Stieltjes Transforms and R-Transforms Associated with Two-Parameter Lambert–Tsallis Functions
Abstract
:1. Introduction
2. Preliminaries
3. R-Transforms
4. A Two-Parameter Family of Stieltjes Transforms
- (a)
- and ,
- (b)
- and ,
- (c)
- and .
5. Proof of Theorem 3
5.1. Properties of the Generalized Tsallis Function
- (1)
- Suppose that , or . If , then there exists a unique such that , and one has for , and otherwise. If , then one has for any .
- (2)
- Suppose that . If , then there exists a unique such that , and one has for , and for . If , then one has for any .
- (a)
- It does not have a solution if , which is equivalent to the condition . Since , we see that in this situation.
- (b)
- The Equation (14) has a unique solution if or . In the former case, the condition is equivalent to , and we have and . In the latter case, we have , and the condition is divided into two situations; one is , and the other is .
- (c)
- The Equation (14) has two solutions if , which is equivalent to the condition so that . We note that we have , and if then we have . We only deal with case (c).
5.2. The domain for
- (1)
- If , then .
- (2)
- If , then .
- (3)
- If , then .
- (4)
- If , then , which is bounded.
- (1)
- If , then there exists a unique such that and that are both positive with on . Moreover,In particular, is bounded. One has and , whereas .
- (2)
- If , then one has which is positive on the interval . Moreover,has an asymptotic line . One has and .
- (3)
- If , then is the only positive solution of on , andOne has , whereas . If , then has an asymptotic line . Please note that if then .
- (4)
- Suppose that and .
- (a)
- If , then one has and for , and . One has and .
- (b)
- If , then one has and for , andOne has , while . Moreover, has an asymptotic line .
- (5)
- Suppose that .
- (a)
- If with , then are both positive in with , andhas an asymptotic line . One has , but , .
- (b)
- If and , then there exists a unique such that , and are both positive in the interval . Moreover,In this case, , are both non-real numbers and one has and . Moreover, has an asymptotic line .
- (c)
- If , then there is no such that , and one has .
5.3. The Domain for
- (1)
- If , then one has .
- (2)
- Suppose that . Then, there exists a unique function defined on such thatThe function has a unique minimal point and tends to π as .
- (3)
- If , then , are both real for any , and one has
- (4)
- Suppose that . Then, there exists a unique such that and if then , are real. Moreover, one hasIn particular, is bounded.
5.4. Bijectivity of
5.4.1. The Case and
5.4.2. The Case and
- (1)
- Assume that or together with . Then, are both real and with . Please note that is included in this case.
- (2)
- Assume that and . Then, are both real, and one has with . Please note that is equivalent to .
- (3)
- Assume that or together with . Then, are both non-real, and one has . On the other hand, one has .
5.4.3. The Case and
5.4.4. The Case and
5.4.5. The Case of
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
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Nakashima, H.; Graczyk, P. Stieltjes Transforms and R-Transforms Associated with Two-Parameter Lambert–Tsallis Functions. Entropy 2023, 25, 858. https://doi.org/10.3390/e25060858
Nakashima H, Graczyk P. Stieltjes Transforms and R-Transforms Associated with Two-Parameter Lambert–Tsallis Functions. Entropy. 2023; 25(6):858. https://doi.org/10.3390/e25060858
Chicago/Turabian StyleNakashima, Hideto, and Piotr Graczyk. 2023. "Stieltjes Transforms and R-Transforms Associated with Two-Parameter Lambert–Tsallis Functions" Entropy 25, no. 6: 858. https://doi.org/10.3390/e25060858
APA StyleNakashima, H., & Graczyk, P. (2023). Stieltjes Transforms and R-Transforms Associated with Two-Parameter Lambert–Tsallis Functions. Entropy, 25(6), 858. https://doi.org/10.3390/e25060858