glm.pp | R Documentation |
a_0
Sample from the posterior distribution of a GLM using the power prior (PP) by Ibrahim and Chen (2000) doi:10.1214/ss/1009212673.
glm.pp(
formula,
family,
data.list,
a0.vals,
offset.list = NULL,
beta.mean = NULL,
beta.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 |
a0.vals |
a scalar between 0 and 1 or a vector whose dimension is equal to the number of historical
data sets giving the (fixed) power prior parameter for each historical data set. Each element of
vector should be between 0 and 1. If a scalar is provided, same as for |
offset.list |
a list of vectors giving the offsets for each data. The length of |
beta.mean |
a scalar or a vector whose dimension is equal to the number of regression coefficients giving
the mean parameters for the initial prior on regression coefficients. If a scalar is provided,
|
beta.sd |
a scalar or a vector whose dimension is equal to the number of regression coefficients giving
the sd parameters for the initial prior on regression coefficients. If a scalar is provided,
same as for |
disp.mean |
location parameter for the half-normal prior on dispersion parameter. Defaults to 0. |
disp.sd |
scale parameter for the half-normal prior on dispersion parameter. Defaults to 10. |
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 power prior parameters (a_0
's) are treated as fixed. The initial priors on the regression coefficients
are independent normal priors. The current and historical data sets are assumed to have a common dispersion parameter
with a half-normal prior (if applicable).
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.
Chen, M.-H. and Ibrahim, J. G. (2000). Power prior distributions for Regression Models. Statistical Science, 15(1).
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.pp(
formula = cd4 ~ treatment + age + race,
family = poisson('log'),
data.list = data_list,
a0.vals = 0.5,
chains = 1, iter_warmup = 500, iter_sampling = 1000
)
}
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