
Computes the frequencies of the levels that the categorical variables in a matrix show.
rowFreqs(x, levels = 1:3, divide.by.n = FALSE, affy = FALSE,
includeNA = FALSE, useNN = c("not", "only", "also"), check = TRUE)
a matrix in which each row represents a categorical variable (e.g., a SNP)
and each column an observation, where the variables are assumed to show the
levels specified by levels
. Missing values are allowed in x
.
vector specifying the levels that the categorical variables in x
show. Ignored if affy = TRUE
.
should the numbers of observations showing the respective levels
be divided by the total number of observations, i.e.\ by ncol(x)
? If FALSE
,
these numbers are divided by the number of non-missing values of the respective variable.
Ignored if includeNA = TRUE
.
logical specifying whether the SNPs in x
are coded in the Affymetrix
standard way. If TRUE
, levels = c("AA", "AB", "BB")
and useNN = "also"
will be used (the latter only when includeNA = TRUE
).
should a column be added to the output matrix containing the number of missing values for each variable?
character specifying whether missing values can also be coded by "NN"
.
If useNN = "not"
(default), missing values are assumed to be coded only by NA
.
If "only"
, then missing values are assumed to be coded only by "NN"
(and not
by NA
. If "both"
, both "NN"
and NA
are considered. Ignored
if affy = TRUE
.
should it be checked whether some of the variables show other levels than the one
specified by levels
?
A matrix with the same number of rows as x
containing for each variable the numbers
of observations showing the levels specified by levels
.
# NOT RUN {
# Generate a matrix containing data for 10 categorical
# variables with levels 1, 2, 3.
mat <- matrix(sample(3, 500, TRUE), 10)
rowFreqs(mat)
# leads to the same results as
rowTables(mat) / ncol(mat)
# If mat contains missing values
mat[sample(500, 20)] <- NA
# then
rowFreqs(mat)
# leads to the same result as
rowTables(mat) / rowSums(!is.na(mat))
# }
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