| CG_control |
Set options for the conjugate gradient (CG) sampler |
| chol_control |
Set options for Cholesky decomposition |
| combine_chains |
Combine multiple mcdraws objects into a single one by combining their chains |
| combine_iters |
Combine multiple mcdraws objects into a single one by combining their draws |
| computeDesignMatrix |
Compute a list of design matrices for all terms in a model formula, or based on a sampler environment |
| compute_DIC |
Compute DIC, WAIC and leave-one-out cross-validation model measures |
| compute_WAIC |
Compute DIC, WAIC and leave-one-out cross-validation model measures |
| correlation |
Correlation factor structures in generic model components |
| create_cMVN_sampler |
Set up a function for direct sampling from a constrained multivariate normal distribution |
| create_sampler |
Create a sampler object |
| create_TMVN_sampler |
Set up a sampler object for sampling from a possibly truncated and degenerate multivariate normal distribution |
| crossprod_mv |
Fast matrix-vector multiplications |
| custom |
Correlation factor structures in generic model components |
| matrix-vector |
Fast matrix-vector multiplications |
| maximize_log_lh_p |
Maximise the log-likelihood or log-posterior as defined by a sampler closure |
| MCMC-diagnostics |
Compute MCMC diagnostic measures |
| MCMC-object-conversion |
Convert a draws component object to another format |
| mcmcsae |
Markov Chain Monte Carlo Small Area Estimation |
| mcmcsae_example |
Generate artificial data according to an additive spatio-temporal model |
| MCMCsim |
Run a Markov Chain Monte Carlo simulation |
| mc_offset |
Create a model component object for an offset, i.e. fixed, non-parametrised term in the linear predictor |
| mec |
Create a model component object for a regression (fixed effects) component in the linear predictor with measurement errors in quantitative covariates |
| model-information-criteria |
Compute DIC, WAIC and leave-one-out cross-validation model measures |
| model_matrix |
Compute possibly sparse model matrix |
| m_direct |
Functions for specifying the method and corresponding options for sampling from a possibly truncated and degenerate multivariate normal distribution |
| m_Gibbs |
Functions for specifying the method and corresponding options for sampling from a possibly truncated and degenerate multivariate normal distribution |
| m_HMC |
Functions for specifying the method and corresponding options for sampling from a possibly truncated and degenerate multivariate normal distribution |
| m_HMCZigZag |
Functions for specifying the method and corresponding options for sampling from a possibly truncated and degenerate multivariate normal distribution |
| m_softTMVN |
Functions for specifying the method and corresponding options for sampling from a possibly truncated and degenerate multivariate normal distribution |
| par_names |
Get the parameter names from an mcdraws object |
| plot.dc |
Trace, density and autocorrelation plots for (parameters of a) draws component (dc) object |
| plot.mcdraws |
Trace, density and autocorrelation plots |
| plot_coef |
Plot a set of model coefficients or predictions with uncertainty intervals based on summaries of simulation results or other objects. |
| poisson_control |
Set computational options for the sampling algorithms |
| posterior-moments |
Get means or standard deviations of parameters from the MCMC output in an mcdraws object |
| predict.mcdraws |
Generate draws from the predictive distribution |
| print.dc_summary |
Display a summary of a 'dc' object |
| print.mcdraws_summary |
Print a summary of MCMC simulation results |
| pr_beta |
Create an object representing beta prior distributions |
| pr_exp |
Create an object representing exponential prior distributions |
| pr_fixed |
Create an object representing a degenerate prior fixing a parameter (vector) to a fixed value |
| pr_gamma |
Create an object representing gamma prior distributions |
| pr_gig |
Create an object representing Generalised Inverse Gaussian (GIG) prior distributions |
| pr_invchisq |
Create an object representing inverse chi-squared priors with possibly modelled degrees of freedom and scale parameters |
| pr_invwishart |
Create an object representing an inverse Wishart prior, possibly with modelled scale matrix |
| pr_MLiG |
Create an object representing a Multivariate Log inverse Gamma (MLiG) prior distribution |
| pr_normal |
Create an object representing a possibly multivariate normal prior distribution |
| pr_truncnormal |
Create an object representing truncated normal prior distributions |
| pr_unif |
Create an object representing uniform prior distributions |
| sampler_control |
Set computational options for the sampling algorithms |
| SBC_test |
Simulation based calibration |
| season |
Correlation factor structures in generic model components |
| setup_cluster |
Set up a cluster for parallel computing |
| set_constraints |
Set up a system of linear equality and/or inequality constraints |
| set_MH |
Set options for Metropolis-Hastings sampling |
| sim_marg_var |
Compute a Monte Carlo estimate of the marginal variances of a (I)GMRF |
| spatial |
Correlation factor structures in generic model components |
| splines |
Correlation factor structures in generic model components |
| stop_cluster |
Stop a cluster |
| subset.dc |
Select a subset of chains, samples and parameters from a draws component (dc) object |
| summary.dc |
Summarise a draws component (dc) object |
| summary.mcdraws |
Summarise an mcdraws object |