desc_stat | R Documentation |
desc_stat()
Computes the most used measures of central tendency,
position, and dispersion.
desc_wider()
is useful to put the variables in columns and grouping
variables in rows. The table is filled with a statistic chosen with the
argument stat
.
desc_stat( .data = NULL, ..., by = NULL, stats = "main", hist = FALSE, level = 0.95, digits = 4, na.rm = FALSE, verbose = TRUE, plot_theme = theme_metan() ) desc_wider(.data, which)
.data |
The data to be analyzed. It can be a data frame (possible with
grouped data passed from |
... |
A single variable name or a comma-separated list of unquoted
variables names. If no variable is informed, all the numeric variables from
|
by |
One variable (factor) to compute the function by. It is a shortcut
to |
stats |
The descriptive statistics to show. This is used to filter the
output after computation. Defaults to
Use a names to select the statistics. For example, |
hist |
Logical argument defaults to |
level |
The confidence level to compute the confidence interval of mean. Defaults to 0.95. |
digits |
The number of significant digits. |
na.rm |
Logical. Should missing values be removed? Defaults to |
verbose |
Logical argument. If |
plot_theme |
The graphical theme of the plot. Default is
|
which |
A statistic to fill the table. |
desc_stats()
returns a tibble with the statistics in the columns and
variables (with possible grouping factors) in rows.
desc_wider()
returns a tibble with variables in columns and grouping
factors in rows.
Tiago Olivoto tiagoolivoto@gmail.com
library(metan) #===============================================================# # Example 1: main statistics (coefficient of variation, maximum,# # mean, median, minimum, sample standard deviation, standard # # error and confidence interval of the mean) for all numeric # # variables in data # #===============================================================# desc_stat(data_ge2) #===============================================================# #Example 2: robust statistics using a numeric vector as input # # data #===============================================================# vect <- data_ge2$TKW desc_stat(vect, stats = "robust") #===============================================================# # Example 3: Select specific statistics. In this example, NAs # # are removed before analysis with a warning message # #===============================================================# desc_stat(c(12, 13, 19, 21, 8, NA, 23, NA), stats = c('mean, se, cv, n, n.valid'), na.rm = TRUE) #===============================================================# # Example 4: Select specific variables and compute statistics by# # levels of a factor variable (GEN) # #===============================================================# stats <- desc_stat(data_ge2, EP, EL, EH, ED, PH, CD, by = GEN) stats # To get a 'wide' format with the maximum values for all variables desc_wider(stats, max) #===============================================================# # Example 5: Compute all statistics for all numeric variables # # by two or more factors. Note that group_by() was used to pass # # grouped data to the function desc_stat() # #===============================================================# data_ge2 %>% group_by(ENV, GEN) %>% desc_stat()
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