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{{short description|Probability distribution}}
{{Unreferenced|date=March 2011}}
{{Refimprove|date=January 2017}}
{{Probability distribution
{{Probability distribution
| name = Cantor
| name = Cantor
| type = mass <!-- not technically correct; added only so template pmf entry would parse correctly; used "mass" rather than "density" since cdf plot suggests it *might* have a pmf -->
| type = mass <!-- not technically correct; added only so template pmf entry would parse correctly; used "mass" rather than "density" since cdf plot suggests it *might* have a pmf -->
| cdf_image =[[File:CantorEscalier-2.svg|325px|Cumulative distribution function for the Cantor distribution]]|
| pdf_image =
| cdf_image = [[Image:CantorFunction.png|325px|thumb|right|Cumulative distribution function of the Cantor distribution]]
| parameters = none
| parameters = none
| support = [[Cantor set]]
| support = [[Cantor set]], a subset of [0,1]
| pdf = none
| pdf = none
| cdf = [[Cantor function]]
| cdf = [[Cantor function]]
Line 14: Line 14:
| variance = 1/8
| variance = 1/8
| skewness = 0
| skewness = 0
| kurtosis = &minus;8/5
| kurtosis = −8/5
| entropy =
| entropy =
| mgf = <math>e^{t/2}
| mgf = <math>e^{t/2} \prod_{k=1}^\infty \cosh\left(\frac{t}{3^k}\right)</math>
\prod_{i= 1}^{\infty} \cosh{\left(\frac{t}{3^{i}}
| char = <math>e^{it/2} \prod_{k=1}^\infty \cos\left(\frac{t}{3^k}\right)</math>
\right)}</math>
| char = <math>e^{\mathrm{i}\,t/2}
\prod_{i= 1}^{\infty} \cos{\left(\frac{t}{3^{i}}
\right)}</math>
}}
}}


The '''Cantor distribution''' is the [[probability distribution]] whose [[cumulative distribution function]] is the '''[[Cantor function]]'''.
The '''Cantor distribution''' is the [[probability distribution]] whose [[cumulative distribution function]] is the [[Cantor function]].


This distribution has neither a [[probability density function]] nor a [[probability mass function]], as it is not [[absolute continuity|absolutely continuous]] with respect to [[Lebesgue measure]], nor has it any point-masses. It is thus neither a discrete nor an absolutely continuous probability distribution, nor is it a mixture of these. Rather it is an example of a [[singular distribution]].
This distribution has neither a [[probability density function]] nor a [[probability mass function]], since although its cumulative distribution function is a [[continuous function]], the distribution is not [[absolute continuity|absolutely continuous]] with respect to [[Lebesgue measure]], nor does it have any point-masses. It is thus neither a discrete nor an absolutely continuous probability distribution, nor is it a mixture of these. Rather it is an example of a [[singular distribution]].


Its cumulative distribution function is sometimes referred to as the [[Singular function|Devil's staircase]], although that term has a more general meaning.
Its cumulative distribution function is continuous everywhere but horizontal almost everywhere, so is sometimes referred to as the [[Singular function|Devil's staircase]], although that term has a more general meaning.


== Characterization ==
== Characterization ==


The [[Support (mathematics)|support]] of the Cantor distribution is the [[Cantor set]], itself the intersection of the (countably infinitely many) sets:

: <math>
The [[Support (mathematics)|support]] of the Cantor distribution is the [[Cantor set]], itself the intersection of the (countably infinitely many) sets

:<math>
\begin{align}
\begin{align}
C_{0} = & [0,1] \\
C_0 = {} & [0,1] \\[8pt]
C_{1} = & [0,1/3]\cup[2/3,1] \\
C_1 = {} & [0,1/3]\cup[2/3,1] \\[8pt]
C_{2} = & [0,1/9]\cup[2/9,1/3]\cup[2/3,7/9]\cup[8/9,1] \\
C_2 = {} & [0,1/9]\cup[2/9,1/3]\cup[2/3,7/9]\cup[8/9,1] \\[8pt]
C_{3} = & [0,1/27]\cup[2/27,1/9]\cup[2/9,7/27]\cup[8/27,1/3]\cup \\
C_3 = {} & [0,1/27]\cup[2/27,1/9]\cup[2/9,7/27]\cup[8/27,1/3]\cup \\[4pt]
& [2/3,19/27]\cup[20/27,7/9]\cup[8/9,25/27]\cup[26/27,1] \\
{} & [2/3,19/27]\cup[20/27,7/9]\cup[8/9,25/27]\cup[26/27,1] \\[8pt]
C_4 = {} & [0,1/81]\cup[2/81,1/27]\cup[2/27,7/81]\cup[8/81,1/9]\cup[2/9,19/81]\cup[20/81,7/27]\cup \\[4pt]
C_{4} = & \cdots .
& [8/27,25/81]\cup[26/81,1/3]\cup[2/3,55/81]\cup[56/81,19/27]\cup[20/27,61/81]\cup \\[4pt]
& [62/81,21/27]\cup[8/9,73/81]\cup[74/81,25/27]\cup[26/27,79/81]\cup[80/81,1] \\[8pt]
C_5 = {} & \cdots
\end{align}
\end{align}
</math>
</math>


