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Template:Probability distribution In probability theory and statistics, the normal-inverse-gamma distribution (or Gaussian-inverse-gamma distribution) is a four-parameter family of multivariate continuous probability distributions. It is the conjugate prior of a normal distribution with unknown mean and variance.

Definition

Suppose

x|σ2,μ,λN(μ,σ2/λ)

has a normal distribution with mean μ and variance σ2/λ, where

σ2|α,βΓ1(α,β)

has an inverse gamma distribution. Then (x,σ2) has a normal-inverse-gamma distribution, denoted as

(x,σ2)N-Γ1(μ,λ,α,β).

(NIG is also used instead of N-Γ1.)

In a multivariate form of the normal-inverse-gamma distribution, x|σ2,μ,V1N(μ,σ2V) -- that is, conditional on σ2, x is a k×1 random vector that follows the multivariate normal distribution with mean μ and covariance σ2V -- while, as in the univariate case, σ2|α,βΓ1(α,β).

Characterization

Probability density function

f(x,σ2|μ,λ,α,β)=λσ2πβαΓ(α)(1σ2)α+1exp(2β+λ(xμ)22σ2)

For the multivariate form where x is a k×1 random vector,

f(x,σ2|μ,V1,α,β)=|V|1/2(2π)k/2βαΓ(α)(1σ2)k/2+α+1exp(2β+(xμ)V1(xμ)2σ2).

where |V| is the determinant of the k×k matrix V. Note how this last equation reduces to the first form if k=1 so that x,V,μ are scalars.

Alternative parameterization

It is also possible to let γ=1/λ in which case the pdf becomes

f(x,σ2|μ,γ,α,β)=1σ2πγβαΓ(α)(1σ2)α+1exp(2γβ+(xμ)22γσ2)

In the multivariate form, the corresponding change would be to regard the covariance matrix V instead of its inverse V1 as a parameter.

Cumulative distribution function

Properties

Marginal distributions

Given (x,σ2)N-Γ1(μ,λ,α,β). as above, σ2 by itself follows an inverse gamma distribution:

σ2Γ1(α,β)

while βαλ(xμ) follows a t distribution with 2α degrees of freedom.

In the multivariate case, the marginal distribution of x is a multivariate t distribution:

xt2α(μ,βαV)

Summation

Scaling

Exponential family

Information entropy

Kullback-Leibler divergence

Maximum likelihood estimation

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Posterior distribution of the parameters

See the articles on normal-gamma distribution and conjugate prior.

Interpretation of the parameters

See the articles on normal-gamma distribution and conjugate prior.

Generating normal-inverse-gamma random variates

Generation of random variates is straightforward:

  1. Sample σ2 from an inverse gamma distribution with parameters α and β
  2. Sample x from a normal distribution with mean μ and variance σ2/λ

Related distributions

References

  • Denison, David G. T. ; Holmes, Christopher C.; Mallick, Bani K.; Smith, Adrian F. M. (2002) Bayesian Methods for Nonlinear Classification and Regression, Wiley. ISBN 0471490369
  • Koch, Karl-Rudolf (2007) Introduction to Bayesian Statistics (2nd Edition), Springer. ISBN 354072723X

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