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Pareto distribution

The Pareto distribution, named after the Italian civil engineer, economist, and sociologist Vilfredo Pareto,[2] is a power-law probability distribution that is used in description of social, quality control, scientific, geophysical, actuarial, and many other types of observable phenomena; the principle originally applied to describing the distribution of wealth in a society, fitting the trend that a large portion of wealth is held by a small fraction of the population.[3][4] The Pareto principle or "80-20 rule" stating that 80% of outcomes are due to 20% of causes was named in honour of Pareto, but the concepts are distinct, and only Pareto distributions with shape value (α) of log45 ≈ 1.16 precisely reflect it. Empirical observation has shown that this 80-20 distribution fits a wide range of cases, including natural phenomena[5] and human activities.[6][7]

Pareto Type I
Probability density function

Pareto Type I probability density functions for various with As the distribution approaches where is the Dirac delta function.
Cumulative distribution function

Pareto Type I cumulative distribution functions for various with
Parameters scale (real)
shape (real)
Support
PDF
CDF
Quantile
Mean
Median
Mode
Variance
Skewness
Excess kurtosis
Entropy
MGF does not exist
CF
Fisher information
Expected shortfall [1]

Definitions edit

If X is a random variable with a Pareto (Type I) distribution,[8] then the probability that X is greater than some number x, i.e., the survival function (also called tail function), is given by

 

where xm is the (necessarily positive) minimum possible value of X, and α is a positive parameter. The type I Pareto distribution is characterized by a scale parameter xm and a shape parameter α, which is known as the tail index. If this distribution is used to model the distribution of wealth, then the parameter α is called the Pareto index.

Cumulative distribution function edit

From the definition, the cumulative distribution function of a Pareto random variable with parameters α and xm is

 

Probability density function edit

It follows (by differentiation) that the probability density function is

 

When plotted on linear axes, the distribution assumes the familiar J-shaped curve which approaches each of the orthogonal axes asymptotically. All segments of the curve are self-similar (subject to appropriate scaling factors). When plotted in a log-log plot, the distribution is represented by a straight line.

Properties edit

Moments and characteristic function edit

 
 
(If α ≤ 1, the variance does not exist.)
 
 
 

Thus, since the expectation does not converge on an open interval containing   we say that the moment generating function does not exist.

 
where Γ(ax) is the incomplete gamma function.

The parameters may be solved for using the method of moments.[9]

Conditional distributions edit

The conditional probability distribution of a Pareto-distributed random variable, given the event that it is greater than or equal to a particular number   exceeding  , is a Pareto distribution with the same Pareto index   but with minimum   instead of  . This implies that the conditional expected value (if it is finite, i.e.  ) is proportional to  . In case of random variables that describe the lifetime of an object, this means that life expectancy is proportional to age, and is called the Lindy effect or Lindy's Law.[10]

A characterization theorem edit

Suppose   are independent identically distributed random variables whose probability distribution is supported on the interval   for some  . Suppose that for all  , the two random variables   and   are independent. Then the common distribution is a Pareto distribution.[citation needed]

Geometric mean edit

The geometric mean (G) is[11]

 

Harmonic mean edit

The harmonic mean (H) is[11]

 

Graphical representation edit

The characteristic curved 'long tail' distribution, when plotted on a linear scale, masks the underlying simplicity of the function when plotted on a log-log graph, which then takes the form of a straight line with negative gradient: It follows from the formula for the probability density function that for xxm,

 

Since α is positive, the gradient −(α + 1) is negative.

Related distributions edit

Generalized Pareto distributions edit

There is a hierarchy [8][12] of Pareto distributions known as Pareto Type I, II, III, IV, and Feller–Pareto distributions.[8][12][13] Pareto Type IV contains Pareto Type I–III as special cases. The Feller–Pareto[12][14] distribution generalizes Pareto Type IV.

Pareto types I–IV edit

The Pareto distribution hierarchy is summarized in the next table comparing the survival functions (complementary CDF).

When μ = 0, the Pareto distribution Type II is also known as the Lomax distribution.[15]

In this section, the symbol xm, used before to indicate the minimum value of x, is replaced by σ.

Pareto distributions
  Support Parameters
Type I      
Type II      
Lomax      
Type III      
Type IV      

The shape parameter α is the tail index, μ is location, σ is scale, γ is an inequality parameter. Some special cases of Pareto Type (IV) are

 
 
 

The finiteness of the mean, and the existence and the finiteness of the variance depend on the tail index α (inequality index γ). In particular, fractional δ-moments are finite for some δ > 0, as shown in the table below, where δ is not necessarily an integer.

