Random draws from a Wishart (or Inverse-Wishart) distribution.
Generates a random samples from a Wishart distribution defined as W(Ψ, ν), or an Inverse-Wishart distribution defined as W^{-1}(Ψ, ν).
rwish(n, Psi, nu, inv = FALSE)
n |
number of samples to draw. |
Psi |
scale matrix. |
nu |
degrees of freedom. |
inv |
logical. Setting |
Setting inv = TRUE
replaces Ψ by Psi^{-1} and inverts the output random matrices,
such that they are being generated from an Inverse-Wishart W^{-1}(Ψ, ν) distribution.
Returns an array of Wishart (or Inverse-Wishart) draws of size c(nrow(Psi),ncol(Psi),n)
.
d <- 4 # number of dimensions nu <- 7 # degrees of freedom Psi <- crossprod(matrix(rnorm(d^2), d, d)) # scale matrix n <- 1e4 Sigma <- rwish(n, Psi, nu) # for any vector a, X = (a' Sigma a) has a const * chi^2 distribution a <- rnorm(d) X <- apply(Sigma, 3, function(S) crossprod(a, S %*% a)) const <- a %*% Psi %*% a hist(X, breaks = 100, freq = FALSE, main = parse(text = "\"Histogram of \"*X==a*minute*Sigma*a"), xlab = parse(text = "X==a*minute*Sigma*a")) curve(dchisq(x/const, df = nu)/const, from = min(X), to = max(X), col = "red", add = TRUE)
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