The Cantor distribution is the unique probability distribution for which for any ''C''<sub>''t''</sub> (''t''&nbsp;∈&nbsp;{&nbsp;0,&nbsp;1,&nbsp;2,&nbsp;3,&nbsp;...&nbsp;}), the probability of a particular interval in ''C''<sub>''t''</sub> containing the Cantor-distributed random variable is identically 2<sup>-''t''</sup> on each one of the 2<sup>''t''</sup> intervals.
The Cantor distribution is the unique probability distribution for which for any ''C''<sub>''t''</sub> (''t''&nbsp;∈&nbsp;{&nbsp;0,&nbsp;1,&nbsp;2,&nbsp;3,&nbsp;...&nbsp;}), the probability of a particular interval in ''C''<sub>''t''</sub> containing the Cantor-distributed random variable is identically 2<sup>''t''</sup> on each one of the 2<sup>''t''</sup> intervals.


== Moments ==
== Moments ==
It is easy to see by symmetry that for a [[random variable]] ''X'' having this distribution, its [[expected value]] E(''X'') = 1/2, and that all odd central moments of ''X'' are 0.
It is easy to see by symmetry and being bounded that for a [[random variable]] ''X'' having this distribution, its [[expected value]] E(''X'') = 1/2, and that all odd central moments of ''X'' are&nbsp;0.


The [[law of total variance]] can be used to find the [[variance]] var(''X''), as follows. For the above set ''C''<sub>1</sub>, let ''Y'' = 0 if ''X''&nbsp;∈&nbsp;[0,1/3], and 1 if ''X''&nbsp;∈&nbsp;[2/3,1]. Then:
The [[law of total variance]] can be used to find the [[variance]] var(''X''), as follows. For the above set ''C''<sub>1</sub>, let ''Y'' = 0 if ''X''&nbsp;∈&nbsp;[0,1/3], and 1 if ''X''&nbsp;∈&nbsp;[2/3,1]. Then:
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: <math>
: <math>
\begin{align}
\begin{align}
\operatorname{var}(X) & = \operatorname{E}(\operatorname{var}(X\mid Y)) +
\operatorname{var}(X) & = \operatorname{E}(\operatorname{var}(X\mid Y)) +
\operatorname{var}(\operatorname{E}(X\mid Y)) \\
\operatorname{var}(\operatorname{E}(X\mid Y)) \\
& = \frac{1}{9}\operatorname{var}(X) +
& = \frac{1}{9}\operatorname{var}(X) +
\operatorname{var}
\operatorname{var}
\left\{
\left\{
\begin{matrix} 1/6 & \mbox{with probability}\ 1/2 \\
\begin{matrix} 1/6 & \mbox{with probability}\ 1/2 \\
5/6 & \mbox{with probability}\ 1/2
5/6 & \mbox{with probability}\ 1/2
\end{matrix}
\end{matrix}
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:<math>\operatorname{var}(X)=\frac{1}{8}.</math>
:<math>\operatorname{var}(X)=\frac{1}{8}.</math>


A closed-form expression for any even [[central moment]] can be found by first obtaining the even [[cumulants]][http://www.calpoly.edu/~kmorriso/Research/RandomWalks.pdf]
A closed-form expression for any even [[central moment]] can be found by first obtaining the even [[cumulants]]<ref>{{cite web |last=Morrison |first=Kent |url=http://www.calpoly.edu/~kmorriso/Research/RandomWalks.pdf |title=Random Walks with Decreasing Steps |publisher=Department of Mathematics, California Polytechnic State University |date=1998-07-23 |access-date=2007-02-16 |archive-date=2015-12-02 |archive-url=https://web.archive.org/web/20151202055102/http://www.calpoly.edu/~kmorriso/Research/RandomWalks.pdf |url-status=dead }}</ref>


:<math>
:<math>
Line 79: Line 76:
</math>
</math>


where ''B''<sub>2''n''</sub> is the 2''n''th [[Bernoulli number]], and then [[Cumulant#Cumulants_and_moments|expressing the moments as functions of the cumulants]].
where ''B''<sub>2''n''</sub> is the 2''n''th [[Bernoulli number]], and then [[Cumulant#Cumulants and moments|expressing the moments as functions of the cumulants]].


