## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = FALSE, comment = NULL ) options(cli.unicode = FALSE) options(crayon.enabled = TRUE) ansi_aware_handler = function(x, options) { paste0( "
",
fansi::sgr_to_html(x = x, warn = FALSE, term.cap = "256"),
""
)
}
knitr::knit_hooks$set(
output = ansi_aware_handler,
message = ansi_aware_handler,
warning = ansi_aware_handler,
error = ansi_aware_handler
)
knitr::opts_chunk$set(
collapse = TRUE,
# comment = "#>",
comment = NA,
# fig.path = "man/figures/README-",
out.width = "100%"
)
library(tabstats)
## ----eval = FALSE-------------------------------------------------------------
# install.packages("tabstats")
## ----eval = FALSE-------------------------------------------------------------
# # install.packages("pak")
# pak::pak("joshuamarie/tabstats")
# ## devtools::install_github("joshuamarie/tabstats")
## -----------------------------------------------------------------------------
head(mtcars[, 1:5], 5)
## -----------------------------------------------------------------------------
table_default(head(mtcars[, 1:5], 5))
## -----------------------------------------------------------------------------
df = data.frame(
Statistic = c("N", "Mean", "SD", "Min", "Max"),
Value = c("100", "3.45", "1.20", "1.00", "6.00")
)
table_summary(
df,
title = "Descriptive Statistics",
header = TRUE
)
## -----------------------------------------------------------------------------
corr_matrix(cor(mtcars[, 1:4]), method = "Pearson")
## -----------------------------------------------------------------------------
cor_mat =
iris |>
rstatix::cor_test(Sepal.Width, Sepal.Length, Petal.Length) |>
dplyr::mutate(
var1,
var2,
cor = format(cor, digits = 2),
statistic = format(statistic, digits = 2),
conf_int = paste0(
"[",
format(conf.low, digits = 2),
", ",
format(conf.high, digits = 2),
"]"
),
.keep = "unused"
)
cor_mat |>
with({
corr_matrix(
new_corr_data(
var1 = var1,
var2 = var2,
corr = cor,
statistic = statistic,
pval = p,
conf_int = conf_int
),
title = "Pearson Correlation Matrix"
)
})
## -----------------------------------------------------------------------------
m = matrix(
c(10, 20, 30, 40),
nrow = 2,
dimnames = list(
c("A", "B"),
c("X", "Y")
)
)
cross_table(m, percentage = "all")
## -----------------------------------------------------------------------------
table_summary(
df,
title = "Descriptive Statistics",
header = TRUE,
style = sm_style(
left_col = "blue_bold",
right_col = "green",
title = "bold",
sep = ": "
)
)
## -----------------------------------------------------------------------------
table_summary(
df,
title = "Descriptive Statistics",
header = TRUE,
style = sm_style(
left_col = \(x) cli::col_red(cli::style_bold(x)),
right_col = \(x) cli::col_cyan(x),
title = "bold",
sep = ": "
)
)
## -----------------------------------------------------------------------------
cor_mat |>
with({
corr_matrix(
new_corr_data(
var1 = var1,
var2 = var2,
corr = cor,
statistic = statistic,
pval = p,
conf_int = conf_int
),
title = "Pearson Correlation Matrix",
style = cm_style(
pval = function(x) {
x_num = as.numeric(x)
if (is.na(x_num) || x_num > 0.05) {
cli::style_italic(x)
} else if (x_num > 0.01) {
cli::col_red(x)
} else {
cli::style_bold("<0.001")
}
}
)
)
})