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Borel–Cantelli lemma

In probability theory, the Borel–Cantelli lemma is a theorem about sequences of events. In general, it is a result in measure theory. It is named after Émile Borel and Francesco Paolo Cantelli, who gave statement to the lemma in the first decades of the 20th century.[1][2] A related result, sometimes called the second Borel–Cantelli lemma, is a partial converse of the first Borel–Cantelli lemma. The lemma states that, under certain conditions, an event will have probability of either zero or one. Accordingly, it is the best-known of a class of similar theorems, known as zero-one laws. Other examples include Kolmogorov's zero–one law and the Hewitt–Savage zero–one law.

Statement of lemma for probability spaces edit

Let E1,E2,... be a sequence of events in some probability space. The Borel–Cantelli lemma states:[3][4]

Borel–Cantelli lemma — If the sum of the probabilities of the events {En} is finite

 
then the probability that infinitely many of them occur is 0, that is,
 

Here, "lim sup" denotes limit supremum of the sequence of events, and each event is a set of outcomes. That is, lim sup En is the set of outcomes that occur infinitely many times within the infinite sequence of events (En). Explicitly,

 

The set lim sup En is sometimes denoted {En i.o. }, where "i.o." stands for "infinitely often". The theorem therefore asserts that if the sum of the probabilities of the events En is finite, then the set of all outcomes that are "repeated" infinitely many times must occur with probability zero. Note that no assumption of independence is required.

Example edit

Suppose (Xn) is a sequence of random variables with Pr(Xn = 0) = 1/n2 for each n. The probability that Xn = 0 occurs for infinitely many n is equivalent to the probability of the intersection of infinitely many [Xn = 0] events. The intersection of infinitely many such events is a set of outcomes common to all of them. However, the sum ΣPr(Xn = 0) converges to π2/6 ≈ 1.645 < ∞, and so the Borel–Cantelli Lemma states that the set of outcomes that are common to infinitely many such events occurs with probability zero. Hence, the probability of Xn = 0 occurring for infinitely many n is 0. Almost surely (i.e., with probability 1), Xn is nonzero for all but finitely many n.

Proof edit

Let (En) be a sequence of events in some probability space.

The sequence of events   is non-increasing:

 

By continuity from above,

 

By subadditivity,

 

By original assumption,   As the series   converges,

 
as required.[5]

General measure spaces edit

For general measure spaces, the Borel–Cantelli lemma takes the following form:

Borel–Cantelli Lemma for measure spaces — Let μ be a (positive) measure on a set X, with σ-algebra F, and let (An) be a sequence in F. If

 
then
 

Converse result edit

A related result, sometimes called the second Borel–Cantelli lemma, is a partial converse of the first Borel–Cantelli lemma. The lemma states: If the events En are independent and the sum of the probabilities of the En diverges to infinity, then the probability that infinitely many of them occur is 1. That is:[4]

Second Borel–Cantelli Lemma — If   and the events   are independent, then  

The assumption of independence can be weakened to pairwise independence, but in that case the proof is more difficult.

The infinite monkey theorem follows from the Second lemma.

Example edit

The lemma can be applied to give a covering theorem in Rn. Specifically (Stein 1993, Lemma X.2.1), if Ej is a collection of Lebesgue measurable subsets of a compact set in Rn such that

 
then there is a sequence Fj of translates
 
such that
 
apart from a set of measure zero.

Proof edit

Suppose that   and the events   are independent. It is sufficient to show the event that the En's did not occur for infinitely many values of n has probability 0. This is just to say that it is sufficient to show that

 

Noting that:

 
it is enough to show:  . Since the   are independent:
 
The convergence test for infinite products guarantees that the product above is 0, if   diverges. This completes the proof.

Counterpart edit

Another related result is the so-called counterpart of the Borel–Cantelli lemma. It is a counterpart of the Lemma in the sense that it gives a necessary and sufficient condition for the limsup to be 1 by replacing the independence assumption by the completely different assumption that   is monotone increasing for sufficiently large indices. This Lemma says:

Let   be such that  , and let   denote the complement of  . Then the probability of infinitely many   occur (that is, at least one   occurs) is one if and only if there exists a strictly increasing sequence of positive integers   such that

 

This simple result can be useful in problems such as for instance those involving hitting probabilities for stochastic process with the choice of the sequence   usually being the essence.

