Markov Chain Monte Carlo Maximum Likelihood for Generalised Linear Mixed Models


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Documentation for package ‘glmmrMCML’ version 0.2.2

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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