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rms (version 6.0-1)

stackMI: Bayesian Model Fitting and Stacking for Multiple Imputation

Description

Runs an rms package Bayesian fitting function such as blrm separately for each completed dataset given a multiple imputation result such as one produced by Hmisc::aregImpute. Stacks the posterior draws and diagnostics across all imputations, and computes parameter summaries on the stacked posterior draws. stackMI

Usage

stackMI(
  formula,
  fitter,
  xtrans,
  data,
  n.impute = xtrans$n.impute,
  dtrans,
  derived,
  subset,
  refresh = 0,
  progress = if (refresh > 0) "stan-progress.txt" else "",
  ...
)

Arguments

formula

a model formula

fitter

a Bayesian fitter

xtrans

an object created by transcan, aregImpute, or mice

data

data frame

n.impute

number of imputations to run, default is the number saved in xtrans

dtrans

see Hmisc::fit.mult.impute

derived

see Hmisc::fit.mult.impute

subset

an integer or logical vector specifying the subset of observations to fit

refresh

see [rstan::sampling]. The default is 0, indicating that no progress notes are output. If refresh > 0 and progress is not '', progress output will be appended to file progress. The default file name is 'stan-progress.txt'.

progress

see refresh. Defaults to '' if refresh = 0. Note: If running interactively but not under RStudio, rstan will open a browser window for monitoring progress.

...

arguments passed to fitter

Value

an rms fit object with expanded posterior draws and diagnostics