Next Article in Journal
Dispersive Soliton Solutions and Dynamical Analyses of a Nonlinear Model in Plasma Physics
Previous Article in Journal
Optimal Hölder Regularity for Discontinuous Sub-Elliptic Systems Structured on Hörmander’s Vector Fields
Previous Article in Special Issue
On the Strong Convergence of Combined Generalized Equilibrium and Fixed Point Problems in a Banach Space
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

The Brooks–Chacon Biting Lemma, the Castaing–Saadoune Procedure, and the Baum–Katz Theorem Along Subsequences

1
Department of Mathematics and Statistics, University of New Brunswick, Saint John, NB E2K 5E2, Canada
2
Department of Mathematical Sciences, Lakehead University, Thunder Bay, ON P7B 5E1, Canada
*
Author to whom correspondence should be addressed.
Axioms 2025, 14(10), 762; https://doi.org/10.3390/axioms14100762
Submission received: 9 September 2025 / Revised: 10 October 2025 / Accepted: 12 October 2025 / Published: 14 October 2025
(This article belongs to the Special Issue Research on Functional Analysis and Its Applications)

Abstract

We show how the Brooks–Chacon Biting Lemma can be combined with the Castaing–Saadoune procedure to provide the complete rate of convergence along subsequences when the uniformly boundedness condition is violated.

1. Introduction

A practical and efficient way of providing the complete rate of convergence along subsequences, when the original sequence of random variables is uniformly (norm) bounded, is provided in [1]; that result works without any supplementary probabilistic hypothesis on their (in)dependence or on their distributions:
Theorem 1.
Let 0 < p < 2 . On a complete probability space ( Ω , F , P ) , we consider a sequence of random variables ( ξ n ) n 1 that is uniformly bounded in L p , i.e., for some constant C > 0 , we have the following:
sup n 1 | | ξ n | | p C .
Then, for all 1 < r p and any ε > 0 , we have
n = 1 n p / r 2 P ω Ω : j = 1 n η j ( ω ) > ε n 1 / r <
along a subsequence ( η n ) n 1 of ( ξ n ) n 1 .
Remark 1.
The complete convergence of the series in Formula (1) implies that the subsequence ( η n ) n 1 satisfies the strong law of large numbers, i.e.,
η n n 1 / p 0 P - a . s .
The parameter r ( 1 , 2 ) is keeping Theorem 1 within the realm of laws of large numbers; indeed, if p r 2 , then by the central limit theorem for subsequences, the series in Formula (1) diverges for all ε > 0 even if ( ξ n ) n 1 is an i.i.d. sequence with mean zero and finite variance. Also note that Formula (1) trivially holds if 0 < p < r < 2 .
There are situations (see, e.g., the recent papers [2,3] and the references therein) when the sequence of random variables in question is not uniformly bounded in L p , not even bounded, and yet satisfies a law of large numbers. In this case, Theorem 1 is no longer useful in quantifying the rate of convergence in the associated law of large numbers. Moreover, the examples in [4,5,6] show that Theorem 1 may fail if one drops the L p -uniform boundedness hypothesis, for any 0 < p < 2 .
Using novel techniques, Karatzas and Schachermayer (see [2,3]) recently extended the law of large numbers; inspired by their results, in Section 2 we shall prove a version of the Baum-Katz theorem under a special Komlós–Saks-type boundedness hypothesis, different from the L p -boundedness condition required in Theorem 1. This will be accomplished by combining the methodology given by the celebrated Biting Lemma of Brooks and Chacon (cf. [7]) with the Castaing–Saadoune procedure of constructing, as in [8], a family of uniformly integrable subsequences of ( ξ n ) n 1 for which condition (1) holds. This methodology is new, and shows a departure from the standard protocols from [4,6], whose set-up and working hypotheses cannot produce such a family of subsequences by lack of uniform integrability. A modification of this methodology is presented in Section 3; it will produce a second version of the Baum–Katz theorem under a Mazur–Orlicz-type hypothesis.

