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Fast simulation from and evaluation of multivariate Gaussian probability densities.
dmvnormal(x, mu, sigma)rmvnormal(n, mu, sigma)
rmvnormal(n, mu, sigma)
A p times k matrix of quantiles. Each rows correspond to a realization from the density and each column corresponds to a dimension.
p
k
The mean vector of dimension k.
The variance-covariance matrix of dimension k times k.
The number of observations to be simulated.
dmvnormal returns a \(1\) by \(p\) matrix of the probability densities corresponding to each row of x. sigma. Each row corresponds to an observation.
dmvnormal
x
sigma
rmvnormal returns a p by k matrix of observations from a multivariate normal distribution with the given mean mu and covariance
rmvnormal
mu
dmvnormal functions similarly to dmvnorm from the mvtnorm-package and likewise for rmvnormal and rmvnorm.
dmvnorm
mvtnorm
rmvnorm
dmvnorm and rmvnorm in the mvtnorm-package.
# NOT RUN { dmvnormal(x = matrix(rnorm(300), 100, 3), mu = 1:3, sigma = diag(3)) rmvnormal(n = 10, mu = 1:4, sigma = diag(4)) # }
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