This function calculates confidence intervals for a population quantile. By default, distribution-free confidence intervals based on the binomial distribution are formed, see Hahn and Meeker. Alternatively, bootstrap confidence intervals are available.
ci_quantile(
x,
q = 0.5,
probs = c(0.025, 0.975),
type = c("binomial", "bootstrap"),
boot_type = c("bca", "perc", "norm", "basic"),
R = 9999,
seed = NULL,
...
)
A numeric vector.
A single probability value determining the quantile. Set to 0.5 for the median (the default).
Error probabilites. The default c(0.025, 0.975) gives a symmetric 95% confidence interval.
Type of confidence interval. One of "binomial" (default), or "bootstrap".
Type of bootstrap confidence interval ("bca", "perc", "norm", "basic"). Only used for type = "bootstrap"
.
The number of bootstrap resamples. Only used for type = "bootstrap"
.
An integer random seed. Only used for type = "bootstrap"
.
Further arguments passed to boot::boot
.
A list with class cint
containing these components:
parameter
: The parameter in question.
interval
: The confidence interval for the parameter.
estimate
: The estimate for the parameter.
probs
: A vector of error probabilities.
type
: The type of the interval.
info
: An additional description text for the interval.
Bootstrap confidence intervals are calculated by the package "boot", see references. The default bootstrap type is "bca" (bias-corrected accelerated) as it enjoys the property of being second order accurate as well as transformation respecting (see Efron, p. 188).
Hahn, G. and Meeker, W (1991). Statistical Intervals. Wiley 1991.
Efron, B. and Tibshirani R. J. (1994). An Introduction to the Bootstrap. Chapman & Hall/CRC.
Canty, A and Ripley B. (2019). boot: Bootstrap R (S-Plus) Functions.
# NOT RUN {
x <- 1:100
ci_quantile(x)
ci_quantile(x, q = 0.25)
ci_quantile(x, q = 0.25, type = "bootstrap", R = 999)
# }
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