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Normal-Exponential-Gamma Parameters
μ ∈ R — mean (location )
k
>
0
{\displaystyle k>0}
shape
θ
>
0
{\displaystyle \theta >0}
scale Support
x
∈
(
−
∞
,
∞
)
{\displaystyle x\in (-\infty ,\infty )}
PDF
∝
exp
(
(
x
−
μ
)
2
4
θ
2
)
D
−
2
k
−
1
(
|
x
−
μ
|
θ
)
{\displaystyle \propto \exp {\left({\frac {(x-\mu )^{2}}{4\theta ^{2}}}\right)}D_{-2k-1}\left({\frac {|x-\mu |}{\theta }}\right)}
Mean
μ
{\displaystyle \mu }
Median
μ
{\displaystyle \mu }
Mode
μ
{\displaystyle \mu }
Variance
θ
2
k
−
1
{\displaystyle {\frac {\theta ^{2}}{k-1}}}
for
k
>
1
{\displaystyle k>1}
Skewness
0
In probability theory and statistics , the normal-exponential-gamma distribution (sometimes called the NEG distribution) is a three-parameter family of continuous probability distributions . It has a location parameter
μ
{\displaystyle \mu }
, scale parameter
θ
{\displaystyle \theta }
and a shape parameter
k
{\displaystyle k}
.
Probability density function [ edit ]
The probability density function (pdf) of the normal-exponential-gamma distribution is proportional to
f
(
x
;
μ
,
k
,
θ
)
∝
exp
(
(
x
−
μ
)
2
4
θ
2
)
D
−
2
k
−
1
(
|
x
−
μ
|
θ
)
{\displaystyle f(x;\mu ,k,\theta )\propto \exp {\left({\frac {(x-\mu )^{2}}{4\theta ^{2}}}\right)}D_{-2k-1}\left({\frac {|x-\mu |}{\theta }}\right)}
,
where D is a parabolic cylinder function .[ 1]
As for the Laplace distribution , the pdf of the NEG distribution can be expressed as a mixture of normal distributions ,
f
(
x
;
μ
,
k
,
θ
)
=
∫
0
∞
∫
0
∞
N
(
x
|
μ
,
σ
2
)
E
x
p
(
σ
2
|
ψ
)
G
a
m
m
a
(
ψ
|
k
,
1
/
θ
2
)
d
σ
2
d
ψ
,
{\displaystyle f(x;\mu ,k,\theta )=\int _{0}^{\infty }\int _{0}^{\infty }\ \mathrm {N} (x|\mu ,\sigma ^{2})\mathrm {Exp} (\sigma ^{2}|\psi )\mathrm {Gamma} (\psi |k,1/\theta ^{2})\,d\sigma ^{2}\,d\psi ,}
where, in this notation, the distribution-names should be interpreted as meaning the density functions of those distributions.
Within this scale mixture , the scale's mixing distribution (an exponential with a gamma -distributed rate) actually is a Lomax distribution .
The distribution has heavy tails and a sharp peak[ 1] at
μ
{\displaystyle \mu }
and, because of this, it has applications in variable selection .
Discrete univariate
with finite support with infinite support
Continuous univariate
supported on a bounded interval supported on a semi-infinite interval supported on the whole real line with support whose type varies
Mixed univariate
Multivariate (joint) Directional Degenerate and singular Families