2. Main Result

Theorem 2.
Let 0 < p < 2 . On a complete probability space ( Ω , F , P ) we consider a sequence of random variables ( ξ n ) n 1 such that, for all ω Ω , satisfies
lim sup n 1 | ξ n ( ω ) | p < .
Then, for all 1 < r p , Equation (1) holds along a subsequence ( η n ) n 1 of ( ξ n ) n 1 . In particular, the subsequence ( η n ) n 1 satisfies the strong law of large numbers, i.e.,
η n n 1 / p 0 P - a . s .
Example 1.
(i) A textbook-type argument (cf. [9]) shows that the working hypothesis in Theorem 1 reduces to
sup n 1 | ξ n ( ω ) | p < ω Ω .
In particular, one can see that Theorems 1 and 2 do not overlap and do not imply each other. Indeed, uniformly L p -bounded sequences of functions can still have an infinite limsup, and vice-versa: there are sequences of functions, with finite limsup, that are not (uniformly) bounded in L p (see, e.g., [9]).
(ii) The hypotheses in Theorem 2 are satisfied, e.g., by the working condition in the motivational papers [2,3], namely
lim N N · sup n 1 P ( | ξ n | > N ) = 0 .
This condition implies uniform boundedness in L 0 (tightness), i.e.,
lim N sup n 1 P ( | ξ n | > N ) = 0
and is implied by uniform integrability, i.e.,
lim N sup n 1 E ( ξ n · 1 { | ξ n | > N } ) = 0 ,
where E denotes the expectation with respect to P . Also note that the L p -boundedness condition in Theorem 1 is stronger than the last three conditions, provided p [ 1 , 2 ) (see, e.g., Example 4.2 in [2]).
Proof of Theorem 2.
We shall work with the following F -measurable sets
Ω m : = ω Ω : sup n 1 | ξ n ( ω ) | p m
defined for any natural number m 1 . We have, by hypothesis, that
P ( Ω m ) 1 as m .
Hence, if 1 < r < p is fixed, we can choose an index m 1 1 , such that
P ( Ω m 1 ) > 1 1 2 a
for any a > p / r 1 . Fatou’s lemma then gives the following:
sup n 1 Ω m 1 | ξ n | p d P m 1 .
This condition shows that the working hypotheses in the Biting Lemma (cf. [7]) are satisfied by the sequence ( ξ n ) n 1 and the subset Ω m 1 . We thus obtain a non-decreasing sequence ( Ω ˜ k 1 ) k 1 of subsets in F with
P ( Ω ˜ k 1 ) 1 as k ,
and a subsequence ( ξ n 1 ) n 1 of ( ξ n ) n 1 that is uniformly integrable on each of the subsets Ω m 1 Ω ˜ k 1 , k 1 . Equation (2) shows that Theorem 1 applies to the sequence ( ξ n 1 ) n 1 and gives:
n = 1 n p / r 2 P ω Ω m 1 Ω ˜ k 1 : j = 1 n ξ j 1 ( ω ) > ε n 1 / r <
for any ε > 0 and k 1 .
Next, we choose a natural number m 2 1 , such that
P ( Ω m 2 ) > 1 1 3 a ,
and another application of the Biting Lemma, but this time to ( ξ n 1 ) n 1 , produces a non-decreasing sequence ( Ω ˜ k 2 ) k 1 of subsets in F , such that
P ( Ω ˜ k 2 ) 1 as k ,
and a subsequence ( ξ n 2 ) n 1 of ( ξ n 1 ) n 1 , and therefore a subsequence of ( ξ n ) n 1 as well, with the property that ( ξ n 2 ) n 1 is uniformly integrable on each of the subsets Ω m 2 Ω ˜ k 2 for k 1 , and
n = 1 n p / r 2 P ω Ω m 2 Ω ˜ k 2 : j = 1 n ξ j 2 ( ω ) > ε n 1 / r <
for any ε > 0 and k 1 .
The procedure continues by induction so, at each step i 1 , one obtains an F -measurable set Ω m i satisfying
P ( Ω m i ) > 1 1 ( i + 1 ) a ,
a non-decreasing sequence ( Ω ˜ k i ) k 1 of subsets in F such that
P ( Ω ˜ k i ) 1 as k ,
and a subsequence ( ξ n i ) n 1 of ( ξ n i 1 ) n 1 , such that ( ξ n i ) n 1 is uniformly integrable on each of the subsets Ω m i Ω ˜ k i , k 1 ; they all satisfy the following:
n = 1 n p / r 2 P ω Ω m i Ω ˜ k i : j = 1 n ξ j i ( ω ) > ε n 1 / r <
for any ε > 0 and k , i 1 . (The convention is that ( ξ n 0 ) n 1 is precisely ( ξ n ) n 1 ).
Now define η n : = ξ n n for each n 1 ; using the previous formula, it follows that ( η n ) n 1 is a subsequence of ( ξ n ) n 1 that satisfies:
n = 1 n p / r 2 P ω Ω m n Ω ˜ k n : j = 1 n η j ( ω ) > ε n 1 / r <
for any ε > 0 and k 1 . As
P ( Ω ˜ k n ) 1 as k for each n 1 ,
an application of the dominated convergence theorem eliminates the sets Ω ˜ k n in Formula (3); indeed, we have the following:
n = 1 n p / r 2 P ω Ω m n : j = 1 n η j ( ω ) > ε n 1 / r <
for any ε > 0 .
To ensure that our series (1) converges along this particular subsequence ( η n ) n 1 , it suffices to prove that
n = 1 n p / r 2 P ω Ω Ω m n : j = 1 n η j ( ω ) > ε n 1 / r <
for any ε > 0 . (This is Formula (4) written on the complement of Ω m n ).
Indeed, as
a > p / r 1 > 0 and P ( Ω m n ) > 1 1 n a ,
the series
n = 1 n p / r 2 P ω Ω Ω m n : j = 1 n η j ( ω ) > ε n 1 / r n = 1 n p / r 2 P ω Ω Ω m n n = 1 n p / r 2 a < .
and this argument finishes the proof in the case 1 < r < p .
If 1 < r = p , then we modify the above methodology as follows: as above, by induction, we can choose F -measurable sets Ω m i with
P ( Ω m i ) > i i + 1
for each i 1 ; as such, the Biting Lemma and the diagonal argument produce the subsequence ( η n ) n 1 and the following replacement of Equation (4):
n = 1 1 n P ω Ω m n : j = 1 n η j ( ω ) > ε n 1 / r <
for any ε > 0 . To ensure that our series (1) converges along this particular subsequence ( η n ) n 1 , it suffices to prove that
n = 1 1 n P ω Ω Ω m n : j = 1 n η j ( ω ) > ε n 1 / r <
for any ε > 0 , with the new choice of the set Ω m n . Indeed, using Formula (6), we obtain
n = 1 1 n P ω Ω m n : j = 1 n η j ( ω ) > ε n 1 / r n = 1 1 n P ω Ω Ω m n n = 1 1 n ( n + 1 ) < ,
and this argument finishes the proof in the case 1 < r = p . □

