Jump to content

Infinite divisibility (probability): Difference between revisions

From Wikipedia, the free encyclopedia
Content deleted Content added
Inquisitus (talk | contribs)
mNo edit summary
 
(46 intermediate revisions by 29 users not shown)
Line 1: Line 1:
In [[probability theory]], a [[probability distribution]] is '''infinitely divisible''' if it can be expressed as the probability distribution of the sum of an arbitrary number of [[Independent and identically distributed random variables|independent and identically distributed]] [[random variable]]s. The [[characteristic function (probability theory)|characteristic function]] of any infinitely divisible distribution is then called an '''infinitely divisible characteristic function'''.<ref name="Lukacs">Lukacs, E. (1970) ''Characteristic Functions'', Griffin , London. p.&nbsp;107</ref>
In [[probability theory]], a [[probability distribution]] is '''infinitely divisible''' if it can be expressed as the probability distribution of the sum of an arbitrary number of [[Independent and identically distributed random variables|independent and identically distributed]] (i.i.d.) [[random variable]]s. The [[characteristic function (probability theory)|characteristic function]] of any infinitely divisible distribution is then called an '''infinitely divisible characteristic function'''.<ref name="Lukacs">Lukacs, E. (1970) ''Characteristic Functions'', Griffin, London. p.&nbsp;107</ref>


More rigorously, the probability distribution ''F'' is infinitely divisible if, for every positive integer ''n'', there exist ''n'' independent identically distributed random variables ''X''<sub>''n''1</sub>, ..., ''X''<sub>''nn''</sub> whose sum ''S''<sub>''n''</sub> = ''X''<sub>''n''1</sub> + &hellip; + ''X''<sub>''nn''</sub> has the distribution ''F''.
More rigorously, the probability distribution ''F'' is infinitely divisible if, for every positive integer ''n'', there exist ''n'' i.i.d. random variables ''X''<sub>''n''1</sub>, ..., ''X''<sub>''nn''</sub> whose sum ''S''<sub>''n''</sub> = ''X''<sub>''n''1</sub> + ... + ''X''<sub>''nn''</sub> has the same distribution ''F''.


The concept of infinite divisibility of probability distributions was introduced in 1929 by [[Bruno de Finetti]]. This type of [[Decomposable distribution|decomposition of a distribution]] is used in [[probability]] and [[statistics]] to find families of probability distributions that might be natural choices for certain models or applications. Infinitely divisible distributions play an important role in probability theory in the context of limit theorems.<ref name="Lukacs" />
The concept of infinite divisibility of probability distributions was introduced in 1929 by [[Bruno de Finetti]]. This type of [[Decomposable distribution|decomposition of a distribution]] is used in [[probability]] and [[statistics]] to find families of probability distributions that might be natural choices for certain models or applications. Infinitely divisible distributions play an important role in probability theory in the context of limit theorems.<ref name="Lukacs" />


==Examples==
==Examples==
Examples of continuous distributions that are infinitely divisible are the [[normal distribution]], the [[Cauchy distribution]], the [[Lévy distribution]], and all other members of the [[stable distribution]] family, as well as the [[Gamma distribution]], the [[chi-square distribution]], the [[Wald distribution]], the [[Log-normal distribution]]<ref name=OlofThorin1978LNInfDivi>{{cite journal|last1=Thorin|first1=Olof|title=On the infinite divisibility of the lognormal distribution|journal=Scandinavian Actuarial Journal|volume=1977|issue=3|year=1977|pages=121–148|issn=0346-1238|doi=10.1080/03461238.1977.10405635}}</ref> and the [[Student's t-distribution]].


