[dpr]mvss: multivariate subgaussian stable
distributions[pr]mvlogis: multivariate logistic distributionsThe goal of mvpd is to use product distribution theory
to allow the numerical calculations of specific scale mixtures of the
multivariate normal distribution. The multivariate subgaussian stable
distribution is the product of the square root of a univariate positive
stable distribution and the multivariate normal distribution (see Nolan
(2013)).
Generate 1000 draws from a random bivariate subgaussian stable distribution with alpha=1.71 and plot.
library(mvpd)
set.seed(2)
## basic example code
biv <- rmvss(n=1e3, alpha=1.71, Q=matrix(c(10,7.5,7.5,10),2))
head(biv)
#> [,1] [,2]
#> [1,] 3.17465324 4.122869
#> [2,] -3.26707008 -1.366920
#> [3,] -5.82800100 1.831774
#> [4,] -2.02463359 -3.749701
#> [5,] 0.01294963 3.042960
#> [6,] 1.73029594 3.812420
plot(biv); abline(h=0,v=0)
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