glm.bhm | R Documentation |
Sample from the posterior distribution of a GLM using the Bayesian hierarchical model (BHM).
glm.bhm(
formula,
family,
data.list,
offset.list = NULL,
meta.mean.mean = NULL,
meta.mean.sd = NULL,
meta.sd.mean = NULL,
meta.sd.sd = NULL,
disp.mean = NULL,
disp.sd = NULL,
iter_warmup = 1000,
iter_sampling = 1000,
chains = 4,
...
)
formula |
a two-sided formula giving the relationship between the response variable and covariates. |
family |
an object of class |
data.list |
a list of |
offset.list |
a list of vectors giving the offsets for each data. The length of |
meta.mean.mean |
a scalar or a vector whose dimension is equal to the number of regression coefficients giving
the means for the normal hyperpriors on the mean hyperparameters of regression coefficients.
If a scalar is provided, |
meta.mean.sd |
a scalar or a vector whose dimension is equal to the number of regression coefficients giving
the sds for the normal hyperpriors on the mean hyperparameters of regression coefficients. If
a scalar is provided, same as for |
meta.sd.mean |
a scalar or a vector whose dimension is equal to the number of regression coefficients giving
the means for the half-normal hyperpriors on the sd hyperparameters of regression coefficients.
If a scalar is provided, same as for |
meta.sd.sd |
a scalar or a vector whose dimension is equal to the number of regression coefficients giving
the sds for the half-normal hyperpriors on the sd hyperparameters of regression coefficients.
If a scalar is provided, same as for |
disp.mean |
a scalar or a vector whose dimension is equal to the number of data sets (including the current
data) giving the location parameters for the half-normal priors on the dispersion parameters.
If a scalar is provided, same as for |
disp.sd |
a scalar or a vector whose dimension is equal to the number of data sets (including the current
data) giving the scale parameters for the half-normal priors on the dispersion parameters. If a
scalar is provided, same as for |
iter_warmup |
number of warmup iterations to run per chain. Defaults to 1000. See the argument |
iter_sampling |
number of post-warmup iterations to run per chain. Defaults to 1000. See the argument |
chains |
number of Markov chains to run. Defaults to 4. See the argument |
... |
arguments passed to |
The Bayesian hierarchical model (BHM) assumes that the regression coefficients for the historical and current data are different, but are correlated through a common distribution, whose hyperparameters (i.e., mean and standard deviation (sd) (the covariance matrix is assumed to have a diagonal structure)) are treated as random. The number of regression coefficients for the current data is assumed to be the same as that for the historical data.
The hyperpriors on the mean and the sd hyperparameters are independent normal and independent half-normal distributions, respectively. The priors on the dispersion parameters (if applicable) for the current and historical data sets are independent half-normal distributions.
The function returns an object of class draws_df
giving posterior samples, with an attribute called 'data' which includes
the list of variables specified in the data block of the Stan program.
if (instantiate::stan_cmdstan_exists()) {
data(actg019)
data(actg036)
## take subset for speed purposes
actg019 = actg019[1:100, ]
actg036 = actg036[1:50, ]
data_list = list(currdata = actg019, histdata = actg036)
glm.bhm(
formula = outcome ~ scale(age) + race + treatment + scale(cd4),
family = binomial('logit'),
data.list = data_list,
chains = 1, iter_warmup = 500, iter_sampling = 1000
)
}
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