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bayesSurv (version 0.3-1)
Bayesian Survival Regression with Flexible Error and Random Effects Distributions
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Install
install.packages('bayesSurv')
Monthly Downloads
616
Version
0.3-1
License
GPL version 2 or newer
Maintainer
Arnost Komarek
Last Published
September 7th, 2005
Functions in bayesSurv (0.3-1)
Search functions
bayessurvreg2
Cluster-specific accelerated failure time model for multivariate, possibly doubly-interval-censored data. The error distribution is expressed as a~penalized univariate normal mixture with high number of components (G-spline). The distribution of the vector of random effects is multivariate normal.
bayesDensity
Summary for the density estimate based on the mixture Bayesian AFT model.
bayesBisurvreg.help
Helping function for Bayesian regression with smoothed bivariate densities as the error term, based on possibly censored data
bayesBisurvreg
Population-averaged accelerated failure time model for bivariate, possibly doubly-interval-censored data. The error distribution is expressed as a~penalized bivariate normal mixture with high number of components (bivariate G-spline).
bayessurvreg1.files2init
Read the initial values for the Bayesian survival regression model to the list.
bayesHistogram
Smoothing of a uni- or bivariate histogram using Bayesian G-splines
bayessurvreg3.help
Helping functions for Bayesian regression with an error distribution smoothed using G-splines
bayesHistogram.help
Helping function for Bayesian smoothing of (bi)-variate densities based on possibly censored data
bayesGspline
Summary for the density estimate based on the model with Bayesian G-splines.
sampleCovMat
Compute a sample covariance matrix.
files.Gspline
Write headers to or clean files with sampled G-spline
tandmobRoos
Signal Tandmobiel data, version Roos
plot.bayesDensity
Plot an object of class bayesDensity
bayessurvreg.help
Helping function for Bayesian survival regression models.
print.bayesDensity
Print a summary for the density estimate based on the Bayesian model.
cgd
Chronic Granulomatous Disease data
traceplot2
Trace plot of MCMC output.
give.summary
Brief summary for the chain(s) obtained using the MCMC.
bayessurvreg3
Cluster-specific accelerated failure time model for multivariate, possibly doubly-interval-censored data. The random intercept can be included in the model formula. Both the error distribution and the distribution of the random intercept is expressed as a~penalized univariate normal mixture with high number of components (G-spline).
credible.region
Compute a simultaneous confidence region from a sample for a vector valued parameter.
bayessurvreg2.help
Helping functions for Bayesian regression with an error distribution smoothed using G-splines
predictive
Compute predictive quantities based on a Bayesian survival regression model fitted using bayessurvreg1 function.
tandmob2
Signal Tandmobiel data, version 2
densplot2
Probability density function estimate from MCMC output
bayessurvreg1.help
Helping function for Bayesian survival regression models, version 1.
bayessurvreg1
A Bayesian survival regression with an error distribution expressed as a~normal mixture with unknown number of components
predictive2
Compute predictive quantities based on a Bayesian survival regression model fitted using bayesBisurvreg or bayessurvreg2 or bayessurvreg3 functions.
vecr2matr
Transform single component indeces to double component indeces
files2coda
Read the sampled values from the Bayesian survival regression model to a coda mcmc object.
plot.bayesGspline
Plot an object of class bayesGspline
give.init
Check and possibly fill in initial values for the G-spline, augmented observations and allocations for Bayesian models with G-splines
simult.pvalue
Compute a simultaneous p-value from a sample for a vector valued parameter.