Moments of Pareto I–IV distributions (case μ = 0)
  Condition   Condition
Type I        
Type II        
Type III        
Type IV        

Feller–Pareto distribution edit

Feller[12][14] defines a Pareto variable by transformation U = Y−1 − 1 of a beta random variable ,Y, whose probability density function is

 

where B( ) is the beta function. If

 

then W has a Feller–Pareto distribution FP(μ, σ, γ, γ1, γ2).[8]

If   and   are independent Gamma variables, another construction of a Feller–Pareto (FP) variable is[16]

 

and we write W ~ FP(μ, σ, γ, δ1, δ2). Special cases of the Feller–Pareto distribution are

 
 
 
 

Inverse-Pareto Distribution / Power Distribution edit

When a random variable   follows a pareto distribution, then its inverse   follows an Inverse Pareto distribution. Inverse Pareto distribution is equivalent to a Power distribution[17]

 

Relation to the exponential distribution edit

The Pareto distribution is related to the exponential distribution as follows. If X is Pareto-distributed with minimum xm and index α, then

 

is exponentially distributed with rate parameter α. Equivalently, if Y is exponentially distributed with rate α, then

 

is Pareto-distributed with minimum xm and index α.

This can be shown using the standard change-of-variable techniques:

 

The last expression is the cumulative distribution function of an exponential distribution with rate α.

Pareto distribution can be constructed by hierarchical exponential distributions.[18] Let   and  . Then we have   and, as a result,  .

More in general, if   (shape-rate parametrization) and  , then  .

Equivalently, if   and  , then  .

Relation to the log-normal distribution edit

The Pareto distribution and log-normal distribution are alternative distributions for describing the same types of quantities. One of the connections between the two is that they are both the distributions of the exponential of random variables distributed according to other common distributions, respectively the exponential distribution and normal distribution. (See the previous section.)

Relation to the generalized Pareto distribution edit

The Pareto distribution is a special case of the generalized Pareto distribution, which is a family of distributions of similar form, but containing an extra parameter in such a way that the support of the distribution is either bounded below (at a variable point), or bounded both above and below (where both are variable), with the Lomax distribution as a special case. This family also contains both the unshifted and shifted exponential distributions.

The Pareto distribution with scale   and shape   is equivalent to the generalized Pareto distribution with location  , scale   and shape   and, conversely, one can get the Pareto distribution from the GPD by taking   and   if  .

Bounded Pareto distribution edit

Bounded Pareto
Parameters

  location (real)
  location (real)

  shape (real)
Support  
PDF  
CDF  
Mean

 

 
Median  
Variance

   

(this is the second raw moment, not the variance)
Skewness

 

(this is the kth raw moment, not the skewness)

The bounded (or truncated) Pareto distribution has three parameters: α, L and H. As in the standard Pareto distribution α determines the shape. L denotes the minimal value, and H denotes the maximal value.

The probability density function is

 ,

where L ≤ x ≤ H, and α > 0.

Generating bounded Pareto random variables edit

If U is uniformly distributed on (0, 1), then applying inverse-transform method [19]

 
 

is a bounded Pareto-distributed.

Symmetric Pareto distribution edit

The purpose of the Symmetric and Zero Symmetric Pareto distributions is to capture some special statistical distribution with a sharp probability peak and symmetric long probability tails. These two distributions are derived from the Pareto distribution. Long probability tails normally means that probability decays slowly, and can be used to fit a variety of datasets. But if the distribution has symmetric structure with two slow decaying tails, Pareto could not do it. Then Symmetric Pareto or Zero Symmetric Pareto distribution is applied instead.[20]

The Cumulative distribution function (CDF) of Symmetric Pareto distribution is defined as following:[20]

 

The corresponding probability density function (PDF) is:[20]

 

This distribution has two parameters: a and b. It is symmetric by b. Then the mathematic expectation is b. When, it has variance as following:

 

The CDF of Zero Symmetric Pareto (ZSP) distribution is defined as following:

 

The corresponding PDF is:

 

This distribution is symmetric by zero. Parameter a is related to the decay rate of probability and (a/2b) represents peak magnitude of probability.[20]

Multivariate Pareto distribution edit

The univariate Pareto distribution has been extended to a multivariate Pareto distribution.[21]

Statistical inference edit

Estimation of parameters edit

The likelihood function for the Pareto distribution parameters α and xm, given an independent sample x = (x1x2, ..., xn), is

 

Therefore, the logarithmic likelihood function is

 

It can be seen that   is monotonically increasing with xm, that is, the greater the value of xm, the greater the value of the likelihood function. Hence, since xxm, we conclude that

 

To find the estimator for α, we compute the corresponding partial derivative and determine where it is zero:

 

Thus the maximum likelihood estimator for α is:

 

The expected statistical error is:[22]

 

Malik (1970)[23] gives the exact joint distribution of  . In particular,   and   are independent and   is Pareto with scale parameter xm and shape parameter , whereas   has an inverse-gamma distribution with shape and scale parameters n − 1 and , respectively.