Kochen–Stone edit

Let   be a sequence of events with   and   Then there is a positive probability that   occur infinitely often.

See also edit

References edit

  1. ^ E. Borel, "Les probabilités dénombrables et leurs applications arithmetiques" Rend. Circ. Mat. Palermo (2) 27 (1909) pp. 247–271.
  2. ^ F.P. Cantelli, "Sulla probabilità come limite della frequenza", Atti Accad. Naz. Lincei 26:1 (1917) pp.39–45.
  3. ^ Klenke, Achim (2006). Probability Theory. Springer-Verlag. ISBN 978-1-84800-047-6.
  4. ^ a b Shiryaev, Albert N. (2016). Probability-1: Volume 1. Graduate Texts in Mathematics. Vol. 95. New York, NY: Springer New York. doi:10.1007/978-0-387-72206-1. ISBN 978-0-387-72205-4.
  5. ^ (PDF). Archived from the original (PDF) on 2010-06-14.
  • Prokhorov, A.V. (2001) [1994], "Borel–Cantelli lemma", Encyclopedia of Mathematics, EMS Press
  • Feller, William (1961), An Introduction to Probability Theory and Its Application, John Wiley & Sons.
  • Stein, Elias (1993), Harmonic analysis: Real-variable methods, orthogonality, and oscillatory integrals, Princeton University Press.
  • Bruss, F. Thomas (1980), "A counterpart of the Borel Cantelli Lemma", J. Appl. Probab., 17: 1094–1101, doi:10.2307/3213220, JSTOR 3213220, S2CID 250344204.
  • Durrett, Rick. "Probability: Theory and Examples." Duxbury advanced series, Third Edition, Thomson Brooks/Cole, 2005.

