plot_bar_category | R Documentation |
The plot_bar_category() to visualizes the distribution of categorical data by level or relationship to specific numerical data by level.
plot_bar_category(.data, ...)
## S3 method for class 'data.frame'
plot_bar_category(
.data,
...,
top = 10,
add_character = TRUE,
title = "Frequency by levels of category",
each = FALSE,
typographic = TRUE,
base_family = NULL
)
## S3 method for class 'grouped_df'
plot_bar_category(
.data,
...,
top = 10,
add_character = TRUE,
title = "Frequency by levels of category",
each = FALSE,
typographic = TRUE,
base_family = NULL
)
.data |
a data.frame or a |
... |
one or more unquoted expressions separated by commas. You can treat variable names like they are positions. Positive values select variables; negative values to drop variables. If the first expression is negative, plot_bar_category() will automatically start with all variables. These arguments are automatically quoted and evaluated in a context where column names represent column positions. They support unquoting and splicing. |
top |
an integer. Specifies the upper top rank to extract. Default is 10. |
add_character |
logical. Decide whether to include text variables in the diagnosis of categorical data. The default value is TRUE, which also includes character variables. |
title |
character. a main title for the plot. |
each |
logical. Specifies whether to draw multiple plots on one screen. The default is FALSE, which draws multiple plots on one screen. |
typographic |
logical. Whether to apply focuses on typographic elements to ggplot2 visualization. The default is TRUE. if TRUE provides a base theme that focuses on typographic elements using hrbrthemes package. |
base_family |
character. The name of the base font family to use for the visualization. If not specified, the font defined in dlookr is applied. (See details) |
The distribution of categorical variables can be understood by comparing the frequency of each level. The frequency table helps with this. As a visualization method, a bar graph can help you understand the distribution of categorical data more easily than a frequency table.
The base_family is selected from "Roboto Condensed", "Liberation Sans Narrow", "NanumSquare", "Noto Sans Korean". If you want to use a different font, use it after loading the Google font with import_google_font().
# Generate data for the example
heartfailure2 <- heartfailure
heartfailure2[sample(seq(NROW(heartfailure2)), 20), "platelets"] <- NA
heartfailure2[sample(seq(NROW(heartfailure2)), 5), "smoking"] <- NA
set.seed(123)
heartfailure2$test <- sample(LETTERS[1:15], 299, replace = TRUE)
heartfailure2$test[1:30] <- NA
# Visualization of all numerical variables
plot_bar_category(heartfailure2)
# Select the variable to diagnose
plot_bar_category(heartfailure2, "test", "smoking")
# Visualize the each plots
# Visualize just 7 levels of top frequency
# Visualize only factor, not character
plot_bar_category(heartfailure2, each = TRUE, top = 7, add_character = FALSE)
# Not allow typographic argument
plot_bar_category(heartfailure2, typographic = FALSE)
# Using pipes ---------------------------------
library(dplyr)
# Using groupd_df ------------------------------
heartfailure2 %>%
group_by(death_event) %>%
plot_bar_category(top = 5)
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