Occurrence and applications edit

General edit

Vilfredo Pareto originally used this distribution to describe the allocation of wealth among individuals since it seemed to show rather well the way that a larger portion of the wealth of any society is owned by a smaller percentage of the people in that society. He also used it to describe distribution of income.[4] This idea is sometimes expressed more simply as the Pareto principle or the "80-20 rule" which says that 20% of the population controls 80% of the wealth.[24] As Michael Hudson points out (The Collapse of Antiquity [2023] p. 85 & n.7) "a mathematical corollary [is] that 10% would have 65% of the wealth, and 5% would have half the national wealth.” However, the 80-20 rule corresponds to a particular value of α, and in fact, Pareto's data on British income taxes in his Cours d'économie politique indicates that about 30% of the population had about 70% of the income.[citation needed] The probability density function (PDF) graph at the beginning of this article shows that the "probability" or fraction of the population that owns a small amount of wealth per person is rather high, and then decreases steadily as wealth increases. (The Pareto distribution is not realistic for wealth for the lower end, however. In fact, net worth may even be negative.) This distribution is not limited to describing wealth or income, but to many situations in which an equilibrium is found in the distribution of the "small" to the "large". The following examples are sometimes seen as approximately Pareto-distributed:

  • All four variables of the household's budget constraint: consumption, labor income, capital income, and wealth.[25]
  • The sizes of human settlements (few cities, many hamlets/villages)[26][27]
  • File size distribution of Internet traffic which uses the TCP protocol (many smaller files, few larger ones)[26]
  • Hard disk drive error rates[28]
  • Clusters of Bose–Einstein condensate near absolute zero[29]
 
Fitted cumulative Pareto (Lomax) distribution to maximum one-day rainfalls using CumFreq, see also distribution fitting
  • The values of oil reserves in oil fields (a few large fields, many small fields)[26]
  • The length distribution in jobs assigned to supercomputers (a few large ones, many small ones)[30]
  • The standardized price returns on individual stocks [26]
  • Sizes of sand particles [26]
  • The size of meteorites
  • Severity of large casualty losses for certain lines of business such as general liability, commercial auto, and workers compensation.[31][32]
  • Amount of time a user on Steam will spend playing different games. (Some games get played a lot, but most get played almost never.) [2][original research?]
  • In hydrology the Pareto distribution is applied to extreme events such as annually maximum one-day rainfalls and river discharges.[33] The blue picture illustrates an example of fitting the Pareto distribution to ranked annually maximum one-day rainfalls showing also the 90% confidence belt based on the binomial distribution. The rainfall data are represented by plotting positions as part of the cumulative frequency analysis.
  • In Electric Utility Distribution Reliability (80% of the Customer Minutes Interrupted occur on approximately 20% of the days in a given year).

Relation to Zipf's law edit

The Pareto distribution is a continuous probability distribution. Zipf's law, also sometimes called the zeta distribution, is a discrete distribution, separating the values into a simple ranking. Both are a simple power law with a negative exponent, scaled so that their cumulative distributions equal 1. Zipf's can be derived from the Pareto distribution if the   values (incomes) are binned into   ranks so that the number of people in each bin follows a 1/rank pattern. The distribution is normalized by defining   so that   where   is the generalized harmonic number. This makes Zipf's probability density function derivable from Pareto's.

 

where   and   is an integer representing rank from 1 to N where N is the highest income bracket. So a randomly selected person (or word, website link, or city) from a population (or language, internet, or country) has   probability of ranking  .

Relation to the "Pareto principle" edit

The "80–20 law", according to which 20% of all people receive 80% of all income, and 20% of the most affluent 20% receive 80% of that 80%, and so on, holds precisely when the Pareto index is  . This result can be derived from the Lorenz curve formula given below. Moreover, the following have been shown[34] to be mathematically equivalent:

  • Income is distributed according to a Pareto distribution with index α > 1.
  • There is some number 0 ≤ p ≤ 1/2 such that 100p % of all people receive 100(1 − p)% of all income, and similarly for every real (not necessarily integer) n > 0, 100pn % of all people receive 100(1 − p)n percentage of all income. α and p are related by
 

This does not apply only to income, but also to wealth, or to anything else that can be modeled by this distribution.

