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Article

Conformable Fractional Martingales and Some Convergence Theorems

by
Ma’mon Abu Hammad
Department of Mathematics, Al-Zaytoonah University of Jordan, Queen Alia Airport St. 594, 11942 Amman, Jordan
Mathematics 2022, 10(1), 6; https://doi.org/10.3390/math10010006
Submission received: 22 November 2021 / Revised: 13 December 2021 / Accepted: 17 December 2021 / Published: 21 December 2021

Abstract

:
In this paper, we define conformable Lebesgue measure and conformable fractional countable martingales. Some convergence theorems are proved.

1. Introduction

Martingales are a main topic in probability theory. They have many applications in our real lives. Fractional martingales have ties and relationships with fractional Brownian motion [1,2]. The main definition of martingales can be written by using the real line as: E R + , where the Lebesgue measurable set is R .
Assume A to be the σ -algebra of Lebesgue measurable sets in E , and μ is the Lebesgue measure on E , where E , A , μ is a measure space, L 1 E , μ is the space of Lebesgue integrable functions on E , and B n is a sequence of σ - algebras of the Lebesgue measurable set in A such that B n B n + 1 A ,   n 1 .
Definition 1.
For each n , let f n L 1 E , B n , μ . Then ,   f n is called a martingale if D f n d μ = D f m d μ ,     m n , and D B n .   The standard notation for f n is: E f m | B n = f n ,       m n ,   and is called the conditional expectation of f m relative to B n . For more on martingales, we refer to [2,3,4].

2. Method and Results

Fractional martingales, as introduced in [1], have a strong relation to fractional Brownian motion. Furthermore, the Riemann–Liouvill fractional integral was used for fractional martingales. Hu, Y. et al pointed out in [1], that fractional martingales are not martingales. Consequently, in this section, we introduce the following: (i) fractional Lebesgue measure, and (ii) fractional martingales. We use conformable fractional integral for the definition of fractional martingales. Furthermore, our definition of fractional martingales ensures that fractional martingales are martingales.
Definition 2.
Let μ be the Lebesgue measure on E R + and A  be the σ –algebra of Lebesgue measurable sets in E . We define the conformable fractional Lebesgue measure for α 0 , 1 as:
μ α B = B d μ x 1 α , for any B A . One can easily show that μ α is a measure on E , noting that B 0 , , so, x 0 .
Hence,
μ α 0 , 1 = 0 1 d μ x 1 α = 1
and,
μ α 4 , 9 = 9 α 4 α
so,
if   α = 1 2 ,   then   μ 0.5 4 , 9 = 1 .
One can build a whole theory here using the Lebesgue fractional measure, such as L p E , A , μ α   ,   1 p < . Further, it would be nice to study the relation between L p E , A ,   μ and L p E , A , μ α .
Definition 3.
Let f L 1 E , μ α , and B be a σ -algebra of Lebesgue measurable sets. Then, a function g L 1 E , B , μ α is called the fractional conditional expectation of f relative to B if A g d μ α = A f d μ α ,     A B .
We remark that A f d μ α is just the fractional integral introduced in [5]. We denote g by E f | B   . Conditional expectation is an important concept in probability theory.
A nice example of fractional conditional expectation is:
Example 1. Let A n = n , n + 1 . Consider the σ –algebra A generated by ( A n ) . Now it is easy to check that E α f | A = n = 1 A n f d μ α μ α A n 1 A n , where 1 A n is the characteristic function of the set   A n [6]. Conditional expectation is the cornerstone of the definition of martingales.
Note that a fractional martingale is associated with the fractional Lebesgue measure. However, martingales are associated with the usual Lebesgue measure. Therefore, a function could be integrable with respect to Lebesgue measure but not integrable with respect to fractional Lebesgue measure.
Theorem 1.
Let   f ϵ L 1 E , μ α . Then E α f | B exists for every σ -algebra B of Lebesgue measurable sets of E .   Further,
E α f | B 1   f 1
Proof of Theorem 1.
For A ϵ B , define γ A = A f d μ α
Clearly,
Lim μ α A 0 γ A = 0
Hence, γ is μ α -continuous. Then, by the Radon–Nikodym theorem [3], there exists g ϵ L 1 E , B , μ     γ A = A g d μ α , for every A ϵ B .
Thus,
g = E α f | B .
The use of Jensen’s inequality completes the proof, noting that   x 1 α > 0 , on   E 0 , . □
Theorem 2.
Remains true for f ϵ L p E , μ α , for 1 < p < .
Now, we present the main definition.
Definition 4.
Let ( B n ) be a sequence of σ –algebras of Lebesgue measurable sets, such that B n B n + 1 A ,     n . A sequence of functions f n whereby f n ϵ L 1 E , A , μ α and   E α f k | B n = f n       k n , is called a fractional martingale. We will write ( f n , B n ) for such a martingale.
A nice example of a martingale is:
Example 2.
Let f ϵ L 1 E , μ α and B n be a sequence of σ –algebras of Lebesgue measurable sets in E . Let f n = E α f | B n . Then, clearly ( f n ) is a fractional martingale.
Let A be the σ – algebra of all Lebesgue measurable sets in   E . So,
  L 1 E , μ α = L 1 E , A , E α
Now, let ( f n , B n ) be a martingale in L 1 E , μ . So ( f n , B n ) is a fractional martingale if μ is replaced by μ α .
Now, we prove:
Theorem 3.
A martingale ( f n , B n ) in L 1 E , μ α     converges in L 1 E , μ α if, and only if, there exists f ϵ L 1 E , μ α , such that for each   A ϵ n = 1 B n we have
lim n A f n d μ α = A f d μ α
Proof of Theorem 3.
With no loss of generality, we assume that the σ -algebra generated by n = 1 B n = A .
Now,
assume   that   f n n f   in   L 1 E , μ α ,
so,
E f n f   d μ α   n   0
However, for any   A ϵ n = 1 B n , we have
A . f n   d μ α A . f   d μ α
noting that μ α is a measure.
                          A f n f   d μ α  
By (1) we get
lim n A f n d μ α = A f d μ α
For the converse:
Assume there exists f ϵ L 1 E , μ α such that
lim n A f n d μ α = A f d μ α     for   all   A ϵ   n = 1 B n .
Since we assume that A = the σ -algebra generated by n = 1 B n , then we get
E α f | B n = f n     n 1
Now, we claim that   l i m n f n f 1 = 0 .
By assumption, on A and n = 1 B n , it follows that simple functions of the form i = 1 n   a i 1 A i   , A i ϵ   n = 1 B n are dense in L 1 E , μ α .
Hence, for every   ε > 0 there exists g ε = i = 1 m   b i 1 E i   , such that f g ε 1 < ε 2 .
Since B n B n + 1 , then there exists m 0 , such that
E i   ϵ   B m 0 ,       1 i m
Hence, g ε is B n -measurable   m m 0 , and
E α g ε | B m = g ε     m m 0  
Now, for m m 0 , we have:
f m f 1     f m g ε 1 + g ε f 1
Using (2), we get
f m g ε = E α f g ε | B m ,     m m 0   .
Hence,
f m f 1     f m g ε 1 + g ε f 1
= E α f g ε | B m 1 + g ε f 1
      f g ε 1 + g ε f 1    
= 2   g ε f 1 2   ε 2 = ε           m m 0  
Thus,
f m n   f   in   L 1 E , μ α .
This completes the proof. □
A nice consequence of Theorem 4 which is easy to prove is:
Theorem 4.
A fractional martingale ( f n , B n ) in L 1 E , μ α is convergent in L 1 E , μ α if, and only if, there exists f L 1 E , μ α , such that E α f | B n = f n     n 1 .

