Generate Stan code for brms models
make_stancode(
formula,
data,
family = gaussian(),
prior = NULL,
autocor = NULL,
cov_ranef = NULL,
sparse = NULL,
sample_prior = c("no", "yes", "only"),
stanvars = NULL,
stan_funs = NULL,
save_model = NULL,
silent = FALSE,
...
)
An object of class formula
,
brmsformula
, or mvbrmsformula
(or one that can
be coerced to that classes): A symbolic description of the model to be
fitted. The details of model specification are explained in
brmsformula
.
An object of class data.frame
(or one that can be coerced
to that class) containing data of all variables used in the model.
A description of the response distribution and link function to
be used in the model. This can be a family function, a call to a family
function or a character string naming the family. Every family function has
a link
argument allowing to specify the link function to be applied
on the response variable. If not specified, default links are used. For
details of supported families see brmsfamily
. By default, a
linear gaussian
model is applied. In multivariate models,
family
might also be a list of families.
(Deprecated) An optional cor_brms
object
describing the correlation structure within the response variable (i.e.,
the 'autocorrelation'). See the documentation of cor_brms
for
a description of the available correlation structures. Defaults to
NULL
, corresponding to no correlations. In multivariate models,
autocor
might also be a list of autocorrelation structures.
It is now recommend to specify autocorrelation terms directly
within formula
. See brmsformula
for more details.
A list of matrices that are proportional to the (within)
covariance structure of the group-level effects. The names of the matrices
should correspond to columns in data
that are used as grouping
factors. All levels of the grouping factor should appear as rownames of the
corresponding matrix. This argument can be used, among others to model
pedigrees and phylogenetic effects. See
vignette("brms_phylogenetics")
for more details.
(Deprecated) Logical; indicates whether the population-level
design matrices should be treated as sparse (defaults to FALSE
). For
design matrices with many zeros, this can considerably reduce required
memory. Sampling speed is currently not improved or even slightly
decreased. It is now recommended to use the sparse
argument of
brmsformula
and related functions.
Indicate if samples from priors should be drawn
additionally to the posterior samples (defaults to "no"
). Among
others, these samples can be used to calculate Bayes factors for point
hypotheses via hypothesis
. Please note that improper priors
are not sampled, including the default improper priors used by brm
.
See set_prior
on how to set (proper) priors. Please also note
that prior samples for the overall intercept are not obtained by default for
technical reasons. See brmsformula
how to obtain prior samples
for the intercept. If sample_prior
is set to "only"
, samples
are drawn solely from the priors ignoring the likelihood, which allows among
others to generate samples from the prior predictive distribution. In this
case, all parameters must have proper priors.
An optional stanvars
object generated by function
stanvar
to define additional variables for use in
Stan's program blocks.
(Deprecated) An optional character string containing
self-defined Stan functions, which will be included in the functions
block of the generated Stan code. It is now recommended to use the
stanvars
argument for this purpose, instead.
Either NULL
or a character string. In the latter
case, the model's Stan code is saved via cat
in a text file
named after the string supplied in save_model
.
logical; If TRUE
, warnings of
the Stan parser will be suppressed.
Other arguments for internal usage only
A character string containing the fully commented Stan code to fit a brms model.
# NOT RUN {
make_stancode(rating ~ treat + period + carry + (1|subject),
data = inhaler, family = "cumulative")
make_stancode(count ~ zAge + zBase * Trt + (1|patient),
data = epilepsy, family = "poisson")
# }
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