explained, including the breakdown of several popular data-driven smoothing parameter selection methods. We review the existing literature in kernel regression, smoothing splines and wavelet regression under correlation, both for short-range and long-range dependence. Extensions to random design, higher dimensional models and adaptive estimation are discussed.