== References ==
== References ==
{{Reflist}}
{{Reflist}}


==Further reading==
== External links ==
* {{cite book |first1=E. |last1=Hewitt |first2=K. |last2=Stromberg |title=Real and Abstract Analysis |url=https://archive.org/details/realabstractanal00hewi_0 |url-access=registration |publisher=Springer-Verlag |location=Berlin-Heidelberg-New York |year=1965}} ''This, as with other standard texts, has the Cantor function and its one sided derivates.''

* {{cite news |first1=Tian-You |last1=Hu |first2=Ka Sing |last2=Lau |title=Fourier Asymptotics of Cantor Type Measures at Infinity |journal=Proc. AMS |volume=130 |number=9 |year=2002 |pages=2711–2717}} ''This is more modern than the other texts in this reference list.''
* {{cite web |last=Morrison |first=Kent |url=http://www.calpoly.edu/~kmorriso/Research/RandomWalks.pdf |title=Random Walks with Decreasing Steps |publisher=Department of Mathematics, California Polytechnic State University |date=1998-07-23 |accessdate=2007-02-16}}
* {{cite book |first=O. |last=Knill |title=Probability Theory & Stochastic Processes |publisher=Overseas Press |location=India |year=2006}}
* {{cite book |first=P. |last=Mattilla |title=Geometry of Sets in Euclidean Spaces |publisher=Cambridge University Press |location=San Francisco |year=1995}} ''This has more advanced material on fractals.''


{{ProbDistributions|miscellaneous}}
{{ProbDistributions|miscellaneous}}
{{-}}
{{Clear}}

[[Category:Probability distributions]]
[[Category:Continuous distributions]]
[[Category:Georg Cantor]]

Latest revision as of 18:39, 10 November 2023

Cantor
Cumulative distribution function
Cumulative distribution function for the Cantor distribution
Parameters none
Support Cantor set, a subset of [0,1]
PMF none
CDF Cantor function
Mean 1/2
Median anywhere in [1/3, 2/3]
Mode n/a
Variance 1/8
Skewness 0
Excess kurtosis −8/5
MGF
CF

The Cantor distribution is the probability distribution whose cumulative distribution function is the Cantor function.

This distribution has neither a probability density function nor a probability mass function, since although its cumulative distribution function is a continuous function, the distribution is not absolutely continuous with respect to Lebesgue measure, nor does it have any point-masses. It is thus neither a discrete nor an absolutely continuous probability distribution, nor is it a mixture of these. Rather it is an example of a singular distribution.

Its cumulative distribution function is continuous everywhere but horizontal almost everywhere, so is sometimes referred to as the Devil's staircase, although that term has a more general meaning.

Characterization

[edit]

The support of the Cantor distribution is the Cantor set, itself the intersection of the (countably infinitely many) sets:

The Cantor distribution is the unique probability distribution for which for any Ct (t ∈ { 0, 1, 2, 3, ... }), the probability of a particular interval in Ct containing the Cantor-distributed random variable is identically 2t on each one of the 2t intervals.

Moments

[edit]

It is easy to see by symmetry and being bounded that for a random variable X having this distribution, its expected value E(X) = 1/2, and that all odd central moments of X are 0.

The law of total variance can be used to find the variance var(X), as follows. For the above set C1, let Y = 0 if X ∈ [0,1/3], and 1 if X ∈ [2/3,1]. Then:

From this we get:

A closed-form expression for any even central moment can be found by first obtaining the even cumulants[1]

where B2n is the 2nth Bernoulli number, and then expressing the moments as functions of the cumulants.

References

[edit]
  1. ^ Morrison, Kent (1998-07-23). "Random Walks with Decreasing Steps" (PDF). Department of Mathematics, California Polytechnic State University. Archived from the original (PDF) on 2015-12-02. Retrieved 2007-02-16.

Further reading

[edit]
  • Hewitt, E.; Stromberg, K. (1965). Real and Abstract Analysis. Berlin-Heidelberg-New York: Springer-Verlag. This, as with other standard texts, has the Cantor function and its one sided derivates.
  • Hu, Tian-You; Lau, Ka Sing (2002). "Fourier Asymptotics of Cantor Type Measures at Infinity". Proc. AMS. Vol. 130, no. 9. pp. 2711–2717. This is more modern than the other texts in this reference list.
  • Knill, O. (2006). Probability Theory & Stochastic Processes. India: Overseas Press.
  • Mattilla, P. (1995). Geometry of Sets in Euclidean Spaces. San Francisco: Cambridge University Press. This has more advanced material on fractals.