Difference between revisions of "Fisher z-distribution"
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A continuous probability distribution on the real line with density | A continuous probability distribution on the real line with density | ||
| − | + | $$ | |
| + | f ( x) = | ||
| + | $$ | ||
| + | |||
| + | $$ | ||
| + | = \ | ||
| + | 2m _ {1} ^ {m _ {1} /2 } m _ {2} ^ {m _ {2} /2 } | ||
| + | |||
| + | \frac{\Gamma ( ( m _ {1} + m _ {2} )/2) e ^ {m _ {1} x | ||
| + | } }{\Gamma ( {m _ {1} /2 } ) \Gamma ( {m _ {2} /2 } ) ( m _ {1} e ^ {2x} + m _ {2} ) } | ||
| + | ^ {( m _ {1} + m _ {2} )/2 } . | ||
| + | $$ | ||
| − | + | The parameters $ m _ {1} , m _ {2} \geq 1 $ | |
| + | are called the degrees of freedom. The characteristic function has the form | ||
| − | + | $$ | |
| + | \phi ( t) = \ | ||
| + | \left ( | ||
| + | \frac{m _ {2} }{m _ {1} } | ||
| + | \right ) ^ { {{it } /2 } } | ||
| − | + | \frac{\Gamma ( {( m _ {1} + it)/2 } ) \Gamma ( {( m _ {2} - it)/2 } ) }{\Gamma ( { {m _ {1} } /2 } ) \Gamma ( { {m _ {2} } /2 } ) } | |
| + | . | ||
| + | $$ | ||
| − | The mathematical expectation and the variance are equal to | + | The mathematical expectation and the variance are equal to $ ( 1/m _ {1} - 1/m _ {2} )/2 $ |
| + | and $ ( 1/m _ {1} + 1/m _ {2} )/2 $, | ||
| + | respectively. | ||
| − | If the random variable | + | If the random variable $ F $ |
| + | has the [[Fisher-F-distribution|Fisher $ F $- | ||
| + | distribution]] with $ m _ {1} $ | ||
| + | and $ m _ {2} $ | ||
| + | degrees of freedom, then the quantity $ z = ( \mathop{\rm log} F)/2 $ | ||
| + | has the Fisher $ z $- | ||
| + | distribution with $ m _ {1} $ | ||
| + | and $ m _ {2} $ | ||
| + | degrees of freedom. Along with the Fisher $ F $- | ||
| + | distribution, known as the distribution of the [[Dispersion proportion|dispersion proportion]], the Fisher $ z $- | ||
| + | distribution was originally introduced in the [[analysis of variance]] by R.A. Fisher (1924). His intention was that the $ z $- | ||
| + | distribution should be the basic distribution for testing statistical hypotheses in the analysis of variance. The Fisher $ z $- | ||
| + | distribution was tabulated at the same time, and the first research was concerned with the statistic $ z $, | ||
| + | although in modern mathematical statistics one uses the simpler statistic $ F $. | ||
====References==== | ====References==== | ||
<table><TR><TD valign="top">[1]</TD> <TD valign="top"> R.A. Fisher, "On a distribution yielding the error functions of several well-known statistics" , ''Proc. Internat. Congress mathematicians (Toronto 1924)'' , '''2''' , Univ. Toronto Press (1928) pp. 805–813</TD></TR></table> | <table><TR><TD valign="top">[1]</TD> <TD valign="top"> R.A. Fisher, "On a distribution yielding the error functions of several well-known statistics" , ''Proc. Internat. Congress mathematicians (Toronto 1924)'' , '''2''' , Univ. Toronto Press (1928) pp. 805–813</TD></TR></table> | ||
| − | |||
| − | |||
====Comments==== | ====Comments==== | ||
The dispersion proportion is also called the variance ratio. | The dispersion proportion is also called the variance ratio. | ||
Revision as of 19:39, 5 June 2020
A continuous probability distribution on the real line with density
$$ f ( x) = $$
$$ = \ 2m _ {1} ^ {m _ {1} /2 } m _ {2} ^ {m _ {2} /2 } \frac{\Gamma ( ( m _ {1} + m _ {2} )/2) e ^ {m _ {1} x } }{\Gamma ( {m _ {1} /2 } ) \Gamma ( {m _ {2} /2 } ) ( m _ {1} e ^ {2x} + m _ {2} ) } ^ {( m _ {1} + m _ {2} )/2 } . $$
The parameters $ m _ {1} , m _ {2} \geq 1 $ are called the degrees of freedom. The characteristic function has the form
$$ \phi ( t) = \ \left ( \frac{m _ {2} }{m _ {1} } \right ) ^ { {{it } /2 } } \frac{\Gamma ( {( m _ {1} + it)/2 } ) \Gamma ( {( m _ {2} - it)/2 } ) }{\Gamma ( { {m _ {1} } /2 } ) \Gamma ( { {m _ {2} } /2 } ) } . $$
The mathematical expectation and the variance are equal to $ ( 1/m _ {1} - 1/m _ {2} )/2 $ and $ ( 1/m _ {1} + 1/m _ {2} )/2 $, respectively.
If the random variable $ F $ has the Fisher $ F $- distribution with $ m _ {1} $ and $ m _ {2} $ degrees of freedom, then the quantity $ z = ( \mathop{\rm log} F)/2 $ has the Fisher $ z $- distribution with $ m _ {1} $ and $ m _ {2} $ degrees of freedom. Along with the Fisher $ F $- distribution, known as the distribution of the dispersion proportion, the Fisher $ z $- distribution was originally introduced in the analysis of variance by R.A. Fisher (1924). His intention was that the $ z $- distribution should be the basic distribution for testing statistical hypotheses in the analysis of variance. The Fisher $ z $- distribution was tabulated at the same time, and the first research was concerned with the statistic $ z $, although in modern mathematical statistics one uses the simpler statistic $ F $.
References
| [1] | R.A. Fisher, "On a distribution yielding the error functions of several well-known statistics" , Proc. Internat. Congress mathematicians (Toronto 1924) , 2 , Univ. Toronto Press (1928) pp. 805–813 |
Comments
The dispersion proportion is also called the variance ratio.
Fisher z-distribution. Encyclopedia of Mathematics. URL: http://encyclopediaofmath.org/index.php?title=Fisher_z-distribution&oldid=43081