Abstract
In this paper, a new approximation formula for the gamma function and some of its symmetric inequalities are established. We prove the superiority of our results over Yang and Tian’s approximation formula for the gamma function of order .
Keywords:
gamma function; approximation formula; completely monotonic function; digamma function; inequality; best possible constant MSC:
33B15; 41A60; 41A21
1. Introduction
The gamma function extends the idea of a factorial to non-integer numbers. C. F. Gauss and other mathematicians investigated it further after L. Euler introduced it for the first time in the 18th century. The gamma function is defined as follows:
or by
and satisfies the recurrence relation , and hence, for . More work has been performed by mathematicians to obtain accurate estimates of and the gamma function. J. Stirling developed the following important formula:
As v grows, this estimate becomes more and more accurate. For high values, Stirling’s formula, which comes from Stirling’s series expansion, provides a practical alternative to numerically integrating the defining integral for estimating the gamma function. It is crucial to remember that, while Stirling’s approximation is frequently correct for large values of v, it might not be appropriate for small values of v or situations requiring great accuracy. Other techniques can be used to obtain more precise and comprehensive approximations.
Some sharp inequalities for the ratio of gamma functions are presented by Cao and Wang [] by using the multiple-correction method. Alzer and Jameson [] present a new characterization of Euler’s constant and a concavity property of the Psi function. Yang and Tian [] refine Windschitl’s gamma function approximation formula by providing two asymptotic expansions based on a little-known power series. The authors of [] use several classical inequalities, such as Chebychev’s inequality for synchronous mappings, to propose some inequalities involving the extended gamma function and the Kummer confluent hypergeometric k-function. Qi and Guo [] study the properties of the Bernstein function of the newly created ratio of finitely many gamma functions as well as the history, backgrounds, extensions, and applications of a series of ratios for finitely many gamma functions. For large values of the involved parameters, Reynolds and Stauffer [] investigate the improved infinite sum for the incomplete gamma function. Tian and Yang [] expand and generalize some previous results by presenting the necessary and sufficient conditions for a ratio involving q-gamma functions to be logarithmically completely monotonic using a new method. Zhang, Yin, and You [] deduce some new inequalities and completely monotonic properties involving the generalized functions k-gamma and k-polygamma. Yildirim [] uses the Bernstein–Widder theorem and some properties of the k-special function to present k-generalizations of some classical results and improvements to some bounds of recent results about the k-polygamma functions. Based on the incomplete gamma function, Castillo, Rojas, and Reyes [] deduce a more flexible extension for the Fréchet distribution, along with applications. Mahmoud, Alsulami, and Almarashi [] examine the monotonicity of some functions involving and ascertain its bounds that they were able to derive are more precise than certain inequalities that have been published previously. The research references [,,,,,,,,,,] present further information regarding the gamma function and the formulas, inequalities, approximations, generalizations, and applications that go along with it.
Simple and accurate gamma function approximation formulas are essential for many applications because gamma function integrals cannot be computed directly for most non-integer values. By using approximation formulas, one may evaluate more quickly and with less processing effort. For instance, simple approximations for the gamma function can greatly increase the accuracy and efficiency of algorithms in numerical techniques and calculations. This is essential for areas like statistical analysis, optimization, and differential equation solutions [,]. Some intriguing estimates of gamma functions are as follows:
- Ramanujan presents the approximation formula [] as
Windschitl finds the approximation formula [] as
after he noticed by coincidence the relation between some power series expansions of the extended Stirling’s formula and the hyperbolic sine function. Since it is accurate to more than eight decimal places for , he suggested using the approximation to compute the values of the gamma function on calculators with limited program or register memory.
Smith presents the approximation formula [] as
and some new representations of the gamma function and some of its related functions. In addition, he provides new continued fractions and a new formula for the beta function.
- Mahmoud and Almuashi deduce the approximation formula [] as
Nemes uses a series transformation to convert the Stirling asymptotic series approximation of the gamma function into a new one with better convergence properties and deduces the approximation formula [] as
Yang and Chu’s deduce the approximation formula [] as
and some upper and lower bounds of the factorial and the gamma function are presented as applications.
