This function is intended to be used as a graphical diagnostic tool for fitted multivariate generalized hyperbolic distributions. An array of graphics is created and qq-plots are drawn into the diagonal part of the graphics array. The upper part of the graphics matrix shows scatter plots whereas the lower part shows 2-dimensional histogramms.
# S4 method for ghyp
pairs(x, data = ghyp.data(x), main = "'ghyp' pairwise plot",
nbins = 30, qq = TRUE, gaussian = TRUE,
hist.col = c("white", topo.colors(100)),
spline.points = 150, root.tol = .Machine$double.eps^0.5,
rel.tol = root.tol, abs.tol = root.tol^1.5, ...)
Usually a fitted multivariate generalized hyperbolic distribution
of class mle.ghyp
. Alternatively
an object of class ghyp
and a data matrix.
An object coercible to a matrix
.
The title of the plot.
The number of bins of the 2-d histogram.
If TRUE
qq-plots are drawn.
If TRUE
qq-plots with the normal distribution are plotted.
A vector of colors of the 2-d histgram.
The number of support points when computing the quantiles used by the
qq-plot. Passed to qqghyp
.
The tolerance of the quantiles. Passed to uniroot
via qqghyp
.
The tolerance of the quantiles. Passed to integrate
via qqghyp
.
The tolerance of the quantiles. Passed to integrate
via qqghyp
.
David Luethi
pairs
, fit.ghypmv
,
qqghyp
data(smi.stocks)
fitted.smi.stocks <- fit.NIGmv(data = smi.stocks[1:200, ])
pairs(fitted.smi.stocks)
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