ADcens | R Documentation |
Function ADcens
computes the Anderson-Darling test statistic and p-value for complete
and right-censored data against eight possible distributions using bootstrapping.
## Default S3 method:
ADcens(times, cens = rep(1, length(times)),
distr = c("exponential", "gumbel", "weibull", "normal",
"lognormal", "logistic", "loglogistic", "beta"),
betaLimits = c(0, 1), igumb = c(10, 10), BS = 999,
params0 = list(shape = NULL, shape2 = NULL,
location = NULL, scale = NULL), tol = 1e-04, ...)
## S3 method for class 'formula'
ADcens(formula, data, ...)
times |
Numeric vector of times until the event of interest. |
cens |
Status indicator (1, exact time; 0, right-censored time). If not provided, all times are assumed to be exact. |
distr |
A string specifying the name of the distribution to be studied.
The possible distributions are the exponential ( |
betaLimits |
Two-components vector with the lower and upper bounds of the Beta distribution. This argument is only required, if the beta distribution is considered. |
igumb |
Two-components vector with the initial values for the estimation of the Gumbel distribution parameters. |
BS |
Number of bootstrap samples. |
params0 |
List specifying the parameters of the theoretical distribution.
By default, parameters are set to |
tol |
Precision of survival times. |
formula |
A formula with a numeric vector as response (which assumes no censoring) or |
data |
Data frame for variables in |
... |
Additional arguments. |
The parameter estimation is acomplished with the fitdistcens
function of the fitdistrplus package.
To avoid long computation times due to bootstrapping, an alternative
with complete data is the function ad.test
of the goftest package.
The precision of the survival times is important mainly in the data generation step of the bootstrap samples.
ADcens
returns an object of class "ADcens"
.
An object of class "ADcens"
is a list containing the following components:
Distribution |
Null distribution. |
Hypothesis |
Parameters under the null hypothesis (if |
Test |
Vector containing the value of the Anderson-Darling statistic ( |
Estimates |
Vector with the maximum likelihood estimates of the parameters of the distribution under study. |
StdErrors |
Vector containing the estimated standard errors. |
aic |
The Akaike information criterion. |
bic |
The so-called BIC or SBC (Schwarz Bayesian criterion). |
BS |
The number of bootstrap samples used. |
If the amount of data is large, the execution time of the
function can be elevated. The parameter BS
can
limit the number of random censored samples generated and
reduce the execution time.
K. Langohr, M. Besalú, M. Francisco, A. Garcia, G. Gómez.
G. Marsaglia and J. Marsaglia. Evaluating the Aderson-Darling Distrinution. In: Journal os Statistical Software, Articles, 9 (2) (2004), 1-5.
Function ad.test
(Package goftest) for complete data and
function gofcens for statistics and p-value of the Kolmogorov-Smirnov,
Cramér von-Mises and Anderson-Darling together for right-censored data.
# Complete data
set.seed(123)
ADcens(times = rweibull(100, 12, scale = 4), distr = "weibull",
BS = 199)
print(ADcens(times = rweibull(100, 12, scale = 4), distr = "exponential",
BS = 199), outp = "table", print.BIC = FALSE, print.infoBoot = TRUE)
## Not run:
# Censored data
set.seed(123)
colonsamp <- colon[sample(nrow(colon), 300), ]
ADcens(Surv(time, status) ~ 1, colonsamp, distr = "normal")
## End(Not run)
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