| 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). |
| bayesDensity | Summary for the density estimate based on the mixture Bayesian AFT model. |
| bayesGspline | Summary for the density estimate based on the model with Bayesian G-splines. |
| bayesHistogram | Smoothing of a uni- or bivariate histogram using Bayesian G-splines |
| bayessurvreg1 | A Bayesian survival regression with an error distribution expressed as a~normal mixture with unknown number of components |
| bayessurvreg1.files2init | Read the initial values for the Bayesian survival regression model to the list. |
| 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. |
| bayessurvreg3 | Cluster-specific accelerated failure time model for multivariate, possibly doubly-interval-censored data with flexibly specified random effects and/or error distribution. |
| bayessurvreg3Para | Cluster-specific accelerated failure time model for multivariate, possibly doubly-interval-censored data with flexibly specified random effects and/or error distribution. |
| cgd | Chronic Granulomatous Disease data |
| credible.region | Compute a simultaneous credible region (rectangle) from a sample for a vector valued parameter. |
| C_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). |
| C_bayesDensity | Summary for the density estimate based on the mixture Bayesian AFT model. |
| C_bayesGspline | Summary for the density estimate based on the model with Bayesian G-splines. |
| C_bayesHistogram | Smoothing of a uni- or bivariate histogram using Bayesian G-splines |
| C_bayessurvreg1 | A Bayesian survival regression with an error distribution expressed as a~normal mixture with unknown number of components |
| C_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. |
| C_cholesky | A Bayesian survival regression with an error distribution expressed as a~normal mixture with unknown number of components |
| C_iPML_misclass_GJK | Cluster-specific accelerated failure time model for multivariate, possibly doubly-interval-censored data with flexibly specified random effects and/or error distribution. |
| C_marginal_bayesGspline | Summary for the marginal density estimates based on the bivariate model with Bayesian G-splines. |
| C_predictive | Compute predictive quantities based on a Bayesian survival regression model fitted using bayessurvreg1 function. |
| C_predictive_GS | Compute predictive quantities based on a Bayesian survival regression model fitted using bayesBisurvreg or bayessurvreg2 or bayessurvreg3 functions. |
| C_rmvnormR2006 | Sample from the multivariate normal distribution |
| C_rwishartR3 | Sample from the Wishart distribution |
| C_sampledKendallTau | Estimate of the Kendall's tau from the bivariate model |
| densplot2 | Probability density function estimate from MCMC output |
| files2coda | Read the sampled values from the Bayesian survival regression model to a coda mcmc object. |
| give.summary | Brief summary for the chain(s) obtained using the MCMC. |
| marginal.bayesGspline | Summary for the marginal density estimates based on the bivariate model with Bayesian G-splines. |
| plot.bayesDensity | Plot an object of class bayesDensity |
| plot.bayesGspline | Plot an object of class bayesGspline |
| plot.marginal.bayesGspline | Plot an object of class marginal.bayesGspline |
| predictive | Compute predictive quantities based on a Bayesian survival regression model fitted using bayessurvreg1 function. |
| predictive.control | Compute predictive quantities based on a Bayesian survival regression model fitted using bayessurvreg1 function. |
| predictive2 | Compute predictive quantities based on a Bayesian survival regression model fitted using bayesBisurvreg or bayessurvreg2 or bayessurvreg3 functions. |
| predictive2.control | Compute predictive quantities based on a Bayesian survival regression model fitted using bayesBisurvreg or bayessurvreg2 or bayessurvreg3 functions. |
| predictive2Para | Compute predictive quantities based on a Bayesian survival regression model fitted using bayesBisurvreg or bayessurvreg2 or bayessurvreg3 functions. |
| print.bayesDensity | Print a summary for the density estimate based on the Bayesian model. |
| print.simult.pvalue | Compute a simultaneous p-value from a sample for a vector valued parameter. |
| rMVNorm | Sample from the multivariate normal distribution |
| rWishart | Sample from the Wishart distribution |
| sampleCovMat | Compute a sample covariance matrix. |
| sampled.kendall.tau | Estimate of the Kendall's tau from the bivariate model |
| scanFN | Read Data Values |
| simult.pvalue | Compute a simultaneous p-value from a sample for a vector valued parameter. |
| tandmob2 | Signal Tandmobiel data, version 2 |
| tandmobRoos | Signal Tandmobiel data, version Roos |
| traceplot2 | Trace plot of MCMC output. |
| vecr2matr | Transform single component indeces to double component indeces |