Beta function
In mathematics, the beta function, also called the Euler integral of the first kind, is a special function that is closely related to the gamma function and to binomial coefficients. It is defined by the integral
for complex number inputs x, y such that Re x > 0, Re y > 0.
The beta function was studied by Euler and Legendre and was given its name by Jacques Binet; its symbol Β is a Greek capital beta.
Properties[]
The beta function is symmetric, meaning that
for all inputs x and y.[1]
A key property of the beta function is its close relationship to the gamma function: one has that[1]
(A proof is given below in § Relationship to the gamma function.)
The beta function is also closely related to binomial coefficients. When x (or y, by symmetry) is a positive integer, it follows from the definition of the gamma function Γ that[2]
Relationship to the gamma function[]
A simple derivation of the relation can be found in Emil Artin's book The Gamma Function, page 18–19.[3] To derive this relation, write the product of two factorials as
Changing variables by u = zt and v = z(1 − t) produces
Dividing both sides by gives the desired result.
The stated identity may be seen as a particular case of the identity for the integral of a convolution. Taking
one has:
Derivatives[]
We have
Approximation[]
Stirling's approximation gives the asymptotic formula
for large x and large y. If on the other hand x is large and y is fixed, then
Other identities and formulas[]
This section does not cite any sources. (June 2020) |
The integral defining the beta function may be rewritten in a variety of ways, including the following:
The beta function can be written as an infinite sum[4]
- (where is the rising factorial)
and as an infinite product
The beta function satisfies several identities analogous to corresponding identities for binomial coefficients, including a version of Pascal's identity
and a simple recurrence on one coordinate:
For , the beta function may be written in terms of a convolution involving the truncated power function t ↦ tx
+:
Evaluations at particular points may simplify significantly; for example,
By taking in this last formula, one may conclude in particular that Γ(1/2) = √π. One may also generalize the last formula into a bivariate identity for a product of beta functions:
Euler's integral for the beta function may be converted into an integral over the Pochhammer contour C as
This Pochhammer contour integral converges for all values of α and β and so gives the analytic continuation of the beta function.
Just as the gamma function for integers describes factorials, the beta function can define a binomial coefficient after adjusting indices:
Moreover, for integer n, Β can be factored to give a closed form interpolation function for continuous values of k:
Reciprocal beta function[]
The reciprocal beta function is the function about the form
Interestingly, their integral representations closely relate as the definite integral of trigonometric functions with product of its power and multiple-angle:[6]
Incomplete beta function[]
The incomplete beta function, a generalization of the beta function, is defined as
For x = 1, the incomplete beta function coincides with the complete beta function. The relationship between the two functions is like that between the gamma function and its generalization the incomplete gamma function.
The regularized incomplete beta function (or regularized beta function for short) is defined in terms of the incomplete beta function and the complete beta function:
The regularized incomplete beta function is the cumulative distribution function of the beta distribution, and is related to the cumulative distribution function of a random variable X following a binomial distribution with probability of single success p and number of Bernoulli trials n:
Properties[]
Multivariate beta function[]
The beta function can be extended to a function with more than two arguments:
This multivariate beta function is used in the definition of the Dirichlet distribution. Its relationship to the beta function is analogous to the relationship between multinomial coefficients and binomial coefficients.
Applications[]
The beta function is useful in computing and representing the scattering amplitude for Regge trajectories. Furthermore, it was the first known scattering amplitude in string theory, first conjectured by Gabriele Veneziano. It also occurs in the theory of the preferential attachment process, a type of stochastic urn process. The beta function is also important in statistics, e.g. for the Beta distribution and Beta prime distribution. As briefly alluded to previously, the beta function is closely tied with the gamma function and plays an important role in calculus.
Software implementation[]
Even if unavailable directly, the complete and incomplete beta function values can be calculated using functions commonly included in spreadsheet or computer algebra systems. In Excel, for example, the complete beta value can be calculated from the GammaLn
function:
Value = Exp(GammaLn(a) + GammaLn(b) − GammaLn(a + b))
An incomplete beta value can be calculated as:
Value = BetaDist(x, a, b) * Exp(GammaLn(a) + GammaLn(b) − GammaLn(a + b))
.
These results follow from the properties listed above.
Similarly, betainc
(incomplete beta function) in MATLAB and GNU Octave, pbeta
(probability of beta distribution) in R, or special.betainc
in Python's SciPy package compute the regularized incomplete beta function—which is, in fact, the cumulative beta distribution—and so, to get the actual incomplete beta function, one must multiply the result of betainc
by the result returned by the corresponding beta
function. In Mathematica, Beta[x, a, b]
and BetaRegularized[x, a, b]
give and , respectively.
See also[]
- Beta distribution and Beta prime distribution, two probability distributions related to the beta function
- Jacobi sum, the analogue of the beta function over finite fields.
- Nörlund–Rice integral
- Yule–Simon distribution
This article includes a list of general references, but it remains largely unverified because it lacks sufficient corresponding inline citations. (November 2010) |
References[]
- ^ Jump up to: a b Davis (1972) 6.2.2 p.258
- ^ Davis (1972) 6.2.1 p.258
- ^ Artin, Emil. The Gamma Function (PDF). pp. 18–19. Archived from the original (PDF) on 2016-11-12. Retrieved 2016-11-11.
- ^ https://functions.wolfram.com/GammaBetaErf/Beta/06/03/0001/
- ^ "Euler's Reflection Formula - ProofWiki". proofwiki.org. Retrieved 2020-09-02.
- ^ Paris, R. B. (2010), "Beta Function", in Olver, Frank W. J.; Lozier, Daniel M.; Boisvert, Ronald F.; Clark, Charles W. (eds.), NIST Handbook of Mathematical Functions, Cambridge University Press, ISBN 978-0-521-19225-5, MR 2723248
- Askey, R. A.; Roy, R. (2010), "Beta function", in Olver, Frank W. J.; Lozier, Daniel M.; Boisvert, Ronald F.; Clark, Charles W. (eds.), NIST Handbook of Mathematical Functions, Cambridge University Press, ISBN 978-0-521-19225-5, MR 2723248
- Zelen, M.; Severo, N. C. (1972), "26. Probability functions", in Abramowitz, Milton; Stegun, Irene A. (eds.), Handbook of Mathematical Functions with Formulas, Graphs, and Mathematical Tables, New York: Dover Publications, pp. 925–995, ISBN 978-0-486-61272-0
- Davis, Philip J. (1972), "6. Gamma function and related functions", in Abramowitz, Milton; Stegun, Irene A. (eds.), Handbook of Mathematical Functions with Formulas, Graphs, and Mathematical Tables, New York: Dover Publications, ISBN 978-0-486-61272-0
- Paris, R. B. (2010), "Incomplete beta functions", in Olver, Frank W. J.; Lozier, Daniel M.; Boisvert, Ronald F.; Clark, Charles W. (eds.), NIST Handbook of Mathematical Functions, Cambridge University Press, ISBN 978-0-521-19225-5, MR 2723248
- Press, W. H.; Teukolsky, SA; Vetterling, WT; Flannery, BP (2007), "Section 6.1 Gamma Function, Beta Function, Factorials", Numerical Recipes: The Art of Scientific Computing (3rd ed.), New York: Cambridge University Press, ISBN 978-0-521-88068-8
External links[]
- "Beta-function", Encyclopedia of Mathematics, EMS Press, 2001 [1994]
- Evaluation of beta function using Laplace transform at PlanetMath.
- Arbitrarily accurate values can be obtained from:
- Gamma and related functions
- Special hypergeometric functions