External links edit

  • Refer for a simple proof of the Borel Cantelli Lemma

borel, cantelli, lemma, probability, theory, theorem, about, sequences, events, general, result, measure, theory, named, after, Émile, borel, francesco, paolo, cantelli, gave, statement, lemma, first, decades, 20th, century, related, result, sometimes, called,. In probability theory the Borel Cantelli lemma is a theorem about sequences of events In general it is a result in measure theory It is named after Emile Borel and Francesco Paolo Cantelli who gave statement to the lemma in the first decades of the 20th century 1 2 A related result sometimes called the second Borel Cantelli lemma is a partial converse of the first Borel Cantelli lemma The lemma states that under certain conditions an event will have probability of either zero or one Accordingly it is the best known of a class of similar theorems known as zero one laws Other examples include Kolmogorov s zero one law and the Hewitt Savage zero one law Contents 1 Statement of lemma for probability spaces 1 1 Example 2 Proof 3 General measure spaces 4 Converse result 4 1 Example 4 2 Proof 5 Counterpart 6 Kochen Stone 7 See also 8 References 9 External linksStatement of lemma for probability spaces editLet E1 E2 be a sequence of events in some probability space The Borel Cantelli lemma states 3 4 Borel Cantelli lemma If the sum of the probabilities of the events En is finite n 1 Pr E n lt displaystyle sum n 1 infty Pr E n lt infty nbsp then the probability that infinitely many of them occur is 0 that is Pr lim sup n E n 0 displaystyle Pr left limsup n to infty E n right 0 nbsp Here lim sup denotes limit supremum of the sequence of events and each event is a set of outcomes That is lim sup En is the set of outcomes that occur infinitely many times within the infinite sequence of events En Explicitly lim sup n E n n 1 k n E k displaystyle limsup n to infty E n bigcap n 1 infty bigcup k n infty E k nbsp The set lim sup En is sometimes denoted En i o where i o stands for infinitely often The theorem therefore asserts that if the sum of the probabilities of the events En is finite then the set of all outcomes that are repeated infinitely many times must occur with probability zero Note that no assumption of independence is required Example edit Suppose Xn is a sequence of random variables with Pr Xn 0 1 n2 for each n The probability that Xn 0 occurs for infinitely many n is equivalent to the probability of the intersection of infinitely many Xn 0 events The intersection of infinitely many such events is a set of outcomes common to all of them However the sum SPr Xn 0 converges to p 2 6 1 645 lt and so the Borel Cantelli Lemma states that the set of outcomes that are common to infinitely many such events occurs with probability zero Hence the probability of Xn 0 occurring for infinitely many n is 0 Almost surely i e with probability 1 Xn is nonzero for all but finitely many n Proof editLet En be a sequence of events in some probability space The sequence of events n N E n N 1 textstyle left bigcup n N infty E n right N 1 infty nbsp is non increasing n 1 E n n 2 E n n N E n n N 1 E n lim sup n E n displaystyle bigcup n 1 infty E n supseteq bigcup n 2 infty E n supseteq cdots supseteq bigcup n N infty E n supseteq bigcup n N 1 infty E n supseteq cdots supseteq limsup n to infty E n nbsp By continuity from above Pr lim sup n E n lim N Pr n N E n displaystyle Pr limsup n to infty E n lim N to infty Pr left bigcup n N infty E n right nbsp By subadditivity Pr n N E n n N Pr E n displaystyle Pr left bigcup n N infty E n right leq sum n N infty Pr E n nbsp By original assumption n 1 Pr E n lt textstyle sum n 1 infty Pr E n lt infty nbsp As the series n 1 Pr E n textstyle sum n 1 infty Pr E n nbsp converges lim N n N Pr E n 0 displaystyle lim N to infty sum n N infty Pr E n 0 nbsp as required 5 General measure spaces editFor general measure spaces the Borel Cantelli lemma takes the following form Borel Cantelli Lemma for measure spaces Let m be a positive measure on a set X with s algebra F and let An be a sequence in F If n 1 m A n lt displaystyle sum n 1 infty mu A n lt infty nbsp then m lim sup n A n 0 displaystyle mu left limsup n to infty A n right 0 nbsp Converse result editA related result sometimes called the second Borel Cantelli lemma is a partial converse of the first Borel Cantelli lemma The lemma states If the events En are independent and the sum of the probabilities of the En diverges to infinity then the probability that infinitely many of them occur is 1 That is 4 Second Borel Cantelli Lemma If n 1 Pr E n displaystyle sum n 1 infty Pr E n infty nbsp and the events E n n 1 displaystyle E n n 1 infty nbsp are independent then Pr lim sup n E n 1 displaystyle Pr limsup n to infty E n 1 nbsp The assumption of independence can be weakened to pairwise independence but in that case the proof is more difficult The infinite monkey theorem follows from the Second lemma Example edit The lemma can be