| cohen_d_borenstein | R Documentation |
Calculates Cohen's d, its standard error, and confidence interval, as illustrated in the Borenstein et al. (2009, ISBN: 978-0-470-05724-7).
cohen_d_borenstein( sample_1 = NULL, sample_2 = NULL, data = NULL, iv_name = NULL, dv_name = NULL, direction = "2_minus_1", ci_range = 0.95, output_type = "all", initial_value = 0 )
sample_1 |
a vector of values in the first of two samples |
sample_2 |
a vector of values in the second of two samples |
data |
a data object (a data frame or a data.table) |
iv_name |
name of the independent variable |
dv_name |
name of the dependent variable |
direction |
If |
ci_range |
range of the confidence interval for Cohen's d (default = 0.95) |
output_type |
If |
initial_value |
initial value of the noncentrality parameter for optimization (default = 0). Adjust this value if confidence interval results look strange. |
cohen_d_borenstein(sample_1 = 1:10, sample_2 = 3:12) cohen_d_borenstein( data = mtcars, iv_name = "vs", dv_name = "mpg", ci_range = 0.99) sample_dt <- data.table::data.table(iris)[Species != "setosa"] cohen_d_borenstein( data = sample_dt, iv_name = "Species", dv_name = "Petal.Width", initial_value = 10)