Applied Mathematics

Volume 7, Issue 10 (June 2016)

ISSN Print: 2152-7385   ISSN Online: 2152-7393

Google-based Impact Factor: 0.58  Citations  

Effects of Bayesian Model Selection on Frequentist Performances: An Alternative Approach

HTML  XML Download Download as PDF (Size: 1024KB)  PP. 1103-1115  
DOI: 10.4236/am.2016.710098    1,880 Downloads   3,004 Views  Citations

ABSTRACT

It is quite common in statistical modeling to select a model and make inference as if the model had been known in advance; i.e. ignoring model selection uncertainty. The resulted estimator is called post-model selection estimator (PMSE) whose properties are hard to derive. Conditioning on data at hand (as it is usually the case), Bayesian model selection is free of this phenomenon. This paper is concerned with the properties of Bayesian estimator obtained after model selection when the frequentist (long run) performances of the resulted Bayesian estimator are of interest. The proposed method, using Bayesian decision theory, is based on the well known Bayesian model averaging (BMA)’s machinery; and outperforms PMSE and BMA. It is shown that if the unconditional model selection probability is equal to model prior, then the proposed approach reduces BMA. The method is illustrated using Bernoulli trials.

Share and Cite:

Nguefack-Tsague, G. and Zucchini, W. (2016) Effects of Bayesian Model Selection on Frequentist Performances: An Alternative Approach. Applied Mathematics, 7, 1103-1115. doi: 10.4236/am.2016.710098.

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.