JointAI (version 0.5.1)

default_hyperpars: Get default values for hyperparameters

Description

Prints the list of default values for the hyperparameters.

Usage

default_hyperpars()

Arguments

Details

norm: hyperparameters for normal and lognormal models

mu_reg_norm mean in the priors for regression coefficients
tau_reg_norm precision in the priors for regression coefficients
shape_tau_norm shape parameter in Gamma prior for precision of imputed variable

gamma: hyperparameters for Gamma models

mu_reg_gamma mean in the priors for regression coefficients
tau_reg_gamma precision in the priors for regression coefficients
shape_tau_gamma shape parameter in Gamma prior for precision of imputed variable

beta: hyperparameters for beta models

mu_reg_beta mean in the priors for regression coefficients
tau_reg_beta precision in the priors for regression coefficients
shape_tau_beta shape parameter in Gamma prior for precision of imputed variable

logit: hyperparameters for logistic models

mu_reg_logit mean in the priors for regression coefficients

probit: hyperparameters for probit models

mu_reg_logit mean in the priors for regression coefficients

multinomial: hyperparameters for multinomial models

mu_reg_multinomial mean in the priors for regression coefficients

ordinal: hyperparameters for ordinal models

mu_reg_ordinal mean in the priors for regression coefficients
tau_reg_ordinal precision in the priors for regression coefficients
mu_delta_ordinal mean in the prior for the intercepts

Z: function creating hyperparameters for the random effects in mixed models, with output elements

RinvD scale matrix in Wishart prior (*) for random effects covariance matrix
KinvD degrees of freedom in Wishart prior for random effects covariance matrix
shape_diag_RinvD shape parameter in Gamma prior for the diagonal elements of RinvD

(*) when there is only one random effect a Gamma distribution is used instead of the Wishart and RinvD and KinvD are NULL

surv: parameters for survival models (parametric and proportional hazard)

mu_reg_surv mean in the priors for regression coefficients

coxph: parameters for Cox proportional hazards models

c confidence in prior guess for the hazard function
r failure rate per unit time

Examples

Run this code
# NOT RUN {
default_hyperpars()


# }

Run the code above in your browser using DataLab