| gofCvM {gofCopula} | R Documentation |
The CvM gof test using the empirical copula
Description
gofCvM performs the "CvM" gof test, described in Genest
et al. (2009), for copulae and compares the empirical copula against a
parametric estimate of the copula derived under the null hypothesis. The
margins can be estimated by a bunch of distributions and the time which is
necessary for the estimation can be given. The approximate p-values are
computed with a parametric bootstrap, which computation can be accelerated
by enabling in-build parallel computation. The gof statistics are computed
with the function gofTstat from the package copula. It is
possible to insert datasets of all dimensions above 1 and the possible
copulae are "normal", "t", "clayton", "gumbel",
"frank", "joe", "amh", "galambos",
"huslerReiss", "tawn", "tev", "fgm" and
"plackett". The parameter estimation is performed with pseudo
maximum likelihood method. In case the estimation fails, inversion of
Kendall's tau is used.
Usage
gofCvM(
copula = c("normal", "t", "clayton", "gumbel", "frank", "joe", "amh", "galambos",
"huslerReiss", "tawn", "tev", "fgm", "plackett"),
x,
param = 0.5,
param.est = TRUE,
df = 4,
df.est = TRUE,
margins = "ranks",
flip = 0,
M = 1000,
dispstr = "ex",
lower = NULL,
upper = NULL,
seed.active = NULL,
processes = 1
)
Arguments
copula |
The copula to test for. Possible are |
x |
A matrix containing the data with rows being observations and columns being variables. |
param |
The copula parameter to use, if it shall not be estimated. |
param.est |
Shall be either |
df |
Degrees of freedom, if not meant to be estimated. Only necessary
if tested for |
df.est |
Indicates if |
margins |
Specifies which estimation method for the margins shall be
used. The default is |
flip |
The control parameter to flip the copula by 90, 180, 270 degrees clockwise. Only applicable for bivariate copula. Default is 0 and possible inputs are 0, 90, 180, 270 and NULL. |
M |
Number of bootstrapping loops. |
dispstr |
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
|
lower |
Lower bound for the maximum likelihood estimation of the copula
parameter. The constraint is also active in the bootstrapping procedure. The
constraint is not active when a switch to inversion of Kendall's tau is
necessary. Default |
upper |
Upper bound for the maximum likelihood estimation of the copula
parameter. The constraint is also active in the bootstrapping procedure. The
constraint is not active when a switch to inversion of Kendall's tau is
necessary. Default |
seed.active |
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 |
processes |
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. |
Details
With the pseudo observations U_{ij} for i = 1, \dots,n, j = 1, \dots,d and \mathbf{u} \in
[0,1]^d is the empirical copula given by C_n(\mathbf{u})
= \frac{1}{n} \sum_{i = 1}^n \mathbf{I}(U_{i1} \leq u_1, \dots, U_{id} \leq
u_d). It shall be
tested the H_0 hypothesis:
C \in \mathcal{C}_0
with \mathcal{C}_0 as the true class of copulae under
H_0. The test statistic T is then defined as
T = n \int_{[0,1]^d} \{ C_n(\mathbf{u}) - C_{\theta_n}(\mathbf{u})
\}^2 d C_n(\mathbf{u})
with C_{\theta_n}(\mathbf{u}) the estimation of C
under the H_0.
The approximate p-value is computed by the formula,
\sum_{b=1}^M \mathbf{I}(|T_b| \geq |T|) / M,
where T and T_b denote the test statistic and the
bootstrapped test statistc, respectively.
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.
Value
An object of the class gofCOP with the components
method |
a character which informs about the performed analysis |
copula |
the copula tested for |
margins |
the method used to estimate the margin distribution. |
param.margins |
the parameters of
the estimated margin distributions. Only applicable if the margins were not
specified as |
theta |
dependence parameters of the copulae |
df |
the degrees of freedem of the copula. Only applicable for t-copula. |
res.tests |
a matrix with the p-values and test statistics of the hybrid and the individual tests |
References
Rosenblatt, M. (1952). Remarks on a Multivariate Transformation.
The Annals of Mathematical Statistics 23, 3, 470-472.
Hering,
C. and Hofert, M. (2014). Goodness-of-fit tests for Archimedean copulas in
high dimensions. Innovations in Quantitative Risk Management.
Marius Hofert, Ivan Kojadinovic, Martin Maechler, Jun Yan (2014). copula:
Multivariate Dependence with Copulas. R package version 0.999-15..
https://cran.r-project.org/package=copula
Examples
data(IndexReturns2D)
gofCvM("normal", IndexReturns2D, M = 10)