Parametric and Nonparametric Regression with Missing X’s—A Review

Authors

  • Christian Heumann
  • Helge Toutenburg
  • Sandro Scheid
  • Thomas Nittner
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.

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Journal title

volume 1  issue None

pages  77- 109

publication date 2002-11

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