Kernel copula and copula density estimator for 2-dimensional data.
kcopula(x, H, hs, gridsize, gridtype, xmin, xmax, supp=3.7, eval.points,
binned=FALSE, bgridsize, w, verbose=FALSE, marginal="kernel")
kcopula.de(x, H, Hfun, hs, gridsize, gridtype, xmin, xmax, supp=3.7,
eval.points, binned=FALSE, bgridsize, w, verbose=FALSE, compute.cont=TRUE,
approx.cont=TRUE, boundary.supp, marginal="kernel", Hfun.pilot="dscalar")
matrix of data values
bandwidth matrix. If these are missing, Hpi.kcde
or
hpi.kcde
or hpi
is called by default.
bandwidth matrix function. If missing, Hpi
is the
default. This is called only when H
is missing.
pilot bandwidth matrix - see Hpi
vector of number of grid points
not yet implemented
vector of minimum/maximum values for grid
effective support for standard normal
matrix of points at which estimate is evaluated
flag for binned estimation. Default is FALSE.
vector of binning grid sizes
vector of weights. Default is a vector of all ones.
flag to print out progress information. Default is FALSE.
"kernel" = kernel cdf or "empirical" = empirical cdf to calculate pseudo-uniform values. Default is "kernel".
flag for computing 1% to 99% probability contour levels. Default is TRUE.
flag for computing approximate probability contour levels. Default is TRUE.
scaled boundary region is [0, boundary.supp*h] or [1-boundary.supp*h,1] on [0,1]. Default is 1.
A kernel copula estimate, output from kcopula
, is an object of
class kcopula
. A kernel copula density estimate, output from
kcopula.de
, is an object of class kde
. These two classes
of objects have the same fields as kcde
and kde
objects
respectively, except for
pseudo-uniform data points
data points - same as input
marginal function used to compute pseudo-uniform data
flag for data points in the boundary region
(kcopula.de
only)
For kernel copula estimates, a transformation approach is used to
account for the boundary effects. If H
is missing, the default
is Hpi.kcde
; if hs
are missing, the default is
hpi.kcde
.
For kernel copula density estimates, for those points which are in
the interior region, the usual kernel density estimator
(kde
) is used. For those points in the boundary region,
a product beta kernel based on the boundary corrected univariate beta
kernel of Chen (1999) is used. If H
is missing, the default
is Hpi.kcde
; if hs
are missing, the default is
hpi
.
The effective support, binning, grid size, grid range parameters are
the same as for kde
.
Duong, T. (2014) Optimal data-based smoothing for non-parametric estimation of copula functions and their densities. Submitted.
Chen, S.X. (1999). Beta kernel estimator for density functions. Computational Statistics & Data Analysis, 31, 131--145.
# NOT RUN {
library(MASS)
data(fgl)
x <- fgl[,c("RI", "Na")]
Chat <- kcopula(x=x)
plot(Chat, disp="persp", thin=3, col="white", border=1)
# }
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