Plot observed values versus m sets of imputed values for two specified numeric variables using ggplot2.
Usage
plot_2fac(
imputation.list,
var.fac1,
var.fac2,
original.data,
true.data = NULL,
color.pal = NULL
)
Arguments
- imputation.list
A list of
m
imputed datasets returned by themixgb
imputer- var.fac1
A factor variable
- var.fac2
A factor variable
- original.data
The original data with missing data
- true.data
The true data without missing values. This is generally unknown in practice. If the true data is known (e.g., in cases where it is generated by simulation), it can be specified in this argument. The output will then have an extra panel called
MaskedTrue
, which shows values originally observed but intentionally made missing.- color.pal
A vector of hex color codes for the observed and m sets of imputed values panels. The vector should be of length
m+1
. Default: NULL (use "gray40" for the observed panel, use ggplot2 default colors for other panels.)
Examples
# create some extra missing values in factor variables "HSSEX" and "DMARETHN"
nhanes3_NA <- createNA(nhanes3, var.names = c("HSSEX", "DMARETHN"), p = 0.1)
# obtain m multiply datasets
params <- list(max_depth = 3, subsample = 0.8, nthread = 2)
imputed.data <- mixgb(data = nhanes3_NA, m = 3, xgb.params = params, nrounds = 30)
# plot the multiply imputed values for variables "HSSEX" versus "DMARETHN"
plot_2fac(
imputation.list = imputed.data, var.fac1 = "DMARETHN", var.fac2 = "HSSEX",
original.data = nhanes3_NA
)