gof
computes for a given dataset and based on the choices of the user different tests for different copulae. If copulae are given, all the implemented tests for those copulae are calculated. If tests are given, all the implemented copulae for every test are used. If both copulae and tests are given, all possible combinations are calculated.
gof(x, priority = "tests", copula = NULL, tests = NULL, customTests = NULL,
param = 0.5, param.est = TRUE, df = 4, df.est = TRUE, margins = "ranks",
M = 1000, MJ = 100, dispstr = "ex", m = 1, delta.J = 0.5,
nodes.Integration = 12, seed.active = NULL, processes = 1)
A matrix containing the data.
A character string which is either "tests"
or "copula"
. "tests"
indicates that all implemented tests are performed for all copulae which the tests share. These are e.g. "normal"
and "clayton"
. If "copula"
is chosen, the tests which are able to test for "normal"
, "t"
, "frank"
, "gumbel"
and "clayton"
are performed. If one of the arguments tests
or copula
is not NULL
, then priority
doesn't affect the choice of the copulae and tests.
A character vector which indicates the copula to test for. Possible are "normal"
, "t"
, "clayton"
, "gumbel"
and "frank"
.
A character vector which indicates the tests to use. Possible choices are the individual tests implemented in this package.
A character vector which indicates the customized test to use, if any. The test has to be loaded into the workspace. Currently the function containing the test has to have 2 arguments, the first one for the dataset and the second one for the copula to test for. The arguments have to be named "x" and "copula" respectively.
The copulae parameters to use for each test, if it shall not be estimated.
Shall be either TRUE
or FALSE
. TRUE
means that param
will be estimated.
The degrees of freedom, if not meant to be estimated. Only necessary if tested for "t"
-copula. For the "gofPIOSTn"
test the entry is limited to 60 degrees of freedom for computational reasons.
Indicates if df
shall be estimated. Has to be either FALSE
or TRUE
, where TRUE
means that it will be estimated. For the "gofPIOSTn"
test the estimate is limited to 60 degrees of freedom for computational reasons.
Specifies which estimation method for the margins shall be used. The default is "ranks"
, which is the standard approach to convert data in such a case. Alternatively the following distributions can be specified: "beta"
, "cauchy"
, Chi-squared ("chisq"
), "f"
, "gamma"
, Log normal ("lnorm"
), Normal ("norm"
), "t"
, "weibull"
, Exponential ("exp"
). Input can be either one method, e.g. "ranks"
, which will be used for estimation of all data sequences. Also an individual method for each margin can be specified, e.g. c("ranks", "norm", "t")
for 3 data sequences. If one does not want to estimate the margins, set it to NULL
.
The amount of bootstrap rounds to be performed by each test. Default is 1000.
Just for the test gofKernel. Size of bootstrapping sample.
A character string specifying the type of the symmetric positive definite matrix characterizing the elliptical copula. Implemented structures are "ex" for exchangeable and "un" for unstructured, see package copula
.
Length of blocks. Only necessary if the test gofPIOSTn
is part of tests
.
Scaling parameter for the matrix of smoothing parameters. Only necessary if the test gofKernel
is part of tests
.
Number of knots of the bivariate Gauss-Legendre quadrature. Only necessary if the test gofKernel
is part of tests
.
Has to be either an integer or a vector of M+1 integers. If an integer, then the seeds for the bootstrapping procedure will be simulated. If M+1 seeds are provided, then these seeds are used in the bootstrapping procedure. Defaults to NULL
, then R
generates the seeds from the computer runtime. Controlling the seeds is useful for reproducibility of a simulation study to compare the power of the tests or for reproducibility of an empirical study.
The number of parallel processes which are performed to speed up the bootstrapping. Shouldn't be higher than the number of logical processors. Please see the details.
A list containing several objects of class
gofCOP with the following components for each copulae
a character which informs about the performed analysis
the copula tested for
the method used to estimate the margin distribution.
the parameters of the estimated margin distributions. Only applicable if the margins were not specified as "ranks"
or NULL
.
dependence parameters of the copulae
the degrees of freedem of the copula. Only applicable for t-copula.
a matrix with the p-values and test statistics of the hybrid and the individual tests
If a character vector is given for the argument copula
and nothing for tests
, then all tests are performed for which the given copulae are implemented. If tests
contains a character vector of tests and copula = NULL
, then this tests will be performed for all implemented copulae. If character vectors are given for copula
and tests
, then the tests are performed with the given copulae. If tests = NULL
and copula = NULL
, then the argument priority
catches in and defines the procedure.
For small values of M
, initializing the parallelisation via processes
does not make sense. The registration of the parallel processes increases the computation time. Please consider to enable parallelisation just for high values of M
.
Note that this function does not display warning()
messages. Due to the large amount of tests run at once, the messages are not tracable to the situation when they appeared. Hence they are omitted for this function.
# NOT RUN {
data(IndexReturns2D)
gof(IndexReturns2D, priority = "tests", copula = "normal",
tests = c("gofRosenblattSnB", "gofRosenblattSnC"), M = 10)
# }
Run the code above in your browser using DataLab