In probability theory and statistics, the generalized multivariate log-gamma (G-MVLG) distribution is a multivariate distribution introduced by Demirhan and Hamurkaroglu[1] in 2011. The G-MVLG is a flexible distribution. Skewness and kurtosis are well controlled by the parameters of the distribution. This enables one to control dispersion of the distribution. Because of this property, the distribution is effectively used as a joint prior distribution in Bayesian analysis, especially when the likelihood is not from the location-scale family of distributions such as normal distribution.
Joint probability density function
If
, the joint probability density function (pdf) of
is given as the following:
![{\displaystyle f(y_{1},\dots ,y_{k})=\delta ^{\nu }\sum _{n=0}^{\infty }{\frac {(1-\delta )^{n}\prod _{i=1}^{k}\mu _{i}\lambda _{i}^{-\nu -n}}{[\Gamma (\nu +n)]^{k-1}\Gamma (\nu )n!}}\exp {\bigg \{}(\nu +n)\sum _{i=1}^{k}\mu _{i}y_{i}-\sum _{i=1}^{k}{\frac {1}{\lambda _{i}}}\exp\{\mu _{i}y_{i}\}{\bigg \}},}](./15e5088952d2dde10e21646e07206537500d5853.svg)
where
for
and

is the correlation between
and
,
and
denote determinant and absolute value of inner expression, respectively, and
includes parameters of the distribution.
Properties
Joint moment generating function
The joint moment generating function of G-MVLG distribution is as the following:

Marginal central moments
marginal central moment of
is as the following:
![{\displaystyle {\mu _{i}}'_{r}=\left[{\frac {(\lambda _{i}/\delta )^{t_{i}/\mu _{i}}}{\Gamma (\nu )}}\sum _{k=0}^{r}{\binom {r}{k}}\left[{\frac {\ln(\lambda _{i}/\delta )}{\mu _{i}}}\right]^{r-k}{\frac {\partial ^{k}\Gamma (\nu +t_{i}/\mu _{i})}{\partial t_{i}^{k}}}\right]_{t_{i}=0}.}](./e43dd75b3aa1cbfe74db3c8d5ad4fd2240fd5684.svg)
Marginal expected value and variance
Marginal expected value
is as the following:
![{\displaystyle \operatorname {E} (Y_{i})={\frac {1}{\mu _{i}}}{\big [}\ln(\lambda _{i}/\delta )+\digamma (\nu ){\big ]},}](./11e6bc6abf76edcf2db06c5eb6919eb2208d8f38.svg)
![{\displaystyle \operatorname {var} (Z_{i})=\digamma ^{[1]}(\nu )/(\mu _{i})^{2}}](./9192d07c6ac7eb5d44e3d6892898360c1ea055d0.svg)
where
and
are values of digamma and trigamma functions at
, respectively.
Demirhan and Hamurkaroglu establish a relation between the G-MVLG distribution and the Gumbel distribution (type I extreme value distribution) and gives a multivariate form of the Gumbel distribution, namely the generalized multivariate Gumbel (G-MVGB) distribution. The joint probability density function of
is the following:
![{\displaystyle f(t_{1},\dots ,t_{k};\delta ,\nu ,{\boldsymbol {\lambda }},{\boldsymbol {\mu }}))=\delta ^{\nu }\sum _{n=0}^{\infty }{\frac {(1-\delta )^{n}\prod _{i=1}^{k}\mu _{i}\lambda _{i}^{-\nu -n}}{[\Gamma (\nu +n)]^{k-1}\Gamma (\nu )n!}}\exp {\bigg \{}-(\nu +n)\sum _{i=1}^{k}\mu _{i}t_{i}-\sum _{i=1}^{k}{\frac {1}{\lambda _{i}}}\exp\{-\mu _{i}t_{i}\}{\bigg \}},\quad t_{i}\in \mathbb {R} .}](./289c06ccdcbeef85abf510f35886cd82b2ee26a2.svg)
The Gumbel distribution has a broad range of applications in the field of risk analysis. Therefore, the G-MVGB distribution should be beneficial when it is applied to these types of problems..
References
- ^ Demirhan, Haydar; Hamurkaroglu, Canan (2011). "On a multivariate log-gamma distribution and the use of the distribution in the Bayesian analysis". Journal of Statistical Planning and Inference. 141 (3): 1141–1152. doi:10.1016/j.jspi.2010.09.015.
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Discrete univariate | with finite support | |
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with infinite support | |
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Continuous univariate | supported on a bounded interval | |
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supported on a semi-infinite interval | |
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supported on the whole real line | |
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with support whose type varies | |
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Mixed univariate | |
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Multivariate (joint) | |
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Directional | |
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Degenerate and singular | |
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Families | |
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