In this article we are going to address the issue of Noncentral beta distribution, which has been the subject of debate and analysis in various areas. Noncentral beta distribution is a topic that arouses great interest and has generated different positions among experts and the general public. Throughout this article, we will thoroughly explore the relevant aspects related to Noncentral beta distribution, as well as the implications it has in various contexts. We will focus on analyzing different approaches, recent research and perspectives that will help to more fully understand the importance and relevance of Noncentral beta distribution today.
The noncentral beta distribution (Type I) is the distribution of the ratio
where is a
noncentral chi-squared random variable with degrees of freedom m and noncentrality parameter , and is a central chi-squared random variable with degrees of freedom n, independent of .[1]
In this case,
A Type II noncentral beta distribution is the distribution
of the ratio
where the noncentral chi-squared variable is in the denominator only.[1] If follows
the type II distribution, then follows a type I distribution.
where λ is the noncentrality parameter, P(.) is the Poisson(λ/2) probability mass function, \alpha=m/2 and \beta=n/2 are shape parameters, and is the incomplete beta function. That is,
where is the beta function, and are the shape parameters, and is the noncentrality parameter. The density of Y is the same as that of 1-X with the degrees of freedom reversed.[1]
Related distributions
Transformations
If , then follows a noncentral F-distribution with degrees of freedom, and non-centrality parameter .
If follows a noncentral F-distribution with numerator degrees of freedom and denominator degrees of freedom, then
follows a noncentral Beta distribution:
.
This is derived from making a straightforward transformation.
Special cases
When , the noncentral beta distribution is equivalent to the (central) beta distribution.
^ abcdeChattamvelli, R. (1995). "A Note on the Noncentral Beta Distribution Function". The American Statistician. 49 (2): 231–234. doi:10.1080/00031305.1995.10476151.
^Posten, H.O. (1993). "An Effective Algorithm for the Noncentral Beta Distribution Function". The American Statistician. 47 (2): 129–131. doi:10.1080/00031305.1993.10475957. JSTOR2685195.