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The kdevine package is no longer actively developed. Consider using
- the kde1d package for marginal estimation,
- the functionsvine()
andvinecop()
from the rvinecopulib package as replacements forkdevine()
andkdevinecop()
.
This package implements a vine copula based kernel density estimator. The estimator does not suffer from the curse of dimensionality and is therefore well suited for high-dimensional applications (see, Nagler and Czado, 2016). The package is built on top of the copula density estimators in kdecopula and let’s you choose from all its implemented methods. The package can handle discrete and categorical data via continuous convolution.
You can install:
install.packages("kdevine")
A detailed description of of all functions and options can be found in the API documentaion. In short, the package provides the following functionality:
Class kdevine
and its methods:
kdevine()
: Multivariate kernel density estimation
based on vine copulas. Implements the estimator of (see, Nagler and
Czado, 2016).
dkdevine()
, rkdevine()
: Density and
simulation functions.
Class kdevinecop
and its methods:
kdevinecop()
: Kernel estimator for the vine copula
density (see, Nagler and Czado, 2016).
dkdevinecop()
, rkdevinecop()
: Density
and simulation functions.
contour.kdevinecop()
: Matrix of contour plots of all
pair-copulas.
Class kde1d
and its methods:
kde1d()
: Univariate kernel density estimation for
bounded and unbounded support.
dke1d()
, pkde1d()
,
rkde1d()
: Density, cdf, and simulation functions.
plot.kde1d()
, lines.kde1d()
: Plots the
estimated density.
Nagler, T., Czado, C. (2016)
Evading the curse of dimensionality in nonparametric density estimation
with simplified vine copulas
Journal of Multivariate Analysis 151, 69-89 [preprint]
Nagler, T., Schellhase, C. and Czado, C. (2017)
Nonparametric estimation of simplified vine copula models: comparison of
methods
Dependence Modeling, 5:99-120 [preprint]
Nagler, T. (2018)
A generic approach to nonparametric function estimation with mixed
data
Statistics & Probability Letters, 137:326–330 [preprint]
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.