fbpx
Wikipedia

Boole's inequality

In probability theory, Boole's inequality, also known as the union bound, says that for any finite or countable set of events, the probability that at least one of the events happens is no greater than the sum of the probabilities of the individual events. This inequality provides an upper bound on the probability of occurrence of at least one of a countable number of events in terms of the individual probabilities of the events. Boole's inequality is named for its discoverer, George Boole.[1]

Formally, for a countable set of events A1, A2, A3, ..., we have

In measure-theoretic terms, Boole's inequality follows from the fact that a measure (and certainly any probability measure) is σ-sub-additive.

Proof edit

Proof using induction edit

Boole's inequality may be proved for finite collections of   events using the method of induction.

For the   case, it follows that

 

For the case  , we have

 

Since   and because the union operation is associative, we have

 

Since

 

by the first axiom of probability, we have

 

and therefore

 

Proof without using induction edit

For any events in  in our probability space we have

 

One of the axioms of a probability space is that if   are disjoint subsets of the probability space then

 

this is called countable additivity.

If we modify the sets  , so they become disjoint,

 

we can show that

 

by proving both directions of inclusion.

Suppose  . Then   for some minimum   such that  . Therefore  . So the first inclusion is true:  .

Next suppose that  . It follows that   for some  . And   so  , and we have the other inclusion:  .

By construction of each  ,  . For   it is the case that  

So, we can conclude that the desired inequality is true:

 

Bonferroni inequalities edit

Boole's inequality may be generalized to find upper and lower bounds on the probability of finite unions of events.[2] These bounds are known as Bonferroni inequalities, after Carlo Emilio Bonferroni; see Bonferroni (1936).

Let

 

for all integers k in {1, ..., n}.

Then, when   is odd:

 

holds, and when   is even:

 

holds.

The equalities follow from the inclusion–exclusion principle, and Boole's inequality is the special case of  .

Proof for odd K edit

Let  , where   for each  . These such   partition the sample space, and for each   and every  ,   is either contained in   or disjoint from it.

If  , then   contributes 0 to both sides of the inequality.

Otherwise, assume   is contained in exactly   of the  . Then   contributes exactly   to the right side of the inequality, while it contributes

 

to the left side of the inequality. However, by Pascal's rule, this is equal to

 

which telescopes to

 

Thus, the inequality holds for all events  , and so by summing over  , we obtain the desired inequality:

 

The proof for even   is nearly identical.[3]

Example edit

Suppose that you are estimating 5 parameters based on a random sample, and you can control each parameter separately. If you want your estimations of all five parameters to be good with a chance 95%, what should you do to each parameter?

Tuning each parameter's chance to be good to within 95% is not enough because "all are good" is a subset of each event "Estimate i is good". We can use Boole's Inequality to solve this problem. By finding the complement of event "all five are good", we can change this question into another condition:

P( at least one estimation is bad) = 0.05 ≤ P( A1 is bad) + P( A2 is bad) + P( A3 is bad) + P( A4 is bad) + P( A5 is bad)

One way is to make each of them equal to 0.05/5 = 0.01, that is 1%. In another word, you have to guarantee each estimate good to 99%( for example, by constructing a 99% confidence interval) to make sure the total estimation to be good with a chance 95%. This is called the Bonferroni Method of simultaneous inference.

See also edit

References edit

  1. ^ Boole, George (1847). The Mathematical Analysis of Logic. Philosophical Library. ISBN 9780802201546.
  2. ^ Casella, George; Berger, Roger L. (2002). Statistical Inference. Duxbury. pp. 11–13. ISBN 0-534-24312-6.
  3. ^ Venkatesh, Santosh (2012). The Theory of Probability. Cambridge University Press. pp. 94–99, 113–115. ISBN 978-0-534-24312-8.

Other related articles edit

This article incorporates material from Bonferroni inequalities on PlanetMath, which is licensed under the Creative Commons Attribution/Share-Alike License.

