TY - JOUR
T1 - Bayesian Extended Redundancy Analysis
T2 - A Bayesian Approach to Component-based Regression with Dimension Reduction
AU - Choi, Ji Yeh
AU - Kyung, Minjung
AU - Hwang, Heungsun
AU - Park, Ju Hyun
N1 - Publisher Copyright:
© 2019, © 2019 The Author(s). Published by Taylor & Francis.
PY - 2020/1/2
Y1 - 2020/1/2
N2 - Extended redundancy analysis (ERA) combines linear regression with dimension reduction to explore the directional relationships between multiple sets of predictors and outcome variables in a parsimonious manner. It aims to extract a component from each set of predictors in such a way that it accounts for the maximum variance of outcome variables. In this article, we extend ERA into the Bayesian framework, called Bayesian ERA (BERA). The advantages of BERA are threefold. First, BERA enables to make statistical inferences based on samples drawn from the joint posterior distribution of parameters obtained from a Markov chain Monte Carlo algorithm. As such, it does not necessitate any resampling method, which is on the other hand required for (frequentist’s) ordinary ERA to test the statistical significance of parameter estimates. Second, it formally incorporates relevant information obtained from previous research into analyses by specifying informative power prior distributions. Third, BERA handles missing data by implementing multiple imputation using a Markov Chain Monte Carlo algorithm, avoiding the potential bias of parameter estimates due to missing data. We assess the performance of BERA through simulation studies and apply BERA to real data regarding academic achievement.
AB - Extended redundancy analysis (ERA) combines linear regression with dimension reduction to explore the directional relationships between multiple sets of predictors and outcome variables in a parsimonious manner. It aims to extract a component from each set of predictors in such a way that it accounts for the maximum variance of outcome variables. In this article, we extend ERA into the Bayesian framework, called Bayesian ERA (BERA). The advantages of BERA are threefold. First, BERA enables to make statistical inferences based on samples drawn from the joint posterior distribution of parameters obtained from a Markov chain Monte Carlo algorithm. As such, it does not necessitate any resampling method, which is on the other hand required for (frequentist’s) ordinary ERA to test the statistical significance of parameter estimates. Second, it formally incorporates relevant information obtained from previous research into analyses by specifying informative power prior distributions. Third, BERA handles missing data by implementing multiple imputation using a Markov Chain Monte Carlo algorithm, avoiding the potential bias of parameter estimates due to missing data. We assess the performance of BERA through simulation studies and apply BERA to real data regarding academic achievement.
KW - Bayesian methodology
KW - extended redundancy analysis
KW - missing data
KW - multiple imputation
KW - power prior distribution
UR - http://www.scopus.com/inward/record.url?scp=85065120717&partnerID=8YFLogxK
U2 - 10.1080/00273171.2019.1598837
DO - 10.1080/00273171.2019.1598837
M3 - Article
C2 - 31021267
AN - SCOPUS:85065120717
SN - 0027-3171
VL - 55
SP - 30
EP - 48
JO - Multivariate Behavioral Research
JF - Multivariate Behavioral Research
IS - 1
ER -