Inverse-gamma distribution
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Probability density function![]() |
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Cumulative distribution function![]() |
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Parameters | α > 0 shape (real) β > 0 scale (real) |
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Support | ![]() |
Probability density function (pdf) | ![]() |
Cumulative distribution function (cdf) | ![]() |
Mean | ![]() |
Median | |
Mode | ![]() |
Variance | ![]() |
Skewness | ![]() |
Excess kurtosis | ![]() |
Entropy | ![]() |
Moment-generating function (mgf) | ![]() |
Characteristic function | ![]() |
In probability theory and statistics, the inverse gamma distribution is a two-parameter family of continuous probability distributions that represents the reciprocal of the gamma distribution.
Contents |
[edit] Characterization
[edit] Probability density function
The inverse gamma distribution's probability density function is defined over the support x > 0
with shape parameter α and scale parameter β.
[edit] Cumulative distribution function
The cumulative distribution function is
where the numerator is the upper incomplete gamma function and the denominator is the gamma function.
[edit] Related distributions
- If
and
and
then
is an inverse-chi-square distribution
- If
, then
is a Gamma distribution
[edit] Derivation from Gamma distribution
The pdf of the gamma distribution is
and define the transformation then the resulting transformation is
Replacing k with α; θ − 1 with β; and y with x results in the inverse-gamma pdf shown above