Among the discrete distributions, examples are the [[Poisson distribution]] and the [[negative binomial distribution]] (and hence the [[geometric distribution]] also). The [[one-point distribution]] whose only possible outcome is 0 is also (trivially) infinitely divisible.
The [[Poisson distribution]], the [[negative binomial distribution]], the [[Gamma distribution]] and the [[degenerate distribution]] are examples of infinitely divisible distributions; as are the [[normal distribution]], [[Cauchy distribution]] and all other members of the [[stable distribution]] family. The [[Uniform distribution (continuous)|uniform distribution]] and the [[binomial distribution]] are not infinitely divisible.<ref>{{cite book|title=Lévy Processes and Infinitely Divisible Distributions|author=Sato, Ken-iti|page=31|year=1999|publisher=Cambridge University Press|isbn=978-0-521-55302-5}}</ref> The [[Student's t-distribution]] is infinitely divisible, while the distribution of the reciprocal of a random variable having a Student's t-distribution, is not.<ref>Johnson, N.L., Kotz, S., Balakrishnan, N. (1995) ''Continuous Univariate Distributions, Volume 2,'' 2nd Edition. Wiley, ISBN 0-471-58494-0 (Chapter 28, page 368)</ref>


The [[Uniform distribution (continuous)|uniform distribution]] and the [[binomial distribution]] are ''not'' infinitely divisible, nor are any other distributions with bounded [[support (mathematics)|support]] (≈ finite-sized [[Domain of a function|domain]]), other than the [[one-point distribution]] mentioned above.<ref>{{cite book |author=Sato, Ken-iti |year=1999 |title=Lévy Processes and Infinitely Divisible Distributions |pages=31, 148 |publisher=Cambridge University Press |isbn=978-0-521-55302-5}}</ref> The distribution of the [[Multiplicative inverse|reciprocal]] of a random variable having a Student's t-distribution is also not infinitely divisible.<ref>{{cite book |author1=Johnson, N.L. |author2=Kotz, S. |author3=Balakrishnan, N. |year=1995 |title=Continuous Univariate Distributions |edition=2nd |publisher=Wiley |ISBN=0-471-58494-0 |at=volume&nbsp;2, chapter&nbsp;28, page&nbsp;368}}</ref>
All the [[Compound Poisson distribution]]s are infinitely divisible, but the converse is not true.

Any [[compound Poisson distribution]] is infinitely divisible; this follows immediately from the definition.


==Limit theorem==
==Limit theorem==


Infinitely divisible distributions appear in a broad generalization of the [[central limit theorem]]: the limit as ''n'' &rarr; +&infin; of the sum ''S''<sub>''n''</sub> = ''X''<sub>''n''1</sub> + &hellip; ''X''<sub>''nn''</sub> of [[statistical independence|independent]] uniformly asymptotically negligible (u.a.n.) random variables within a triangular array
Infinitely divisible distributions appear in a broad generalization of the [[central limit theorem]]: the limit as ''n'' &rarr; +&infin; of the sum ''S''<sub>''n''</sub> = ''X''<sub>''n''1</sub> + ... + ''X''<sub>''nn''</sub> of [[statistical independence|independent]] uniformly asymptotically negligible (u.a.n.) random variables within a triangular array
:<math>
:<math>
\begin{array}{cccc}
\begin{array}{cccc}
Line 35: Line 38:
{{main|Lévy process}}
{{main|Lévy process}}


Every infinitely divisible probability distribution corresponds in a natural way to a [[Lévy process]]. A Lévy process is a [[stochastic process]] {&nbsp;''L<sub>t</sub>''&nbsp;:&nbsp;''t''&nbsp;≥&nbsp;0&nbsp;} with stationary independent increments, where ''stationary'' means that for ''s''&nbsp;<&nbsp;''t'', the [[probability distribution]] of ''L''<sub>''t''</sub> − ''L''<sub>''s''</sub> depends only on ''t''&nbsp;−&nbsp;''s'' and where ''independent increments'' means that that difference ''L''<sub>''t''</sub> − ''L''<sub>''s''</sub> is [[statistical independence|independent]] of the corresponding difference on any interval not overlapping with [''s'',&nbsp;''t''], and similarly for any finite number of mutually non-overlapping intervals.
Every infinitely divisible probability distribution corresponds in a natural way to a [[Lévy process]]. A Lévy process is a [[stochastic process]] {&nbsp;''L<sub>t</sub>''&nbsp;:&nbsp;''t''&nbsp;≥&nbsp;0&nbsp;} with [[stationary increments|stationary]] [[independent increments]], where ''stationary'' means that for ''s''&nbsp;<&nbsp;''t'', the [[probability distribution]] of ''L''<sub>''t''</sub> − ''L''<sub>''s''</sub> depends only on ''t''&nbsp;−&nbsp;''s'' and where ''independent increments'' means that that difference ''L''<sub>''t''</sub> − ''L''<sub>''s''</sub> is [[statistical independence|independent]] of the corresponding difference on any interval not overlapping with [''s'',&nbsp;''t''], and similarly for any finite number of mutually non-overlapping intervals.


