The release version on CRAN:
install.packages("CondCopulas")
The development version from GitHub, using the devtools
package:
# install.packages("devtools")
devtools::install_github("AlexisDerumigny/CondCopulas")
If you have any questions or suggestions, feel free to open an issue.
In this first part, we are interesting in the inference of the conditional copula of a random vector $X$ given the pointwise conditioning $Z = z$, where $Z$ is another random vector and $z$ is a fixed value.
These functions perform a test of the "simplifying assumption" that the conditional copula $C_{X | Z = z}$ does not depend on the value of $z$.
simpA.NP
: in a purely nonparametric framework
simpA.param
: assuming that the conditional copula
belongs to a parametric family of copulas for all values of the conditioning variable
simpA.kendallReg
: test of the simplifying assumption based on the constancy
of the conditional Kendall's tau assuming that it satisfies a regression-like equation
These functions estimate the conditional copula $C_{X | Z = z}$ in different frameworks.
estimateNPCondCopula
: nonparametric estimation of conditional copulas.
estimateParCondCopula
: parametric estimation of conditional copulas.
estimateParCondCopula_ZIJ
: parametric estimation of conditional copulas
using (already computed) conditional pseudo-observations.
In this part, we assume that the dimension of $X$ is $2$, i.e. $X = (X_1, X_2)$. Instead of estimating the conditional copula $C_{X | Z = z}$ which is an infinite-dimensional object for every value of $z$, it is possible to estimate the conditional Kendall's tau (CKT) $\tau_{1,2|Z=z}$ which is a real number in $[-1, 1]$ for every value of $z$.
To estimate the conditional Kendall's tau, the package provides a general wrapper function:
CKT.estimate
: that can be used for any method of estimating conditional Kendall's tau.
Each of these methods is detailed below and has its own function.CKT.kernel
: use kernel smoothing to estimate the conditional Kendall's tau.
The bandwidth can be given by the user or determined by cross-validation.CKT.kendallReg.fit
: fit Kendall's regression, a regression-like method for the estimation of conditional Kendall's tau.
CKT.kendallReg.predict
: predict the conditional Kendall's tau
given new values $z$ of the covariates.
using tree:
CKT.fit.tree
: for fitting a tree-based model for the conditional Kendall's tauCKT.predict.tree
: for prediction of new conditional Kendall's taus using random forests:
CKT.fit.randomForest
: for fitting a random forest-based model for the conditional Kendall's tauCKT.predict.randomForest
: for prediction of new conditional Kendall's taus using nearest neighbors:
CKT.predict.kNN
: for several numbers of nearest neighborsusing neural networks:
CKT.fit.nNets
: for fitting a neural networks-based model for the conditional Kendall's tauCKT.predict.nNets
: for prediction of new conditional Kendall's taususing GLM:
CKT.fit.GLM
: for fitting a GLM-like model for the conditional Kendall's tauCKT.predict.GLM
: for prediction of new conditional Kendall's tausCKT.hCV.Kfolds
: for K-fold cross-validation choice of the bandwidth for kernel smoothing
CKT.hCV.l1out
: for leave-one-out cross-validation choice of the bandwidth for kernel smoothing
CKT.KendallReg.LambdaCV
: cross-validated choice of the penalization parameter lambda
CKT.adaptkNN
: for a (local) aggregation of the number of nearest neighbors based on Lepski's method
In this second part, we are interesting in the inference of the conditional copula of a random vector $X$ given the discrete conditioning $Z \in A$, where $Z$ is another random vector and $A$ is a Borel subset of possible values of $Z$.
These functions perform a test of the hypothesis that the conditional copula $C_{X | Z \in A}$ does not depend on the value of $A$ for different choices of the conditioning set $A$.
bCond.simpA.param
: test of this hypothesis, assuming that the copula belongs to a parametric family
bCond.simpA.CKT
: test of the hypothesis that conditional Kendall's tau are equal
over all the different conditioning subsets.
bCond.pobs
: computation of the conditional pseudo-observations
$F_{1|A(i)}(X_{i,1} | A(i))$ and $F_{2|A(i)}(X_{i,2} | A(i))$ for every $i=1, \dots, n$.
bCond.estParamCopula
: estimation of a conditional parametric copula,
i.e. for every set $A$, a conditional parameter $\theta(A)$ is estimated.
bCond.treeCKT
: construction of binary tree whose leaves corresponds to the most relevant conditioning subsets
(in the sense of maximizing the difference between estimated conditional Kendall's taus).Derumigny, A., & Fermanian, J. D. (2017). About tests of the “simplifying” assumption for conditional copulas. Dependence Modeling, 5(1), 154-197. pdf
Derumigny, A., & Fermanian, J. D. (2019). A classification point-of-view about conditional Kendall’s tau. Computational Statistics & Data Analysis, 135, 70-94. pdf
Derumigny, A., & Fermanian, J. D. (2019). On kernel-based estimation of conditional Kendall’s tau: finite-distance bounds and asymptotic behavior. Dependence Modeling, 7(1), 292-321. pdf
Derumigny, A., & Fermanian, J. D. (2020). On Kendall’s regression. Journal of Multivariate Analysis, 178, 104610. pdf
Derumigny, A., & Fermanian, J. D. (2022). Conditional empirical copula processes and generalized dependence measures. Electronic Journal of Statistics, 16(2), 5692-5719. pdf
Derumigny, A., Fermanian, J. D., & Min, A. (2022). Testing for equality between conditional copulas given discretized conditioning events. Canadian Journal of Statistics. pdf
van der Spek, R., & Derumigny, A. (2022). Fast estimation of Kendall’s Tau and conditional Kendall’s Tau matrices under structural assumptions. arXiv:2204.03285.
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