| row_sums | R Documentation |
row_sums() and row_means() compute row sums or means
for at least n valid values per row. The functions are designed
to work nicely within a pipe-workflow and allow select-helpers
for selecting variables.
row_sums(x, ...)
## Default S3 method:
row_sums(x, ..., n, var = "rowsums", append = TRUE)
## S3 method for class 'mids'
row_sums(x, ..., var = "rowsums", append = TRUE)
row_means(x, ...)
total_mean(x, ...)
## Default S3 method:
row_means(x, ..., n, var = "rowmeans", append = TRUE)
## S3 method for class 'mids'
row_means(x, ..., var = "rowmeans", append = TRUE)
x |
A vector or data frame. |
... |
Optional, unquoted names of variables that should be selected for
further processing. Required, if |
n |
May either be
If a row's sum of valid (i.e. non- |
var |
Name of new the variable with the row sums or means. |
append |
Logical, if |
For n, must be a numeric value from 0 to ncol(x). If
a row in x has at least n non-missing values, the
row mean or sum is returned. If n is a non-integer value from 0 to 1,
n is considered to indicate the proportion of necessary non-missing
values per row. E.g., if n = .75, a row must have at least ncol(x) * n
non-missing values for the row mean or sum to be calculated. See 'Examples'.
For row_sums(), a data frame with a new variable: the row sums from
x; for row_means(), a data frame with a new variable: the row
means from x. If append = FALSE, only the new variable
with row sums resp. row means is returned. total_mean() returns
the mean of all values from all specified columns in a data frame.
data(efc)
efc %>% row_sums(c82cop1:c90cop9, n = 3, append = FALSE)
library(dplyr)
row_sums(efc, contains("cop"), n = 2, append = FALSE)
dat <- data.frame(
c1 = c(1,2,NA,4),
c2 = c(NA,2,NA,5),
c3 = c(NA,4,NA,NA),
c4 = c(2,3,7,8),
c5 = c(1,7,5,3)
)
dat
row_means(dat, n = 4)
row_sums(dat, n = 4)
row_means(dat, c1:c4, n = 4)
# at least 40% non-missing
row_means(dat, c1:c4, n = .4)
row_sums(dat, c1:c4, n = .4)
# total mean of all values in the data frame
total_mean(dat)
# create sum-score of COPE-Index, and append to data
efc %>%
select(c82cop1:c90cop9) %>%
row_sums(n = 1)
# if data frame has only one column, this column is returned
row_sums(dat[, 1, drop = FALSE], n = 0)
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