If {&nbsp;''L<sub>t</sub>''&nbsp;:&nbsp;''t''&nbsp;≥&nbsp;0&nbsp;} is a Lévy process then, for any ''t''&nbsp;≥&nbsp;0, the random variable ''L''<sub>''t''</sub> will be infinitely divisible: for any ''n'', we can choose (''X''<sub>''n''0</sub>, ''X''<sub>''n''1</sub>, , ''X''<sub>''nn''</sub>) = (''L''<sub>''t''/''n''</sub> − ''L''<sub>0</sub>, ''L''<sub>2''t''/''n''</sub> − ''L''<sub>''t''/''n''</sub>, , ''L''<sub>''t''</sub> − ''L''<sub>(''n''-1)''t''/''n''</sub>). Similarly, ''L''<sub>''t''</sub> − ''L''<sub>''s''</sub> is infinitely divisible for any ''s''&nbsp;<&nbsp;''t''.
If {&nbsp;''L<sub>t</sub>''&nbsp;:&nbsp;''t''&nbsp;≥&nbsp;0&nbsp;} is a Lévy process then, for any ''t''&nbsp;≥&nbsp;0, the random variable ''L''<sub>''t''</sub> will be infinitely divisible: for any ''n'', we can choose (''X''<sub>''n''1</sub>, ''X''<sub>''n''2</sub>, ..., ''X''<sub>''nn''</sub>) = (''L''<sub>''t''/''n''</sub> − ''L''<sub>0</sub>, ''L''<sub>2''t''/''n''</sub> − ''L''<sub>''t''/''n''</sub>, ..., ''L''<sub>''t''</sub> − ''L''<sub>(''n''−1)''t''/''n''</sub>). Similarly, ''L''<sub>''t''</sub> − ''L''<sub>''s''</sub> is infinitely divisible for any ''s''&nbsp;<&nbsp;''t''.


On the other hand, if ''F'' is an infinitely divisible distribution, we can construct a Lévy process {&nbsp;''L<sub>t</sub>''&nbsp;:&nbsp;''t''&nbsp;≥&nbsp;0&nbsp;} from it. For any interval [''s'',&nbsp;''t''] where ''t''&nbsp;−&nbsp;''s''&nbsp;>&nbsp;0 equals a [[rational number]] ''p''/''q'', we can define ''L''<sub>''t''</sub> − ''L''<sub>''s''</sub> to have the same distribution as ''X''<sub>''q''1</sub> + ''X''<sub>''q''2</sub> + + ''X''<sub>''qp''</sub>. [[Irrational number|Irrational]] values of ''t''&nbsp;−&nbsp;''s''&nbsp;>&nbsp;0 are handled via a continuity argument.
On the other hand, if ''F'' is an infinitely divisible distribution, we can construct a Lévy process {&nbsp;''L<sub>t</sub>''&nbsp;:&nbsp;''t''&nbsp;≥&nbsp;0&nbsp;} from it. For any interval [''s'',&nbsp;''t''] where ''t''&nbsp;−&nbsp;''s''&nbsp;>&nbsp;0 equals a [[rational number]] ''p''/''q'', we can define ''L''<sub>''t''</sub> − ''L''<sub>''s''</sub> to have the same distribution as ''X''<sub>''q''1</sub> + ''X''<sub>''q''2</sub> + ... + ''X''<sub>''qp''</sub>. [[Irrational number|Irrational]] values of ''t''&nbsp;−&nbsp;''s''&nbsp;>&nbsp;0 are handled via a continuity argument.

== Additive process==
{{main|Additive process}}
An [[additive process]] <math>\{X_t\}_{t \geq 0}</math> (a [[cadlag]], [[Continuous stochastic process#Continuity in probability|continuous in probability]] stochastic process with [[independent increments]]) has an infinitely divisible distribution for any <math>t\geq 0</math>. Let <math>\{\mu_t\}_{t\geq0}</math> be its family of infinitely divisible distributions.

