| LRExp.test {Renext} | R Documentation |
Likelihood Ratio test of exponentiality vs. GPD
Description
Likelihood Ratio test of exponentiality vs. GPD.
Usage
LRExp.test(x,
alternative = c("lomax", "GPD", "gpd", "maxlo"),
method = c("num", "sim", "asymp"),
nSamp = 15000,
simW = FALSE)
Arguments
x |
Numeric vector of positive sample values. For the POT context this should be the vector of excesses over the threshold. |
alternative |
Character string describing the alternative distribution. |
method |
Method used to compute the |
nSamp |
Number of samples for a simulation, if |
simW |
Logical. If this is set to |
Details
The Lomax and maxlo alternatives correspond to a GPD alternative with
positive shape parameter \xi > 0 (Lomax) and GPD with
\xi < 0 (maxlo).
The asymptotic distribution of the Likelihood-ratio statistic
is known. For the GPD alternative, this is a chi-square distribution
with one df. For the Lomax alternative, this is the distribution of a
product BC where B and C are two independent random
variables following a Bernoulli distribution with probability
parameter p = 0.5 and a chi-square distribution with one df.
When
methodis"num", a numerical approximation of the distribution is used. This method is not unlike that used by Kozubowski et al., but a different approximation is used. However, ifxhas a lengthn > 500, the method is turned to"asymp".When
methodis"sim",nSampsamples of the exponential distribution with the same size asxare drawn and the LR statistic is computed for each sample. Thep-value is simply the estimated probability that a simulated LR is greater than the observed LR.Finally when
methodis"asymp", the asymptotic distribution is used.
Value
A list of results with elements statistic, p.value
and method. Other elements are
alternative |
Character describing the alternative hypothesis. |
W |
If |
Note
For the Lomax alternative, the distribution of the test
statistic has mixed type: it can take any positive value as
well as the value 0 with a positive probability mass. The
probability mass is the probability that the ML estimate of the GPD
shape parameter is negative, and a good approximation of it is
provided by the pGreenwood1 function. Note that this
probability converges to its limit 0.5 very slowly, which
suggests that the asymptotic distribution provides poor results for
medium sample sizes, say < 100.
Similarly for a maxlo alternative, the distribution of the test
statistic has mixed type: it can take any positive value as
well as the value 0 with a positive probability mass
approximately given by 1 -pGreenwood1(n) where n
is the sample size.
Author(s)
Yves Deville
References
T.J. Kozubowski, A. K. Panorska, F. Qeadan, A. Gershunov and D. Rominger (2009) "Testing Exponentiality Versus Pareto Distribution via Likelihood Ratio" Comm. Statist. Simulation Comput. 38(1), pp. 118-139.
The approximation method used is described in the Renext Computing Details report.
See Also
Lomax, Maxlo, GPD for the
alternatives used here.
Examples
set.seed(1234)
x <- rGPD(n = 50, loc = 0, scale = 1, shape = 0.1)
LRExp.test(x, method = "num")$p.value
LRExp.test(x, method = "asymp")$p.value
## Not run:
## requires much time
LRExp.test(x, method = "sim")$p.value
## End(Not run)