This excludes Pareto distributions in which 0 < α ≤ 1, which, as noted above, have an infinite expected value, and so cannot reasonably model income distribution.

Relation to Price's law edit

Price's square root law is sometimes offered as a property of or as similar to the Pareto distribution. However, the law only holds in the case that  . Note that in this case, the total and expected amount of wealth are not defined, and the rule only applies asymptotically to random samples. The extended Pareto Principle mentioned above is a far more general rule.

Lorenz curve and Gini coefficient edit

 
Lorenz curves for a number of Pareto distributions. The case α = ∞ corresponds to perfectly equal distribution (G = 0) and the α = 1 line corresponds to complete inequality (G = 1)

The Lorenz curve is often used to characterize income and wealth distributions. For any distribution, the Lorenz curve L(F) is written in terms of the PDF f or the CDF F as

 

where x(F) is the inverse of the CDF. For the Pareto distribution,

 

and the Lorenz curve is calculated to be

 

For   the denominator is infinite, yielding L=0. Examples of the Lorenz curve for a number of Pareto distributions are shown in the graph on the right.

According to Oxfam (2016) the richest 62 people have as much wealth as the poorest half of the world's population.[35] We can estimate the Pareto index that would apply to this situation. Letting ε equal   we have:

 

or

 

The solution is that α equals about 1.15, and about 9% of the wealth is owned by each of the two groups. But actually the poorest 69% of the world adult population owns only about 3% of the wealth.[36]

The Gini coefficient is a measure of the deviation of the Lorenz curve from the equidistribution line which is a line connecting [0, 0] and [1, 1], which is shown in black (α = ∞) in the Lorenz plot on the right. Specifically, the Gini coefficient is twice the area between the Lorenz curve and the equidistribution line. The Gini coefficient for the Pareto distribution is then calculated (for  ) to be

 

(see Aaberge 2005).

Random variate generation edit

Random samples can be generated using inverse transform sampling. Given a random variate U drawn from the uniform distribution on the unit interval (0, 1], the variate T given by

 

is Pareto-distributed.[37] If U is uniformly distributed on [0, 1), it can be exchanged with (1 − U).

