Samiksha Jaiswal (Editor)

Inverted Dirichlet distribution

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In statistics, the inverted Dirichlet distribution is a multivariate generalization of the beta prime distribution, and is related to the Dirichlet distribution. It was first described by Tiao and Cuttman in 1965.

The distribution has a density function given by

p ( x 1 , , x k ) = Γ ( ν 1 + + ν k + 1 ) j = 1 k + 1 Γ ( ν j ) x 1 ν 1 1 x k ν k 1 × ( 1 + i = 1 k x i ) j = 1 k + 1 ν j , x i > 0.

The distribution has applications in statistical regression and arises naturally when considering the multivariate Student distribution. It can be characterized by its moment generating function:

E [ i = 1 k x i q i ] = Γ ( ν k + 1 j = 1 k ν j ) Γ ( ν n + 1 ) j = 1 k Γ ( ν j + q j ) Γ ( ν j )

provided that q j > ν j , 1 j k and ν n + 1 > q 1 + + q k .

The inverted Dirichlet distribution is conjugate to the negative multinomial distribution if a generalized form of odds ratio is used instead of the categories' probabilities.

T. Bdiri et al. have developed several models that use the inverted Dirichlet distribution to represent and model non-Gaussian data. They have introduced finite and infinite mixture models of inverted Dirichlet distributions using the Newton–Raphson technique to estimate the parameters and the Dirichlet process to model infinite mixtures. T. Bdiri et al. have also used the inverted Dirichlet distribution to propose an approach to generate Support Vector Machine kernels basing on Bayesian inference and another approach to establish hierarchical clustering.

References

Inverted Dirichlet distribution Wikipedia