3. A Variant of the Main Result

Proposition 1.
Let 0 < p < 2 . On a complete probability space ( Ω , F , P ) , we consider a sequence of random variables ( ξ n ) n 1 satisfying the following condition: each subsequence ( ξ ˜ n ) n 1 of ( ξ n ) n 1 and n 1 produces a convex ccombination ζ n of { | ξ ˜ n | p , | ξ ˜ n + 1 | p , } with the property that
sup n 1 | ζ n ( ω ) | p < ω Ω .
Then, for all 1 < r p , Equation (1) holds along a subsequence ( η n ) n 1 of ( ξ n ) n 1 and, in particular,
η n n 1 / p 0 P - a . s .
Example 2.
The sequence
ξ n ( ω ) = n 2 if 0 < ω < 1 / n 0 for 1 / n ω 1
satisfies Theorem 2 because ξ n 0 a.s. (with respect to the Lebesgue measure on [ 0 , 1 ] ); however, it does not satisfy Theorem 1 (with p = 1 ) because it is not bounded in L 1 [ 0 , 1 ] . Note that both Theorems 1 and 2 may fail for unbounded sequences, e.g., ξ n ( ω ) = n , ω [ 0 , 1 ] .
Proof of Proposition 1.
The named convex combinations have the following form:
ζ n = i N n λ i n | ξ ˜ n + i | p
for some λ i n 0 with i N n λ i n = 1 , where N n are finite subsets of { 0 , 1 , 2 } . Moreover, it is straightforward to see that
sup n 1 | ζ n ( ω ) | p < ω Ω .
Let us define the F -measurable sets
Ω m : = ω Ω : sup n 1 | ζ n ( ω ) | p m
for any natural number m 1 . We then have
P ( Ω m ) 1 as m ,
hence, for fixed 1 < r p , there is an index m 1 1 , such that
P ( Ω m 1 ) > 1 1 2 a
for some a > p / r 1 fixed, or 1 / 2 , according to 1 < r < p or 1 < r = p , respectively. In both cases, Fatou’s lemma eliminates the sequence ζ n :
sup n 1 i I n λ i n A m 1 | ξ ˜ n + i | p d P m 1 .
We then obtain a subsequence ( ξ ¯ n ) n 1 of ( ξ ˜ n ) n 1 , such that
sup n 1 Ω m 1 | ξ ¯ n | p d P m 1 .
We finalize precisely as we did in Theorem 2, with Equation (2) replaced by the equation above, and applied to the subsequence ( ξ ¯ n ) n 1 . □

