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Acceleration of the stochastic search variable selection via componentwise Gibbs sampling.

Authors :
Huang, Hengzhen
Zhou, Shuangshuang
Liu, Min-Qian
Qi, Zong-Feng
Source :
Metrika. Apr2017, Vol. 80 Issue 3, p289-308. 20p.
Publication Year :
2017

Abstract

The stochastic search variable selection proposed by George and McCulloch (J Am Stat Assoc 88:881-889, 1993) is one of the most popular variable selection methods for linear regression models. Many efforts have been proposed in the literature to improve its computational efficiency. However, most of these efforts change its original Bayesian formulation, thus the comparisons are not fair. This work focuses on how to improve the computational efficiency of the stochastic search variable selection, but remains its original Bayesian formulation unchanged. The improvement is achieved by developing a new Gibbs sampling scheme different from that of George and McCulloch (J Am Stat Assoc 88:881-889, 1993). A remarkable feature of the proposed Gibbs sampling scheme is that, it samples the regression coefficients from their posterior distributions in a componentwise manner, so that the expensive computation of the inverse of the information matrix, which is involved in the algorithm of George and McCulloch (J Am Stat Assoc 88:881-889, 1993), can be avoided. Moreover, since the original Bayesian formulation remains unchanged, the stochastic search variable selection using the proposed Gibbs sampling scheme shall be as efficient as that of George and McCulloch (J Am Stat Assoc 88:881-889, 1993) in terms of assigning large probabilities to those promising models. Some numerical results support these findings. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00261335
Volume :
80
Issue :
3
Database :
Academic Search Index
Journal :
Metrika
Publication Type :
Academic Journal
Accession number :
121743487
Full Text :
https://doi.org/10.1007/s00184-016-0604-x