Calculates a dominance effect size statistic for two-sample paired data with confidence intervals by bootstrap
pairedSampleDominance(
formula = NULL,
data = NULL,
x = NULL,
y = NULL,
ci = FALSE,
conf = 0.95,
type = "perc",
R = 1000,
histogram = FALSE,
digits = 3,
na.rm = TRUE,
...
)
A small data frame consisting of descriptive statistics, the dominance statistic, and potentially the lower and upper confidence limits.
A formula indicating the response variable and the independent variable. e.g. y ~ group.
The data frame to use.
If no formula is given, the response variable for one group.
The response variable for the other group.
If TRUE
, returns confidence intervals by bootstrap.
May be slow.
The level for the confidence interval.
The type of confidence interval to use.
Can be any of "norm
", "basic
",
"perc
", or "bca
".
Passed to boot.ci
.
The number of replications to use for bootstrap.
If TRUE
, produces a histogram of bootstrapped values.
The number of significant digits in the output.
If TRUE
, removes NA
values from
the input vectors or data frame.
Additional arguments.
Salvatore Mangiafico, mangiafico@njaes.rutgers.edu
The calculated Dominance
statistic is simply
the proportion of observations in x
greater the paired
observations in y
,
minus
the proportion of observations in x
less than the paired
observations in y
It will range from -1 to 1, with
and 1 indicating that
the all the observations in x
are greater than
the paired observations in y
,
and -1 indicating that
the all the observations in y
are greater than
the paired observations in x
.
The input should include either formula
and data
;
or x
, and y
. If there are more than two groups,
only the first two groups are used.
This statistic is appropriate for truly ordinal data, and could be considered an effect size statistic for a two-sample paired sign test.
Ordered category data need to re-coded as
numeric, e.g. as with as.numeric(Ordinal.variable)
.
When the statistic is close to 1 or close to -1, or with small sample size, the confidence intervals determined by this method may not be reliable, or the procedure may fail.
VDA is the analogous statistic, converted to a probability,
ranging from 0 to 1, specifically,
VDA = Dominance / 2 + 0.5
oneSampleDominance
,
vda
,
cliffDelta
data(Pooh)
Time.1 = Pooh$Likert[Pooh$Time == 1]
Time.2 = Pooh$Likert[Pooh$Time == 2]
library(DescTools)
SignTest(x = Time.1, y = Time.2)
pairedSampleDominance(x = Time.1, y = Time.2)
pairedSampleDominance(Likert ~ Time, data=Pooh)
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