Parametric and Nonparametric Regression with Missing X’s—A Review
Authors
Abstract:
This paper gives a detailed overview of the problem of missing data in parametric and nonparametric regression. Theoretical basics, properties as well as simulation results may help the reader to get familiar with the common problem of incomplete data sets. Of course, not all occurences can be discussed so this paper could be seen as an introduction to missing data within regression analysis and as an extension to the early paper of [19.
similar resources
Bayesian Nonparametric and Parametric Inference
This paper reviews Bayesian Nonparametric methods and discusses how parametric predictive densities can be constructed using nonparametric ideas.
full textNonparametric Regression With Missing Outcomes Using Weighted Kernel Estimating Equations.
We consider nonparametric regression of a scalar outcome on a covariate when the outcome is missing at random (MAR) given the covariate and other observed auxiliary variables. We propose a class of augmented inverse probability weighted (AIPW) kernel estimating equations for nonparametric regression under MAR. We show that AIPW kernel estimators are consistent when the probability that the outc...
full textNonparametric Regression with a Parametric Spatial Autoregressive Error Structure
Spatial models have received considerable attention in the last decade. At the same time, researchers have also started to embrace the flexibility afforded from nonparametric methods. However, methods that allow for nonparametric aspects of models whose errors exhibit spatial dependence have only recently been explored. We propose a fully nonparametric estimator of the regression function allow...
full textNonparametric regression estimation with general parametric error covariance
Recently Martins-Filho and Yao (J Multivar Anal 100:309–333, 2009) have proposed a two-step estimator of nonparametric regression function with parametric error covariance and demonstrate that it is more efficient than the usual LLE. In the present paper we demonstrate that MY’s estimator can be further improved. First, we extend MY’s estimator to the multivariate case, and also establish the a...
full textMy Resources
Journal title
volume 1 issue None
pages 77- 109
publication date 2002-11
By following a journal you will be notified via email when a new issue of this journal is published.
Hosted on Doprax cloud platform doprax.com
copyright © 2015-2023