4. Conclusions

Our reader already noticed that Theorem 2 and Proposition 1 are obtained for Komlós–Saks-type and, respectively, Mazur–Orlicz-type boundedness hypotheses, both different from the typical L p -boundedness condition for sequences of random variables. The techniques used in their proofs rely upon a successful blending of the Biting Lemma of Brooks and Chacon with the Castaing–Saadoune procedure of constructing a family of uniformly integrable subsequences of the original sequence of random variables. We also noticed, by examples, that a weaker hypothesis, like boundedness in probability, is not enough to sustain results like Theorem 2 and Proposition 1. On the other hand, boundedness of moments is a popular condition in the realm of laws of large numbers; unfortunately, it does not connect well with uniform integrability, hence the techniques used in this paper are not appropriate for such a condition to produce a result of complete convergence along subsequences. In addition, it is worth mentioning that we did not ask our sequences to obey any (in)dependence condition, no matter how weak that might be. In future works, we aim at blending various such hypotheses and finding new techniques for obtaining the complete convergence of the underlying random variables along subsequences.

Author Contributions

Conceptualization, G.S., D.L. and L.L.; Methodology, G.S., D.L. and L.L.; Writing—original draft, G.S., D.L. and L.L.; Writing—review & editing, G.S., D.L. and L.L. All authors have read and agreed to the published version of the manuscript.

Funding

The research of Deli Li was partially supported by a grant from the Natural Sciences and Engineering Research Council of Canada (RGPIN-2019-06065).

Data Availability Statement

No data was used for the research described in the article.

Conflicts of Interest

The authors declare that they have no known competing financial interests that could have appeared to influence the work reported in this paper.

References

  1. Stoica, G. The Baum-Katz theorem for bounded subsequences. Stat. Probab. Lett. 2008, 78, 924–926. [Google Scholar] [CrossRef]
  2. Karatzas, I.; Schachermayer, W. A weak law of large numbers for dependent random variables. Theory Probab. Its Appl. 2023, 68, 501–509. [Google Scholar] [CrossRef]
  3. Karatzas, I.; Schachermayer, W. A strong law of large numbers for positive random variables. Ill. J. Math. 2023, 67, 517–528. [Google Scholar] [CrossRef]
  4. von Weizsäcker, H. Can one drop the L1-boundedness in Komlós subsequence theorem? Am. Math. Mon. 2004, 111, 900–903. [Google Scholar] [CrossRef]
  5. Lesigne, E.; Volný, D. Large deviations for martingales. Stoch. Process. Their Appl. 2001, 96, 143–159. [Google Scholar] [CrossRef]
  6. Dilworth, S.J. Convergence of series of scalar- and vector-valued random variables and a subsequence principle in L2. Am. Math. Soc. 1987, 301, 375–384. [Google Scholar]
  7. Brooks, J.K.; Chacon, R.V. Continuity and compactness of measures. Adv. Math. 1980, 37, 16–26. [Google Scholar] [CrossRef]
  8. Castaing, C.; Saadoune, M. Komlós type convergence for random variables and random sets with applications to minimization problems. Adv. Math. Econ. 2007, 10, 1–29. [Google Scholar]
  9. Available online: https://mathoverflow.net/questions/168221/uniform-boundedness-in-l10-1-implies-finite-limsup-almost-everywhere-for (accessed on 8 September 2025).
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Stoica, G.; Li, D.; Liu, L. The Brooks–Chacon Biting Lemma, the Castaing–Saadoune Procedure, and the Baum–Katz Theorem Along Subsequences. Axioms 2025, 14, 762. https://doi.org/10.3390/axioms14100762

AMA Style

Stoica G, Li D, Liu L. The Brooks–Chacon Biting Lemma, the Castaing–Saadoune Procedure, and the Baum–Katz Theorem Along Subsequences. Axioms. 2025; 14(10):762. https://doi.org/10.3390/axioms14100762

Chicago/Turabian Style

Stoica, George, Deli Li, and Liping Liu. 2025. "The Brooks–Chacon Biting Lemma, the Castaing–Saadoune Procedure, and the Baum–Katz Theorem Along Subsequences" Axioms 14, no. 10: 762. https://doi.org/10.3390/axioms14100762

APA Style

Stoica, G., Li, D., & Liu, L. (2025). The Brooks–Chacon Biting Lemma, the Castaing–Saadoune Procedure, and the Baum–Katz Theorem Along Subsequences. Axioms, 14(10), 762. https://doi.org/10.3390/axioms14100762

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop