Title of article
Using Local Correlation in Kernel-Based Smoothers for Dependent Data
Author/Authors
D.R.، Peterson نويسنده , , H.، Zhao نويسنده , , S.، Eapen نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2003
Pages
-983
From page
984
To page
0
Abstract
We consider the general problem of smoothing correlated data to estimate the nonparametric mean function when a random, but bounded, number of measurements is available for each independent subject. We propose a simple extension to the local polynomial regression smoother that retains the asymptotic properties of the working independence estimator, while typically reducing both the conditional bias and variance for practical sample sizes, as demonstrated by exact calculations for some particular models. We illustrate our method by smoothing longitudinal functional decline data for 100 patients with Huntingtonʹs disease. The class of local polynomial kernel-based estimating equations previously considered in the literature is shown to use the global correlation structure in an apparently detrimental way, which explains why some previous attempts to incorporate correlation were found to be asymptotically inferior to the working independence estimator.
Keywords
Correlated data , Kernel regression , Longitudinal data , Nonparametric regression , Local polynomial , Smoothing
Journal title
BIOMETRICS (BIOMETRIC SOCIETY)
Serial Year
2003
Journal title
BIOMETRICS (BIOMETRIC SOCIETY)
Record number
84208
Link To Document