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Scalable Bayesian Variable Selection for Structured High-Dimensional Data
by
Chang, Changgee
, Long, Qi
, Kundu, Suprateek
in
Adaptive Bayesian shrinkage
/ Algorithms
/ Bayes Theorem
/ Bayesian analysis
/ Bayesian theory
/ BIOMETRIC METHODOLOGY
/ biometry
/ Biometry - methods
/ Cancer
/ Computational Biology
/ Computer applications
/ Computer simulation
/ Computer Simulation - statistics & numerical data
/ EM algorithm
/ Genomics
/ Humans
/ neoplasms
/ Neoplasms - genetics
/ Oracle property
/ prediction
/ Selection consistency
/ Shrinkage
/ Structured high‐dimensional variable selection
/ Variables
2018
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Scalable Bayesian Variable Selection for Structured High-Dimensional Data
by
Chang, Changgee
, Long, Qi
, Kundu, Suprateek
in
Adaptive Bayesian shrinkage
/ Algorithms
/ Bayes Theorem
/ Bayesian analysis
/ Bayesian theory
/ BIOMETRIC METHODOLOGY
/ biometry
/ Biometry - methods
/ Cancer
/ Computational Biology
/ Computer applications
/ Computer simulation
/ Computer Simulation - statistics & numerical data
/ EM algorithm
/ Genomics
/ Humans
/ neoplasms
/ Neoplasms - genetics
/ Oracle property
/ prediction
/ Selection consistency
/ Shrinkage
/ Structured high‐dimensional variable selection
/ Variables
2018
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Do you wish to request the book?
Scalable Bayesian Variable Selection for Structured High-Dimensional Data
by
Chang, Changgee
, Long, Qi
, Kundu, Suprateek
in
Adaptive Bayesian shrinkage
/ Algorithms
/ Bayes Theorem
/ Bayesian analysis
/ Bayesian theory
/ BIOMETRIC METHODOLOGY
/ biometry
/ Biometry - methods
/ Cancer
/ Computational Biology
/ Computer applications
/ Computer simulation
/ Computer Simulation - statistics & numerical data
/ EM algorithm
/ Genomics
/ Humans
/ neoplasms
/ Neoplasms - genetics
/ Oracle property
/ prediction
/ Selection consistency
/ Shrinkage
/ Structured high‐dimensional variable selection
/ Variables
2018
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Scalable Bayesian Variable Selection for Structured High-Dimensional Data
Journal Article
Scalable Bayesian Variable Selection for Structured High-Dimensional Data
2018
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Overview
Variable selection for structured covariates lying on an underlying known graph is a problem motivated by practical applications, and has been a topic of increasing interest. However, most of the existing methods may not be scalable to high-dimensional settings involving tens of thousands of variables lying on known pathways such as the case in genomics studies. We propose an adaptive Bayesian shrinkage approach which incorporates prior network information by smoothing the shrinkage parameters for connected variables in the graph, so that the corresponding coefficients have a similar degree of shrinkage. We fit our model via a computationally efficient expectation maximization algorithm which scalable to highdimensional settings (p ~ 100,000). Theoretical properties for fixed as well as increasing dimensions are established, even when the number of variables increases faster than the sample size. We demonstrate the advantages of our approach in terms of variable selection, prediction, and computational scalability via a simulation study, and apply the method to a cancer genomics study.
Publisher
Wiley-Blackwell,Blackwell Publishing Ltd
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