Create missing not at random (MNAR) values using a censoring mechanism in a data frame or a matrix
delete_MNAR_censoring(
ds,
p,
cols_mis,
where = "lower",
sorting = TRUE,
miss_cols
)A data frame or matrix in which missing values will be created.
A numeric vector with length one or equal to length cols_mis;
the probability that a value is missing.
A vector of column names or indices of columns in which missing values will be created.
Controls where missing values are created; one of "lower", "upper" or "both" (see details).
Logical; should sorting be used or a quantile as a threshold.
Deprecated, use cols_mis instead.
An object of the same class as ds with missing values.
The functions delete_MNAR_censoring and delete_MAR_censoring are sisters. The only difference between these two functions is the column that controls the generation of missing values. In delete_MAR_censoring a separate column cols_ctrl[i] controls the generation of missing values in cols_mis[i]. In contrast, in delete_MNAR_censoring the generation of missing values in cols_mis[i] is controlled by cols_mis[i] itself. All other aspects are identical for both functions. Therefore, further details can be found in delete_MAR_censoring.
Santos, M. S., Pereira, R. C., Costa, A. F., Soares, J. P., Santos, J., & Abreu, P. H. (2019). Generating Synthetic Missing Data: A Review by Missing Mechanism. IEEE Access, 7, 11651-11667
Other functions to create MNAR:
delete_MNAR_1_to_x(),
delete_MNAR_one_group(),
delete_MNAR_rank()
# NOT RUN {
ds <- data.frame(X = 1:20, Y = 101:120)
delete_MNAR_censoring(ds, 0.2, "X")
# }
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