Nemes’s approximation formula [] as
Yang and Chu’s approximation formula [] as
Based on Windschitl’s formula, Lu, Song, and Ma derive a generated approximation of the factorial function , prove several gamma function inequalities, and deduce the approximation formula [] as
Chen presents the approximation formula [] as
and then creates an asymptotic expansion using this approximation formula.
Windschitl’s approximation formula [] as
Alzer presents the approximation formula [] as
and a double inequality of for with the best possible constants.
Yang and Tian present the approximation formula [] as
and study the monotonicity of some functions involving .
In light of the aforementioned results, the purpose of this paper is to present the following most accurate Mahmoud and Almuashi-type approximation:
which is more accurate than Yang and Tian’s approximation formula in []. Also, we proved the following approximation formula
We have used Mathematica 10 software to perform the numerical calculations throughout this work.
2. Main Results
Recall that a real valued function g, which is defined and infinitely differentiable on , is said to be completely monontonic (CM) if for all that on . We refer to [,,,] for further information on CM functions and their applications. The function g is CM, according to Bernstein’s theorem [], if and only if , where is a non-negative measure on such that the integral converges for . If the function is CM for , and the function is CM for if and only if , then the real number is called the completely monotonic degree of with respect to (see [,]) and is denoted by . This concept can aid in more accurate measurements of CM functions.
To obtain our first bounds of gamma functions, we first give the following theorem:
Theorem 1.
is CM function with
where is the digamma function.
Proof.
Using Gauss integral form of the digamma function []
we obtain
where
Consider the following functions for
and
For , we have
Then, we have
Using the inequality
we obtain
Now,
with
where
and the polynomial
is positive and has no real zeros for . Then,
Using the two inequalities []
and
we obtain
Then,
Using
we obtain
and hence,
Now, if we suppose that is a CM function for , then it is a decreasing function, that is
Using the following asymptotic expansion and its derivative
where is the Riemann zeta function for , we obtain
Hence, or
□
Theorem 2.
The function
is increasing. Furthermore, we have the following symmetric inequality:
with best possible constants and .
Proof.
Using the relation
and with a CM function for , then is an increasing function for . Also, using the asymptotic expansion []
where
with
we obtain
and
□
Remark 1.
From the expansion (13), we conclude that
Now, we present our second bounds of gamma function.
Theorem 3.
The function
is decreasing. Furthermore, we have the following symmetric inequality:
with best possible constants and .
Proof.
Consider the function
then,
and
where
and
Then, is increasing function with since
Then, or
Using expansion (12), we obtain
and then . But, if a function satisfies and , , then for (see []). Then, or is decreasing for . Hence, is decreasing for . Using the expansion
we obtain . Then, the function is bounded by the two best possible constants and . □
Remark 2.
From the expansion (15), we conclude that
3. Comparison among Some Approximation Formulas of the Gamma Function
The approximation formula is of course better than the other mentioned formulas from to based on the rate of convergence. Also, the two approximation formulas and are converging to with a rate like as . To compare between the formulas and , consider the function
and then
Using the expansion
we obtain
Then,
where
and
Hence, is an increasing function for . Also,
and hence, . Then, for or
Then, using the inequalities (14) and (16), we obtain
Therefore, the approximation formula is better than for .
4. Conclusions
Applications of the gamma function may be found in a wide range of real-world fields, from finance and economics (e.g., option pricing models) to medical research (e.g., modeling disease spread). Approximation formulae can improve these studies’ precision and speed. The main conclusions of this paper are stated in Theorems (2) and (3). Concretely speaking, based on Mahmoud and Almuashi’s formula, the authors studied the monotonicity and complete monotonicity of some functions related to to present the Formulas (4) and (5) and some symmetric inequalities for . Our new approximation formula and Yang and Tian’s approximation are of the same order but the superiority of our results is proven.
Author Contributions
Writing of original draft, M.M. and H.A. All authors contributed equally to the writing of this paper. All authors have read and agreed to the published version of the manuscript.
Funding
This research received no external funding.
Data Availability Statement
Data are contained within the article.
Conflicts of Interest
The authors declare no conflicts of interest.
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