Convex Optimization in R

Convex optimization now plays an essential role in many facets of statistics. We briefly survey some recent developments and describe some implementations of these methods in R . Applications of linear and quadratic programming are introduced including quantile regression, the Huber M-estimator and...

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Bibliographic Details
Published inJournal of statistical software Vol. 60; no. 5; pp. 1 - 23
Main Authors Koenker, Roger, Mizera, Ivan
Format Journal Article
LanguageEnglish
Published Foundation for Open Access Statistics 01.09.2014
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Summary:Convex optimization now plays an essential role in many facets of statistics. We briefly survey some recent developments and describe some implementations of these methods in R . Applications of linear and quadratic programming are introduced including quantile regression, the Huber M-estimator and various penalized regression methods. Applications to additively separable convex problems subject to linear equality and inequality constraints such as nonparametric density estimation and maximum likelihood estimation of general nonparametric mixture models are described, as are several cone programming problems. We focus throughout primarily on implementations in the R environment that rely on solution methods linked to R, like MOSEK by the package Rmosek. Code is provided in R to illustrate several of these problems. Other applications are available in the R package REBayes, dealing with empirical Bayes estimation of nonparametric mixture models.
ISSN:1548-7660
1548-7660
DOI:10.18637/jss.v060.i05