Create missing completely at random (MCAR) values in a data frame or a matrix
delete_MCAR(
ds,
p,
cols_mis = seq_len(ncol(ds)),
stochastic = FALSE,
p_overall = FALSE,
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.
Logical; see details.
Logical; see details.
Deprecated, use cols_mis instead.
An object of the same class as ds with missing values.
This function creates missing completely at random (MCAR) values in
the dataset ds.
The proportion of missing values is specified with p.
The columns in which missing values are created can be set via cols_mis.
If cols_mis is not specified, then missing values are created in
every column.
The probability for missing values is controlled by p. If p is
a single number, then the overall probability for a value to be missing will
be p in all columns of cols_mis. (Internally p will be
replicated to a vector of the same length as cols_mis. So, all
p[i] in the following sections will be equal to the given single
number p.) Otherwise, p must be of the same length as
cols_mis. In this case, the overall probability for a value to be
missing will be p[i] in the column cols_mis[i].
If stochastic = FALSE and p_overall = FALSE (the default), then
exactly round(nrow(ds) * p[i]) values will be set NA in column
cols_mis[i]. If stochastic = FALSE and p_overall =
TRUE, then p must be of length one and exactly round(nrow(ds) *
p * length(cols_mis)) values will be set NA (over all columns in
cols_mis). This can result in a proportion of missing values in every
miss_col unequal to p, but the proportion of missing values in
all columns together will be close to p.
If stochastic = TRUE, then each value in column cols_mis[i]
has the probability p[i] to be missing. In this case, the number of
missing values in cols_mis[i] is a random variable with a binomial
distribution B(nrow(ds), p[i]). This can (and will most
of the time) lead to more or less missing values than
round(nrow(ds) * p[i]) in each column. If stochastic = TRUE,
then the argument p_overall is ignored because it is superfluous.
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
# NOT RUN {
ds <- data.frame(X = 1:20, Y = 101:120)
delete_MCAR(ds, 0.2)
# }
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