A
distribution is a Gamma Distribution with
and
, where
is the
number of Degrees of Freedom. If
have Normal
Independent distributions with Mean 0 and Variance 1, then
 |
(1) |
is distributed as
with
Degrees of Freedom. If
are independently
distributed according to a
distribution with
,
, ...,
Degrees of Freedom, then
 |
(2) |
is distributed according to
with
Degrees of Freedom.
 |
(3) |
The cumulative distribution function is then
where
is a Regularized Gamma Function. The Confidence Intervals can be
found by finding the value of
for which
equals a given value. The Moment-Generating Function of the
distribution is
so
The
th Moment about zero for a distribution with
Degrees of Freedom is
 |
(13) |
and the moments about the Mean are
The
th Cumulant is
 |
(17) |
The Moment-Generating Function is
As
,
 |
(19) |
so for large
,
 |
(20) |
is approximately a Gaussian Distribution with Mean
and Variance
. Fisher
showed that
 |
(21) |
is an improved estimate for moderate
. Wilson and Hilferty showed that
 |
(22) |
is a nearly Gaussian Distribution with Mean
and Variance
.
In a Gaussian Distribution,
 |
(23) |
let
 |
(24) |
Then
 |
(25) |
so
 |
(26) |
But
 |
(27) |
so
 |
(28) |
This is a
distribution with
, since
 |
(29) |
If
are independent variates with a Normal Distribution having Means
and
Variances
for
, ...,
, then
 |
(30) |
is a Gamma Distribution variate with
,
 |
(31) |
The noncentral chi-squared distribution is given by
 |
(32) |
where
 |
(33) |
is the Confluent Hypergeometric Limit Function and
is the Gamma Function. The Mean,
Variance, Skewness, and Kurtosis are
See also Chi Distribution, Snedecor's F-Distribution
References
Abramowitz, M. and Stegun, C. A. (Eds.).
Handbook of Mathematical Functions with Formulas, Graphs, and Mathematical Tables, 9th printing.
New York: Dover, pp. 940-943, 1972.
Beyer, W. H. CRC Standard Mathematical Tables, 28th ed. Boca Raton, FL: CRC Press, p. 535, 1987.
Press, W. H.; Flannery, B. P.; Teukolsky, S. A.; and Vetterling, W. T.
``Incomplete Gamma Function, Error Function, Chi-Square Probability Function, Cumulative Poisson Function.'' §6.2 in
Numerical Recipes in FORTRAN: The Art of Scientific Computing, 2nd ed. Cambridge, England: Cambridge
University Press, pp. 209-214, 1992.
Spiegel, M. R. Theory and Problems of Probability and Statistics. New York: McGraw-Hill, pp. 115-116, 1992.
© 1996-9 Eric W. Weisstein
1999-05-26