3. Discussion

Conformable fractional martingales have similar properties to the usual martingales.

4. Conclusions

We proved convergence theorems for the conformable fractional martingales similar to the usual martingales.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

I am thankful to the anonymous referees and the editor for their valuable suggestions/comments which led to considerable improvement of the manuscript. In addition, I would like to thank R. Khalil, and B. Aljawrneh.

Conflicts of Interest

The author declares no conflict of interest.

References

  1. Hu, Y.; Nualart, D.; Song, J. Fractional martingales and characterization of the fractional Brownian motion. Ann. Probab. 2009, 37, 2404–2430. [Google Scholar] [CrossRef]
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  5. Khalil, R.; Al Horani, M.; Yousef, A.; Sababheh, M. A new definition of fractional derivative. J. Comput. Appl. Math. 2014, 264, 65–70. [Google Scholar] [CrossRef]
  6. Jebril, I.; Nouh, E.; Hamidi, R.; Dalahmeh, Y.; Almutlak, S. Properties of Conformable Fractional Gamma with two Parameters Probability Distribution. In Proceedings of the 2021 International Conference on Information Technology (ICIT), Amman, Jordan, 14–15 July 2021; IEEE: Piscataway, NJ, USA, 2021. [Google Scholar]
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Hammad, M.A. Conformable Fractional Martingales and Some Convergence Theorems. Mathematics 2022, 10, 6. https://doi.org/10.3390/math10010006

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Hammad MA. Conformable Fractional Martingales and Some Convergence Theorems. Mathematics. 2022; 10(1):6. https://doi.org/10.3390/math10010006

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Hammad, Ma’mon Abu. 2022. "Conformable Fractional Martingales and Some Convergence Theorems" Mathematics 10, no. 1: 6. https://doi.org/10.3390/math10010006

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