angdensity: Empirical-Likelihood Based Inference for the Angular Density
Description
This function computes empirical-likelihood based estimators for the
angular distribution function of a bivariate extreme value
distribution.
Usage
angdensity(Y, tau = 0.95, nu, grid = seq(0.01, 0.99, length = 2^8),
method = "euclidean", raw = TRUE)
Value
h
the estimate angular density values.
grid
grid with coordinates of the points where the angular
density is estimated.
w
pseudo-angles.
nu
concentration parameter of the Beta-kernel.
Y
raw data.
The plot method depicts the smooth angular density.
Arguments
Y
data frame with two columns from which the estimate is to
be computed.
tau
value used to threshold the data; by default it is set as
the 0.95 quantile of the pseudo-radius.
nu
concentration parameter of beta distribution which
controls the amount of smoothing.
grid
grid with coordinates of the points where the angular
density is estimated; by default grid = seq(0.01, 0.99, length
= 2^8).
method
a character string setting the method to be used. By
default method = "euclidean", the other option being
method = "empirical". See details.
raw
logical; if TRUE, Y will be converted to
unit Fréchet scale. If FALSE, Y will be understood as
already in unit Fréchet scale.
Author
Miguel de Carvalho
Details
The smooth angular density was introduced in by de Carvalho et al
(2013). method = "euclidean" implements the version of the
method based on Euclidean likelihood weights, whereas method =
"empirical" uses Empirical likelihood weights.
References
de Carvalho, M., Oumow, B., Segers, J. and Warchol, M. (2013) A
Euclidean likelihood estimator for bivariate tail dependence.
Communications in Statistics---Theory and Methods, 42,
1176--1192.
## de Carvalho et al (2013, Fig. 7)data(beatenberg)
attach(beatenberg)
fit <- angdensity(beatenberg, tau = 0.98, nu = 163, raw = FALSE)
plot(fit)
rug(fit$w)