<math>\{\mu_t\}_{t\geq0}</math> satisfies a number of conditions of continuity and monotonicity. Moreover, if a family of infinitely divisible distributions <math>\{\mu_t\}_{t\geq0}</math> satisfies these continuity and monotonicity conditions, there exists (uniquely in law) an additive process <math>\{\mu_t\}_{t\geq0}</math> with this distribution.
<ref>{{cite book |last1=Sato |first1=Ken-Ito |title=Lévy processes and infinitely divisible distributions |date=1999 |pages=31–68|publisher=Cambridge University Press |isbn=9780521553025}}</ref>


==See also==
==See also==
*[[Cramér's theorem]]
*[[Cramér’s decomposition theorem|Cramér's theorem]]
*[[Indecomposable distribution]]
*[[Indecomposable distribution]]
*[[Compound Poisson distribution]]
*[[Compound Poisson distribution]]
Line 50: Line 60:


==References==
==References==
* Domínguez-Molina, J.A.; Rocha-Arteaga, A. (2007) "On the Infinite Divisibility of some Skewed Symmetric Distributions". ''Statistics and Probability Letters'', 77 (6), 644&ndash;648 {{doi|10.1016/j.spl.2006.09.014}}
* Domínguez-Molina, J.A.; Rocha-Arteaga, A. (2007) "On the Infinite Divisibility of some Skewed Symmetric Distributions". ''Statistics and Probability Letters'', 77 (6), 644&ndash;648 {{doi|10.1016/j.spl.2006.09.014}}

* Steutel, F. W. (1979), "Infinite Divisibility in Theory and Practice" (with discussion), ''Scandinavian Journal of Statistics.'' 6, 57&ndash;64.
* Steutel, F. W. (1979), "Infinite Divisibility in Theory and Practice" (with discussion), ''Scandinavian Journal of Statistics.'' 6, 57&ndash;64.

* Steutel, F. W. and Van Harn, K. (2003), ''Infinite Divisibility of Probability Distributions on the Real Line'' (Marcel Dekker).
* Steutel, F. W. and Van Harn, K. (2003), ''Infinite Divisibility of Probability Distributions on the Real Line'' (Marcel Dekker).


Line 60: Line 68:
[[Category:Theory of probability distributions]]
[[Category:Theory of probability distributions]]
[[Category:Types of probability distributions]]
[[Category:Types of probability distributions]]
[[Category:Infinitely divisible probability distributions]]
[[Category:Infinitely divisible probability distributions| ]]

Latest revision as of 20:03, 11 April 2024

In probability theory, a probability distribution is infinitely divisible if it can be expressed as the probability distribution of the sum of an arbitrary number of independent and identically distributed (i.i.d.) random variables. The characteristic function of any infinitely divisible distribution is then called an infinitely divisible characteristic function.[1]

More rigorously, the probability distribution F is infinitely divisible if, for every positive integer n, there exist n i.i.d. random variables Xn1, ..., Xnn whose sum Sn = Xn1 + ... + Xnn has the same distribution F.

The concept of infinite divisibility of probability distributions was introduced in 1929 by Bruno de Finetti. This type of decomposition of a distribution is used in probability and statistics to find families of probability distributions that might be natural choices for certain models or applications. Infinitely divisible distributions play an important role in probability theory in the context of limit theorems.[1]

Examples

[edit]

Examples of continuous distributions that are infinitely divisible are the normal distribution, the Cauchy distribution, the Lévy distribution, and all other members of the stable distribution family, as well as the Gamma distribution, the chi-square distribution, the Wald distribution, the Log-normal distribution[2] and the Student's t-distribution.

Among the discrete distributions, examples are the Poisson distribution and the negative binomial distribution (and hence the geometric distribution also). The one-point distribution whose only possible outcome is 0 is also (trivially) infinitely divisible.

The uniform distribution and the binomial distribution are not infinitely divisible, nor are any other distributions with bounded support (≈ finite-sized domain), other than the one-point distribution mentioned above.[3] The distribution of the reciprocal of a random variable having a Student's t-distribution is also not infinitely divisible.[4]

Any compound Poisson distribution is infinitely divisible; this follows immediately from the definition.