boole, inequality, this, article, includes, list, general, references, lacks, sufficient, corresponding, inline, citations, please, help, improve, this, article, introducing, more, precise, citations, february, 2012, learn, when, remove, this, message, probabi. This 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 February 2012 Learn how and when to remove this message In probability theory Boole s inequality also known as the union bound says that for any finite or countable set of events the probability that at least one of the events happens is no greater than the sum of the probabilities of the individual events This inequality provides an upper bound on the probability of occurrence of at least one of a countable number of events in terms of the individual probabilities of the events Boole s inequality is named for its discoverer George Boole 1 Formally for a countable set of events A1 A2 A3 we have P i 1 A i i 1 P A i displaystyle mathbb P left bigcup i 1 infty A i right leq sum i 1 infty mathbb P A i In measure theoretic terms Boole s inequality follows from the fact that a measure and certainly any probability measure is s sub additive Contents 1 Proof 1 1 Proof using induction 1 2 Proof without using induction 2 Bonferroni inequalities 2 1 Proof for odd K 2 2 Example 3 See also 4 References 5 Other related articlesProof editProof using induction edit Boole s inequality may be proved for finite collections of n displaystyle n nbsp events using the method of induction For the n 1 displaystyle n 1 nbsp case it follows that P A 1 P A 1 displaystyle mathbb P A 1 leq mathbb P A 1 nbsp For the case n displaystyle n nbsp we have P i 1 n A i i 1 n P A i displaystyle mathbb P left bigcup i 1 n A i right leq sum i 1 n mathbb P A i nbsp Since P A B P A P B P A B displaystyle mathbb P A cup B mathbb P A mathbb P B mathbb P A cap B nbsp and because the union operation is associative we have P i 1 n 1 A i P i 1 n A i P A n 1 P i 1 n A i A n 1 displaystyle mathbb P left bigcup i 1 n 1 A i right mathbb P left bigcup i 1 n A i right mathbb P A n 1 mathbb P left bigcup i 1 n A i cap A n 1 right nbsp Since P i 1 n A i A n 1 0 displaystyle mathbb P left bigcup i 1 n A i cap A n 1 right geq 0 nbsp by the first axiom of probability we have P i 1 n 1 A i P i 1 n A i P A n 1 displaystyle mathbb P left bigcup i 1 n 1 A i right leq mathbb P left bigcup i 1 n A i right mathbb P A n 1 nbsp and therefore P i 1 n 1 A i i 1 n P A i P A n 1 i 1 n 1 P A i displaystyle mathbb P left bigcup i 1 n 1 A i right leq sum i 1 n mathbb P A i mathbb P A n 1 sum i 1 n 1 mathbb P A i nbsp Proof without using induction edit For any events in A 1 A 2 A 3 displaystyle A 1 A 2 A 3 dots nbsp in our probability space we have P i A i i P A i displaystyle mathbb P left bigcup i A i right leq sum i mathbb P A i nbsp One of the axioms of a probability space is that if B 1 B 2 B 3 displaystyle B 1 B 2 B 3 dots nbsp are disjoint subsets of the probability space then P i B i i P B i displaystyle mathbb P left bigcup i B i right sum i mathbb P B i nbsp this is called countable additivity If we modify the sets A i displaystyle A i nbsp so they become disjoint B i A i j 1 i 1 A j displaystyle B i A i bigcup j 1 i 1 A j nbsp we can show that i 1 B i i 1 A i displaystyle bigcup i 1 infty B i bigcup i 1 infty A i nbsp by proving both directions of inclusion Suppose x i 1 A i displaystyle x in bigcup i 1 infty A i nbsp Then x A k displaystyle x in A k nbsp for some minimum k displaystyle k nbsp such that i lt k x A i displaystyle i lt k implies x notin A i nbsp Therefore x B k A k j 1 k 1 A j displaystyle x in B k A k bigcup j 1 k 1 A j nbsp So the first inclusion is true i 1 A i i 1 B i displaystyle bigcup i 1 infty A i subset bigcup i 1 infty B i nbsp Next suppose that x i 1 B i displaystyle x in bigcup i 1 infty B i nbsp It follows that x B k displaystyle x in B k nbsp for some k displaystyle k nbsp And B k A k j 1 k 1 A j displaystyle B k A k bigcup j 1 k 1 A j nbsp so x A k displaystyle x in A k nbsp and we have the other inclusion i 1 B i i 1 A i displaystyle bigcup i 1 infty B i subset bigcup i 1 infty A i nbsp By construction of each B i displaystyle B i nbsp B i A i displaystyle B i subset A i nbsp For B A displaystyle B subset A nbsp it is the case that P B P A displaystyle mathbb P B leq mathbb P A nbsp So we can conclude that the desired inequality is true P i A i P i B i i P B i i P A i displaystyle mathbb P left bigcup i A i right mathbb P left bigcup i B i right sum i mathbb P B i leq sum i mathbb P A i nbsp Bonferroni inequalities editBoole s inequality may be generalized to find upper and lower bounds on the probability of finite unions of events 2 These bounds are known as Bonferroni inequalities after Carlo Emilio Bonferroni see Bonferroni 1936 Let S 1 i 1 n P A i S 2 1 i 1 lt i 2 n P A i 1 A i 2 S k 1 i 1 lt lt i k n P A i 1 A i k displaystyle S 1 