MODEL AVERAGING, AN ALTERNATIVE APPROACH TO MODEL SELECTION IN HIGH DIMENSIONAL DATA ESTIMATION

Main Authors: Salaki, Deiby T.; Bogor Agricultural University (IPB), Kurnia, Anang, Gusnanto, Arief, Mangku, I Wayan, Sartono, Bagus
Format: Article info application/pdf eJournal
Bahasa: eng
Terbitan: FORUM STATISTIKA DAN KOMPUTASI , 2015
Online Access: http://journal.ipb.ac.id/index.php/statistika/article/view/16777
http://journal.ipb.ac.id/index.php/statistika/article/view/16777/12225
Daftar Isi:
  • Model averaging is an alternative approach to classical model selection in model estimation. The model selection such as forward or stepwise regression, use certain criteria in choosing one best model fitted the data such as AIC and BIC. On the other hand, model averaging estimates one model whose parameters determined by weighted averaging the parameter of each approximation models. Instead of conducting inference and prediction only based one best chosen model, model averaging covering model uncertainty problem by including all possible model in determining prediction model. Some of its developments and applications also challenges will be described in this paper. Frequentist model averaging will be preferential described.Keywords : model selection, frequentist model averaging, high dimensional data