Limit theorem

[edit]

Infinitely divisible distributions appear in a broad generalization of the central limit theorem: the limit as n → +∞ of the sum Sn = Xn1 + ... + Xnn of independent uniformly asymptotically negligible (u.a.n.) random variables within a triangular array

approaches — in the weak sense — an infinitely divisible distribution. The uniformly asymptotically negligible (u.a.n.) condition is given by

Thus, for example, if the uniform asymptotic negligibility (u.a.n.) condition is satisfied via an appropriate scaling of identically distributed random variables with finite variance, the weak convergence is to the normal distribution in the classical version of the central limit theorem. More generally, if the u.a.n. condition is satisfied via a scaling of identically distributed random variables (with not necessarily finite second moment), then the weak convergence is to a stable distribution. On the other hand, for a triangular array of independent (unscaled) Bernoulli random variables where the u.a.n. condition is satisfied through

the weak convergence of the sum is to the Poisson distribution with mean λ as shown by the familiar proof of the law of small numbers.

Lévy process

[edit]

Every infinitely divisible probability distribution corresponds in a natural way to a Lévy process. A Lévy process is a stochastic processLt : t ≥ 0 } with stationary independent increments, where stationary means that for s < t, the probability distribution of LtLs depends only on t − s and where independent increments means that that difference LtLs is independent of the corresponding difference on any interval not overlapping with [st], and similarly for any finite number of mutually non-overlapping intervals.

If { Lt : t ≥ 0 } is a Lévy process then, for any t ≥ 0, the random variable Lt will be infinitely divisible: for any n, we can choose (Xn1, Xn2, ..., Xnn) = (Lt/nL0, L2t/nLt/n, ..., LtL(n−1)t/n). Similarly, LtLs is infinitely divisible for any s < t.

On the other hand, if F is an infinitely divisible distribution, we can construct a Lévy process { Lt : t ≥ 0 } from it. For any interval [st] where t − s > 0 equals a rational number p/q, we can define LtLs to have the same distribution as Xq1 + Xq2 + ... + Xqp. Irrational values of t − s > 0 are handled via a continuity argument.

Additive process

[edit]

An additive process (a cadlag, continuous in probability stochastic process with independent increments) has an infinitely divisible distribution for any . Let be its family of infinitely divisible distributions.

satisfies a number of conditions of continuity and monotonicity. Moreover, if a family of infinitely divisible distributions satisfies these continuity and monotonicity conditions, there exists (uniquely in law) an additive process with this distribution. [5]

See also

[edit]

Footnotes

[edit]
  1. ^ a b Lukacs, E. (1970) Characteristic Functions, Griffin, London. p. 107
  2. ^ Thorin, Olof (1977). "On the infinite divisibility of the lognormal distribution". Scandinavian Actuarial Journal. 1977 (3): 121–148. doi:10.1080/03461238.1977.10405635. ISSN 0346-1238.
  3. ^ Sato, Ken-iti (1999). Lévy Processes and Infinitely Divisible Distributions. Cambridge University Press. pp. 31, 148. ISBN 978-0-521-55302-5.
  4. ^ Johnson, N.L.; Kotz, S.; Balakrishnan, N. (1995). Continuous Univariate Distributions (2nd ed.). Wiley. volume 2, chapter 28, page 368. ISBN 0-471-58494-0.
  5. ^ Sato, Ken-Ito (1999). Lévy processes and infinitely divisible distributions. Cambridge University Press. pp. 31–68. ISBN 9780521553025.

References

[edit]
  • Domínguez-Molina, J.A.; Rocha-Arteaga, A. (2007) "On the Infinite Divisibility of some Skewed Symmetric Distributions". Statistics and Probability Letters, 77 (6), 644–648 doi:10.1016/j.spl.2006.09.014
  • Steutel, F. W. (1979), "Infinite Divisibility in Theory and Practice" (with discussion), Scandinavian Journal of Statistics. 6, 57–64.
  • Steutel, F. W. and Van Harn, K. (2003), Infinite Divisibility of Probability Distributions on the Real Line (Marcel Dekker).