A general type of statistical Distribution which is related to the Beta Distribution and arises naturally in
processes for which the waiting times between Poisson Distributed events are relevant. Gamma
distributions have two free parameters, labeled
and
, a few of which are illustrated above.
Given a Poisson Distribution with a rate of change
, the Distribution Function
giving the
waiting times until the
th change is
for
. The probability function
is then obtained by differentiating
,
Now let
and define
to be the time between changes. Then the above equation
can be written
 |
(3) |
The Characteristic Function describing this distribution is
 |
(4) |
and the Moment-Generating Function is
In order to find the Moments of the distribution, let
so
and the logarithmic Moment-Generating function is
The Mean, Variance, Skewness, and Kurtosis are then
The gamma distribution is closely related to other statistical distributions.
If
,
, ...,
are independent random variates with a gamma distribution having parameters
,
, ...,
, then
is distributed as gamma with
parameters
Also, if
and
are independent random variates with a gamma distribution having parameters
and
, then
is a Beta Distribution variate with parameters
. Both can be derived as follows.
 |
(18) |
Let
 |
(19) |
 |
(20) |
then the Jacobian is
 |
(21) |
so
 |
(22) |
The sum
therefore has the distribution
 |
(24) |
which is a gamma distribution, and the ratio
has the distribution
where
is the Beta Function, which is a Beta Distribution.
If
and
are gamma variates with parameters
and
, the
is a variate with a Beta
Prime Distribution with parameters
and
. Let
 |
(26) |
then the Jacobian is
 |
(27) |
so
 |
(28) |
The ratio
therefore has the distribution
 |
(30) |
which is a Beta Prime Distribution with parameters
.
The ``standard form'' of the gamma distribution is given by letting
, so
and
so the Moments about 0 are
 |
(32) |
where
is the Pochhammer Symbol. The Moments about
are then
The Moment-Generating Function is
 |
(37) |
and the Cumulant-Generating Function is
 |
(38) |
so the Cumulants are
 |
(39) |
If
is a Normal variate with Mean
and Standard Deviation
,
then
 |
(40) |
is a standard gamma variate with parameter
.
See also Beta Distribution, Chi-Squared Distribution
References
Beyer, W. H. CRC Standard Mathematical Tables, 28th ed. Boca Raton, FL: CRC Press, p. 534, 1987.
© 1996-9 Eric W. Weisstein
1999-05-25