sum i 1 n mathbb P A i quad S 2 sum 1 leq i 1 lt i 2 leq n mathbb P A i 1 cap A i 2 quad ldots quad S k sum 1 leq i 1 lt cdots lt i k leq n mathbb P A i 1 cap cdots cap A i k nbsp for all integers k in 1 n Then when K n displaystyle K leq n nbsp is odd j 1 K 1 j 1 S j P i 1 n A i j 1 n 1 j 1 S j displaystyle sum j 1 K 1 j 1 S j geq mathbb P left bigcup i 1 n A i right sum j 1 n 1 j 1 S j nbsp holds and when K n displaystyle K leq n nbsp is even j 1 K 1 j 1 S j P i 1 n A i j 1 n 1 j 1 S j displaystyle sum j 1 K 1 j 1 S j leq mathbb P left bigcup i 1 n A i right sum j 1 n 1 j 1 S j nbsp holds The equalities follow from the inclusion exclusion principle and Boole s inequality is the special case of K 1 displaystyle K 1 nbsp Proof for odd K edit Let E i 1 n B i displaystyle E bigcap i 1 n B i nbsp where B i A i A i c displaystyle B i in A i A i c nbsp for each i 1 n displaystyle i 1 dots n nbsp These such E displaystyle E nbsp partition the sample space and for each E displaystyle E nbsp and every i displaystyle i nbsp E displaystyle E nbsp is either contained in A i displaystyle A i nbsp or disjoint from it If E i 1 n A i c displaystyle E bigcap i 1 n A i c nbsp then E displaystyle E nbsp contributes 0 to both sides of the inequality Otherwise assume E displaystyle E nbsp is contained in exactly L displaystyle L nbsp of the A i displaystyle A i nbsp Then E displaystyle E nbsp contributes exactly P E displaystyle mathbb P E nbsp to the right side of the inequality while it contributes j 1 K 1 j 1 L j P E displaystyle sum j 1 K 1 j 1 L choose j mathbb P E nbsp to the left side of the inequality However by Pascal s rule this is equal to j 1 K 1 j 1 L 1 j 1 L 1 j P E displaystyle sum j 1 K 1 j 1 left L 1 choose j 1 L 1 choose j right mathbb P E nbsp which telescopes to 1 L 1 K P E P E displaystyle left 1 L 1 choose K right mathbb P E geq mathbb P E nbsp Thus the inequality holds for all events E displaystyle E nbsp and so by summing over E displaystyle E nbsp we obtain the desired inequality j 1 K 1 j 1 S j P i 1 n A i displaystyle sum j 1 K 1 j 1 S j geq mathbb P left bigcup i 1 n A i right nbsp The proof for even K displaystyle K nbsp is nearly identical 3 Example edit Suppose that you are estimating 5 parameters based on a random sample and you can control each parameter separately If you want your estimations of all five parameters to be good with a chance 95 what should you do to each parameter Tuning each parameter s chance to be good to within 95 is not enough because all are good is a subset of each event Estimate i is good We can use Boole s Inequality to solve this problem By finding the complement of event all five are good we can change this question into another condition P at least one estimation is bad 0 05 P A1 is bad P A2 is bad P A3 is bad P A4 is bad P A5 is bad One way is to make each of them equal to 0 05 5 0 01 that is 1 In another word you have to guarantee each estimate good to 99 for example by constructing a 99 confidence interval to make sure the total estimation to be good with a chance 95 This is called the Bonferroni Method of simultaneous inference See also editDiluted inclusion exclusion principle Schuette Nesbitt formula Boole Frechet inequalities Probability of the union of pairwise independent eventsReferences edit Boole George 1847 The Mathematical Analysis of Logic Philosophical Library ISBN 9780802201546 Casella George Berger Roger L 2002 Statistical Inference Duxbury pp 11 13 ISBN 0 534 24312 6 Venkatesh Santosh 2012 The Theory of Probability Cambridge University Press pp 94 99 113 115 ISBN 978 0 534 24312 8 Other related articles editBonferroni Carlo E 1936 Teoria statistica delle classi e calcolo delle probabilita Pubbl D R Ist Super Di Sci Econom E Commerciali di Firenze in Italian 8 1 62 Zbl 0016 41103 Dohmen Klaus 2003 Improved Bonferroni Inequalities via Abstract Tubes Inequalities and Identities of Inclusion Exclusion Type Lecture Notes in Mathematics vol 1826 Berlin Springer Verlag pp viii 113 ISBN 3 540 20025 8 MR 2019293 Zbl 1026 05009 Galambos Janos Simonelli Italo 1996 Bonferroni Type Inequalities with Applications Probability and Its Applications New York Springer Verlag pp x 269 ISBN 0 387 94776 0 MR 1402242 Zbl 0869 60014 Galambos Janos 1977 Bonferroni inequalities Annals of Probability 5 4 577 581 doi 10 1214 aop 1176995765 JSTOR 2243081 MR 0448478 Zbl 0369 60018 Galambos Janos 2001 1994 Bonferroni inequalities Encyclopedia of Mathematics EMS Press This article incorporates material from Bonferroni inequalities on PlanetMath which is licensed under the Creative Commons Attribution Share Alike License Retrieved from https en wikipedia org w index php title Boole 27s inequality amp oldid 1218160336, wikipedia, wiki, book, books, library,

article

, read, download, free, free download, mp3, video, mp4, 3gp, jpg, jpeg, gif, png, picture, music, song, movie, book, game, games.