applied to give a covering theorem in Rn Specifically Stein 1993 Lemma X 2 1 if Ej is a collection of Lebesgue measurable subsets of a compact set in Rn such that j m E j displaystyle sum j mu E j infty nbsp then there is a sequence Fj of translates F j E j x j displaystyle F j E j x j nbsp such that lim sup F j n 1 k n F k R n displaystyle lim sup F j bigcap n 1 infty bigcup k n infty F k mathbb R n nbsp apart from a set of measure zero Proof edit Suppose that n 1 Pr E n textstyle sum n 1 infty Pr E n infty nbsp and the events E n n 1 displaystyle E n n 1 infty nbsp are independent It is sufficient to show the event that the En s did not occur for infinitely many values of n has probability 0 This is just to say that it is sufficient to show that1 Pr lim sup n E n 0 displaystyle 1 Pr limsup n to infty E n 0 nbsp Noting that 1 Pr lim sup n E n 1 Pr E n i o Pr E n i o c Pr N 1 n N E n c Pr N 1 n N E n c Pr lim inf n E n c lim N Pr n N E n c displaystyle begin aligned 1 Pr limsup n to infty E n amp 1 Pr left E n text i o right Pr left E n text i o c right amp Pr left left bigcap N 1 infty bigcup n N infty E n right c right Pr left bigcup N 1 infty bigcap n N infty E n c right amp Pr left liminf n to infty E n c right lim N to infty Pr left bigcap n N infty E n c right end aligned nbsp it is enough to show Pr n N E n c 0 textstyle Pr left bigcap n N infty E n c right 0 nbsp Since the E n n 1 displaystyle E n n 1 infty nbsp are independent Pr n N E n c n N Pr E n c n N 1 Pr E n displaystyle begin aligned Pr left bigcap n N infty E n c right amp prod n N infty Pr E n c amp prod n N infty 1 Pr E n end aligned nbsp The convergence test for infinite products guarantees that the product above is 0 if n N Pr E n textstyle sum n N infty Pr E n nbsp diverges This completes the proof Counterpart editAnother related result is the so called counterpart of the Borel Cantelli lemma It is a counterpart of the Lemma in the sense that it gives a necessary and sufficient condition for the limsup to be 1 by replacing the independence assumption by the completely different assumption that A n displaystyle A n nbsp is monotone increasing for sufficiently large indices This Lemma says Let A n displaystyle A n nbsp be such that A k A k 1 displaystyle A k subseteq A k 1 nbsp and let A displaystyle bar A nbsp denote the complement of A displaystyle A nbsp Then the probability of infinitely many A k displaystyle A k nbsp occur that is at least one A k displaystyle A k nbsp occurs is one if and only if there exists a strictly increasing sequence of positive integers t k displaystyle t k nbsp such that k Pr A t k 1 A t k displaystyle sum k Pr A t k 1 mid bar A t k infty nbsp This simple result can be useful in problems such as for instance those involving hitting probabilities for stochastic process with the choice of the sequence t k displaystyle t k nbsp usually being the essence Kochen Stone editLet A n displaystyle A n nbsp be a sequence of events with Pr A n textstyle sum Pr A n infty nbsp and lim inf k 1 m n k Pr A m A n n 1 k Pr A n 2 lt textstyle liminf k to infty frac sum 1 leq m n leq k Pr A m cap A n left sum n 1 k Pr A n right 2 lt infty nbsp Then there is a positive probability that A n displaystyle A n nbsp occur infinitely often See also editLevy s zero one law Kuratowski convergence Infinite monkey theoremReferences editThis article includes a list of general references but it lacks sufficient corresponding inline citations Please help to improve this article by introducing more precise citations November 2009 Learn how and when to remove this template message E Borel Les probabilites denombrables et leurs applications arithmetiques Rend Circ Mat Palermo 2 27 1909 pp 247 271 F P Cantelli Sulla probabilita come limite della frequenza Atti Accad Naz Lincei 26 1 1917 pp 39 45 Klenke Achim 2006 Probability Theory Springer Verlag ISBN 978 1 84800 047 6 a b Shiryaev Albert N 2016 Probability 1 Volume 1 Graduate Texts in Mathematics Vol 95 New York NY Springer New York doi 10 1007 978 0 387 72206 1 ISBN 978 0 387 72205 4 Romik Dan Probability Theory Lecture Notes Fall 2009 UC Davis PDF Archived from the original PDF on 2010 06 14 Prokhorov A V 2001 1994 Borel Cantelli lemma Encyclopedia of Mathematics EMS Press Feller William 1961 An Introduction to Probability Theory and Its Application John Wiley amp Sons Stein Elias 1993 Harmonic analysis Real variable methods orthogonality and oscillatory integrals Princeton University Press Bruss F Thomas 1980 A counterpart of the Borel Cantelli Lemma J Appl Probab 17 1094 1101 doi 10 2307 3213220 JSTOR 3213220 S2CID 250344204 Durrett Rick Probability Theory and Examples Duxbury advanced series Third Edition Thomson Brooks Cole 2005 External links editPlanet Math Proof Refer for a simple proof of the Borel Cantelli Lemma Retrieved from https en wikipedia org w index php title Borel Cantelli lemma amp oldid 1174056553, wikipedia, wiki, book, books, library,

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