REBayes: An R Package for Empirical Bayes Mixture Methods

Models of unobserved heterogeneity, or frailty as it is commonly known in survival analysis, can often be formulated as semiparametric mixture models and estimated by maximum likelihood as proposed by Robbins (1950) and elaborated by Kiefer and Wolfowitz (1956). Recent developments in convex optimiz...

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Main Authors: Roger Koenker, Jiaying Gu
Format: Article
Language:English
Published: Foundation for Open Access Statistics 2017-12-01
Series:Journal of Statistical Software
Subjects:
Online Access:https://www.jstatsoft.org/index.php/jss/article/view/2534
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spelling doaj-52cfeb60e4da4bd4997942e6ebbeb9832020-11-24T20:45:32ZengFoundation for Open Access StatisticsJournal of Statistical Software1548-76602017-12-0182112610.18637/jss.v082.i081176REBayes: An R Package for Empirical Bayes Mixture MethodsRoger KoenkerJiaying GuModels of unobserved heterogeneity, or frailty as it is commonly known in survival analysis, can often be formulated as semiparametric mixture models and estimated by maximum likelihood as proposed by Robbins (1950) and elaborated by Kiefer and Wolfowitz (1956). Recent developments in convex optimization, as noted by Koenker and Mizera (2014b), have led to dramatic improvements in computational methods for such models. In this vignette we describe an implementation contained in the R package REBayes with applications to a wide variety of mixture settings: Gaussian location and scale, Poisson and binomial mixtures for discrete data, Weibull and Gompertz models for survival data, and several Gaussian models intended for longitudinal data. While the dimension of the nonparametric heterogeneity of these models is inherently limited by our present gridding strategy, we describe how additional fixed parameters can be relatively easily accommodated via profile likelihood. We also describe some nonparametric maximum likelihood methods for shape and norm constrained density estimation that employ related computational methods.https://www.jstatsoft.org/index.php/jss/article/view/2534mixture modelsmaximum likelihoodconvex optimizationempirical Bayes
collection DOAJ
language English
format Article
sources DOAJ
author Roger Koenker
Jiaying Gu
spellingShingle Roger Koenker
Jiaying Gu
REBayes: An R Package for Empirical Bayes Mixture Methods
Journal of Statistical Software
mixture models
maximum likelihood
convex optimization
empirical Bayes
author_facet Roger Koenker
Jiaying Gu
author_sort Roger Koenker
title REBayes: An R Package for Empirical Bayes Mixture Methods
title_short REBayes: An R Package for Empirical Bayes Mixture Methods
title_full REBayes: An R Package for Empirical Bayes Mixture Methods
title_fullStr REBayes: An R Package for Empirical Bayes Mixture Methods
title_full_unstemmed REBayes: An R Package for Empirical Bayes Mixture Methods
title_sort rebayes: an r package for empirical bayes mixture methods
publisher Foundation for Open Access Statistics
series Journal of Statistical Software
issn 1548-7660
publishDate 2017-12-01
description Models of unobserved heterogeneity, or frailty as it is commonly known in survival analysis, can often be formulated as semiparametric mixture models and estimated by maximum likelihood as proposed by Robbins (1950) and elaborated by Kiefer and Wolfowitz (1956). Recent developments in convex optimization, as noted by Koenker and Mizera (2014b), have led to dramatic improvements in computational methods for such models. In this vignette we describe an implementation contained in the R package REBayes with applications to a wide variety of mixture settings: Gaussian location and scale, Poisson and binomial mixtures for discrete data, Weibull and Gompertz models for survival data, and several Gaussian models intended for longitudinal data. While the dimension of the nonparametric heterogeneity of these models is inherently limited by our present gridding strategy, we describe how additional fixed parameters can be relatively easily accommodated via profile likelihood. We also describe some nonparametric maximum likelihood methods for shape and norm constrained density estimation that employ related computational methods.
topic mixture models
maximum likelihood
convex optimization
empirical Bayes
url https://www.jstatsoft.org/index.php/jss/article/view/2534
work_keys_str_mv AT rogerkoenker rebayesanrpackageforempiricalbayesmixturemethods
AT jiayinggu rebayesanrpackageforempiricalbayesmixturemethods
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