dist.Multivariate.t.Precision.Cholesky: Multivariate t Distribution: Precision-Cholesky...

Description Usage Arguments Details Value Author(s) See Also Examples

Description

These functions provide the density and random number generation for the multivariate t distribution, otherwise called the multivariate Student distribution. These functions use the precision and Cholesky parameterization.

Usage

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dmvtpc(x, mu, U, nu=Inf, log=FALSE)
rmvtpc(n=1, mu, U, nu=Inf)

Arguments

x

This is either a vector of length k or a matrix with a number of columns, k, equal to the number of columns in precision matrix Omega.

n

This is the number of random draws.

mu

This is a numeric vector representing the location parameter, mu (the mean vector), of the multivariate distribution (equal to the expected value when df > 1, otherwise represented as nu > 1). It must be of length k, as defined above.

U

This is a k x k upper-triangular of the precision matrix that is Cholesky fator U of precision matrix Omega.

nu

This is the degrees of freedom nu, which must be positive.

log

Logical. If log=TRUE, then the logarithm of the density is returned.

Details

The multivariate t distribution, also called the multivariate Student or multivariate Student t distribution, is a multidimensional extension of the one-dimensional or univariate Student t distribution. A random vector is considered to be multivariate t-distributed if every linear combination of its components has a univariate Student t-distribution.

It is usually parameterized with mean and a covariance matrix, or in Bayesian inference, with mean and a precision matrix, where the precision matrix is the matrix inverse of the covariance matrix. These functions provide the precision parameterization for convenience and familiarity. It is easier to calculate a multivariate t density with the precision parameterization, because a matrix inversion can be avoided. The precision matrix is replaced with an upper-triangular k x k matrix that is Cholesky factor U, as per the chol function for Cholesky decomposition.

This distribution has a mean parameter vector mu of length k, and a k x k precision matrix Omega, which must be positive-definite. When degrees of freedom nu=1, this is the multivariate Cauchy distribution.

In practice, U is fully unconstrained for proposals when its diagonal is log-transformed. The diagonal is exponentiated after a proposal and before other calculations. The Cholesky parameterization is faster than the traditional parameterization.

Value

dmvtpc gives the density and rmvtpc generates random deviates.

Author(s)

Statisticat, LLC. software@bayesian-inference.com

See Also

chol, dwishartc, dmvc, dmvcp, dmvtc, dst, dstp, and dt.

Examples

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library(LaplacesDemon)
x <- seq(-2,4,length=21)
y <- 2*x+10
z <- x+cos(y) 
mu <- c(1,12,2)
Omega <- matrix(c(1,2,0,2,5,0.5,0,0.5,3), 3, 3)
U <- chol(Omega)
nu <- 4
f <- dmvtpc(cbind(x,y,z), mu, U, nu)
X <- rmvtpc(1000, c(0,1,2), U, 5)
joint.density.plot(X[,1], X[,2], color=TRUE)

benmarwick/LaplacesDemon documentation built on May 12, 2019, 12:59 p.m.