blocks
argumentThis helper function generates a list of the type needed for
blocks
argument in the [=mice]{mice}
function.
make.blocks(data, partition = c("scatter", "collect", "void"),
calltype = "type")
A data.frame
, character vector with
variable names, or list
with variable names.
A character vector of length 1 used to assign
variables to blocks when data
is a data.frame
. Value
"scatter"
(default) will assign each column to it own
block. Value "collect"
assigns all variables to one block,
whereas "void"
produces an empty list.
A character vector of length(block)
elements
that indicates how the imputation model is specified. If
calltype = "type"
(the default), the underlying imputation
model is called by means of the type
argument. The
type
argument for block h
is equivalent to
row h
in the predictorMatrix
.
The alternative is calltype = "formula"
. This will pass
formulas[[h]]
to the underlying imputation
function for block h
, together with the current data.
The calltype
of a block is set automatically during
initialization. Where a choice is possible, calltype
"formula"
is preferred over "type"
since this is
more flexible and extendable. However, what precisely happens
depends also on the capabilities of the imputation
function that is called.
A named list of character vectors with variables names.
Choices "scatter"
and "collect"
represent to two
extreme scenarios for assigning variables to imputation blocks.
Use "scatter"
to create an imputation model based on
fully conditionally specification (FCS). Use "collect"
to
gather all variables to be imputed by a joint model (JM).
Scenario's in-between these two extremes represent
hybrid imputation models that combine FCS and JM.
Any variable not listed in will not be imputed.
Specification "void"
represents the extreme scenario that
skips imputation of all variables.
A variable may be a member of multiple blocks. The variable will be re-imputed in each block, so the final imputations for variable will come from the last block that was executed. This scenario may be useful where the same complete background factors appear in multiple imputation blocks.
A variable may appear multiple times within a given block. If a univariate imputation model is applied to such a block, then the variable is re-imputed each time as it appears in the block.
# NOT RUN {
make.blocks(nhanes)
make.blocks(c("age", "sex", "edu"))
# }
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