glmmrMCML-package |
Markov Chain Monte Carlo Maximum Likelihood for Generalised Linear Mixed Models |
aic_mcml |
Calculates the conditional Akaike Information Criterion for the GLMM |
gen_u_samples |
Generate samples of random effects using MCMC |
glmmrMCML |
Markov Chain Monte Carlo Maximum Likelihood for Generalised Linear Mixed Models |
mcmc_sample |
Hamiltonian Monte Carlo Sampler for Model Random Effects |
mcml_full |
Markov Chain Monte Carlo Maximum Likelihood Algorithm |
mcml_hess |
Generate Hessian matrix of GLMM |
mcml_hess_sparse |
Generate Hessian matrix of GLMM using sparse matrix methods |
mcml_la |
Maximum Likelihood with Laplace Approximation and Derivative Free Optimisation |
mcml_la_nr |
Maximum Likelihood with Laplace Approximation and Newton-Raphson |
mcml_optim |
Likelihood maximisation for the GLMM |
mcml_optim_sparse |
Likelihood maximisation for the GLMM using sparse matrix methods |
mcml_simlik |
Simulated likelihood optimisation step for MCML |
mcml_simlik_sparse |
Simulated likelihood optimisation step for MCML using sparse matrix methods |
mcnr_family |
Returns the file name and type for MCNR function |
ModelMCML |
Extension to the Model class to use Markov Chain Monte Carlo Maximum Likelihood |
mvn_ll |
Multivariate normal log likelihood |
print.mcml |
Prints an mcml fit output |
summary.mcml |
Summarises an mcml fit output |