monomvn: Estimation for multivariate normal and Student-t data with
monotone missingness
Estimation of multivariate normal and student-t data of
arbitrary dimension where the pattern of missing data is
monotone. Through the use of parsimonious/shrinkage
regressions (plsr, pcr, lasso, ridge, etc.), where standard
regressions fail, the package can handle a nearly arbitrary
amount of missing data. The current version supports maximum
likelihood inference and a full Bayesian approach employing
scale-mixtures for the lasso (double-exponential) and
Normal-Gamma priors, and Student-t errors. Monotone data
augmentation extends this Bayesian approach to arbitrary
missingness patterns. A fully functional standalone interface
to the Bayesian lasso (from Park & Casella), Normal-Gamma (from
Griffin & Brown), and ridge regression with model selection via
Reversible Jump, and student-t errors (from Geweke) is also
provided
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