This function calculates representative values of a vector, like minimum/maximum values or lower, median and upper quartile etc., which can be used for numeric vectors to plot adjusted predictions at these representative values.
values_at(x, values = "meansd")representative_values(x, values = "meansd")
A numeric vector, representing the required values from x, like
minimum/maximum value or mean and +/- 1 SD. If x is missing, a function,
pre-programmed with n and length is returned. See examples.
A numeric vector.
Character vector, naming a pattern for which representative values should be calculcated.
"minmax": (default) minimum and maximum values (lower and upper bounds)
of x.
"meansd": uses the mean value of x as well as one standard deviation
below and above mean value to plot the effect of the moderator on the
independent variable.
"zeromax": is similar to the "minmax" option, however, 0 is always
used as minimum value for x. This may be useful for predictors that
don't have an empirical zero-value, but absence of moderation should be
simulated by using 0 as minimum.
"fivenum": calculates and uses the Tukey's five number summary
(minimum, lower-hinge, median, upper-hinge, maximum) of x. This is
equivalent to "quartiles".
"threenum": calculates a three number summary (lower-hinge, median, and
upper-hinge) of x. This is equivalent to "quartiles2".
"terciles": calculates and uses the terciles (lower and upper third) of
x, including minimum and maximum value.
"terciles2": calculates and uses the terciles (lower and upper third)
of x, excluding minimum and maximum value.
an option to compute a range of percentiles is also possible, using
"percentile", followed by the percentage of the range. For example,
"percentile95" will calculate the 95% range of x.
"all": uses all values of x.
data(efc)
values_at(efc$c12hour)
values_at(efc$c12hour, "quartiles2")
mean_sd <- values_at(values = "meansd")
mean_sd(efc$c12hour)
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