get_priors: Get Prior Definitions of a dynamite Model
Description
Extracts the priors used in the dynamite model as a data frame. You
can then alter the priors by changing the contents of the prior column and
supplying this data frame to dynamite function using the argument
priors. See vignettes for details.
Usage
get_priors(x, ...)
# S3 method for dynamiteformula
get_priors(x, data, time, group = NULL, ...)
# S3 method for dynamitefit
get_priors(x, ...)
Value
A data.frame containing the prior definitions.
Arguments
x
[dynamiteformula or dynamitefit] The model formula or an
existing dynamitefit object. See dynamiteformula() and dynamite().
...
Ignored.
data
[data.frame, tibble::tibble, or data.table::data.table]
The data that contains the variables in the model in long format.
Supported column types are integer, logical, double, and
factor. Columns of type character will be converted to factors.
Unused factor levels will be dropped. The data can contain missing
values which will simply be ignored in the estimation in a case-wise
fashion (per time-point and per channel). Input data is converted to
channel specific matrix representations via stats::model.matrix.lm().
time
[character(1)] A column name of data that denotes the
time index of observations. If this variable is a factor, the integer
representation of its levels are used internally for defining the time
indexing.
group
[character(1)] A column name of data that denotes the
unique groups or NULL corresponding to a scenario without any groups.
If group is NULL, a new column .group is created with constant
value 1L is created indicating that all observations belong to the same
group. In case of name conflicts with data, see the group_var element
of the return object to get the column name of the new variable.
See Also
Model fitting
dynamice(),
dynamite(),
update.dynamitefit()
data.table::setDTthreads(1) # For CRANd <- data.frame(y = rnorm(10), x = 1:10, time = 1:10, id = 1)
get_priors(obs(y ~ x, family = "gaussian"),
data = d, time = "time", group = "id")