Bayesian Regression Modeling Strategies


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Documentation for package ‘rmsb’ version 1.1-0

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rmsb-package The 'rmsb' package.
as.data.frame.Ocens Convert 'Ocens' Object to Data Frame to Facilitate Subset
blrm Bayesian Binary and Ordinal Logistic Regression
blrmStats Compute Indexes of Predictive Accuracy and Their Uncertainties
cluster cluster
coef.rmsb Extract Bayesian Summary of Coefficients
compareBmods Compare Bayesian Model Fits
distSym Distribution Symmetry Measure
ExProb.blrm Function Generator for Exceedance Probabilities for 'blrm()'
getParamCoef Get a Bayesian Parameter Vector Summary
HPDint Highest Posterior Density Interval
Mean.blrm Function Generator for Mean Y for 'blrm()'
Ocens Censored Ordinal Variable
pdensityContour Bivariate Posterior Contour
plot.PostF Plot Posterior Density of 'PostF'
plot.rmsb Plot Posterior Densities and Summaries
PostF Function Generator for Posterior Probabilities of Assertions
predict.blrm Make predictions from a 'blrm()' fit
print.blrm Print 'blrm()' Results
print.blrmStats Print Details for 'blrmStats' Predictive Accuracy Measures
print.predict.blrm Print Predictions for 'blrm()'
print.rmsb Basic Print for Bayesian Parameter Summary
Quantile.blrm Function Generator for Quantiles of Y for 'blrm()'
rmsb The 'rmsb' package.
selectedQr QR Decomposition Preserving Selected Columns
stackMI Bayesian Model Fitting and Stacking for Multiple Imputation
stanDx Print Stan Diagnostics
stanDxplot Diagnostic Trace Plots
stanGet Get Stan Output
tauFetch Fetch Partial Proportional Odds Parameters
vcov.rmsb Variance-Covariance Matrix
[.Ocens Ocens