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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