See also edit

References edit

  1. ^ a b Norton, Matthew; Khokhlov, Valentyn; Uryasev, Stan (2019). "Calculating CVaR and bPOE for common probability distributions with application to portfolio optimization and density estimation" (PDF). Annals of Operations Research. 299 (1–2). Springer: 1281–1315. arXiv:1811.11301. doi:10.1007/s10479-019-03373-1. S2CID 254231768. Retrieved 2023-02-27.
  2. ^ Amoroso, Luigi (1938). "VILFREDO PARETO". Econometrica (Pre-1986); Jan 1938; 6, 1; ProQuest. 6.
  3. ^ Pareto, Vilfredo (1898). "Cours d'economie politique". Journal of Political Economy. 6. doi:10.1086/250536.
  4. ^ a b Pareto, Vilfredo, Cours d'Économie Politique: Nouvelle édition par G.-H. Bousquet et G. Busino, Librairie Droz, Geneva, 1964, pp. 299–345.
  5. ^ VAN MONTFORT, M.A.J. (1986). "The Generalized Pareto distribution applied to rainfall depths". Hydrological Sciences Journal. 31 (2): 151–162. Bibcode:1986HydSJ..31..151V. doi:10.1080/02626668609491037.
  6. ^ Oancea, Bogdan (2017). "Income inequality in Romania: The exponential-Pareto distribution". Physica A: Statistical Mechanics and Its Applications. 469: 486–498. Bibcode:2017PhyA..469..486O. doi:10.1016/j.physa.2016.11.094.
  7. ^ Morella, Matteo. "Pareto Distribution". academia.edu.
  8. ^ a b c d Barry C. Arnold (1983). Pareto Distributions. International Co-operative Publishing House. ISBN 978-0-89974-012-6.
  9. ^ S. Hussain, S.H. Bhatti (2018). Parameter estimation of Pareto distribution: Some modified moment estimators. Maejo International Journal of Science and Technology 12(1):11-27.
  10. ^ Eliazar, Iddo (November 2017). "Lindy's Law". Physica A: Statistical Mechanics and Its Applications. 486: 797–805. Bibcode:2017PhyA..486..797E. doi:10.1016/j.physa.2017.05.077. S2CID 125349686.
  11. ^ a b Johnson NL, Kotz S, Balakrishnan N (1994) Continuous univariate distributions Vol 1. Wiley Series in Probability and Statistics.
  12. ^ a b c d Johnson, Kotz, and Balakrishnan (1994), (20.4).
  13. ^ Christian Kleiber & Samuel Kotz (2003). Statistical Size Distributions in Economics and Actuarial Sciences. Wiley. ISBN 978-0-471-15064-0.
  14. ^ a b Feller, W. (1971). An Introduction to Probability Theory and its Applications. Vol. II (2nd ed.). New York: Wiley. p. 50. "The densities (4.3) are sometimes called after the economist Pareto. It was thought (rather naïvely from a modern statistical standpoint) that income distributions should have a tail with a density ~ Axα as x → ∞".
  15. ^ Lomax, K. S. (1954). "Business failures. Another example of the analysis of failure data". Journal of the American Statistical Association. 49 (268): 847–52. doi:10.1080/01621459.1954.10501239.
  16. ^ Chotikapanich, Duangkamon (16 September 2008). "Chapter 7: Pareto and Generalized Pareto Distributions". Modeling Income Distributions and Lorenz Curves. Springer. pp. 121–22. ISBN 9780387727967.
  17. ^ Dallas, A. C. "Characterizing the Pareto and power distributions." Annals of the Institute of Statistical Mathematics 28.1 (1976): 491-497.
  18. ^ White, Gentry (2006). Bayesian semiparametric spatial and joint spatio-temporal modeling (Thesis thesis). University of Missouri--Columbia. section 5.3.1.
  19. ^ . Archived from the original on 2012-01-17. Retrieved 2012-08-27.
  20. ^ a b c d Huang, Xiao-dong (2004). "A Multiscale Model for MPEG-4 Varied Bit Rate Video Traffic". IEEE Transactions on Broadcasting. 50 (3): 323–334. doi:10.1109/TBC.2004.834013.
  21. ^ Rootzén, Holger; Tajvidi, Nader (2006). "Multivariate generalized Pareto distributions". Bernoulli. 12 (5): 917–30. CiteSeerX 10.1.1.145.2991. doi:10.3150/bj/1161614952. S2CID 16504396.
  22. ^ M. E. J. Newman (2005). "Power laws, Pareto distributions and Zipf's law". Contemporary Physics. 46 (5): 323–51. arXiv:cond-mat/0412004. Bibcode:2005ConPh..46..323N. doi:10.1080/00107510500052444. S2CID 202719165.
  23. ^ H. J. Malik (1970). "Estimation of the Parameters of the Pareto Distribution". Metrika. 15: 126–132. doi:10.1007/BF02613565. S2CID 124007966.
  24. ^ For a two-quantile population, where approximately 18% of the population owns 82% of the wealth, the Theil index takes the value 1.
  25. ^ Gaillard, Alexandre; Hellwig, Christian; Wangner, Philipp; Werquin, Nicolas (2023). "Consumption, Wealth, and Income Inequality: A Tale of Tails". SSRN 4636704.
  26. ^ a b c d e Reed, William J.; et al. (2004). "The Double Pareto-Lognormal Distribution – A New Parametric Model for Size Distributions". Communications in Statistics – Theory and Methods. 33 (8): 1733–53. CiteSeerX 10.1.1.70.4555. doi:10.1081/sta-120037438. S2CID 13906086.
  27. ^ Reed, William J. (2002). "On the rank-size distribution for human settlements". Journal of Regional Science. 42 (1): 1–17. Bibcode:2002JRegS..42....1R. doi:10.1111/1467-9787.00247. S2CID 154285730.
  28. ^ Schroeder, Bianca; Damouras, Sotirios; Gill, Phillipa (2010-02-24). "Understanding latent sector error and how to protect against them" (PDF). 8th Usenix Conference on File and Storage Technologies (FAST 2010). Retrieved 2010-09-10. We experimented with 5 different distributions (Geometric, Weibull, Rayleigh, Pareto, and Lognormal), that are commonly used in the context of system reliability, and evaluated their fit through the total squared differences between the actual and hypothesized frequencies (χ2 statistic). We found consistently across all models that the geometric distribution is a poor fit, while the Pareto distribution provides the best fit.
  29. ^ Yuji Ijiri; Simon, Herbert A. (May 1975). "Some Distributions Associated with Bose–Einstein Statistics". Proc. Natl. Acad. Sci. USA. 72 (5): 1654–57. Bibcode:1975PNAS...72.1654I. doi:10.1073/pnas.72.5.1654. PMC 432601. PMID 16578724.
  30. ^ Harchol-Balter, Mor; Downey, Allen (August 1997). "Exploiting Process Lifetime Distributions for Dynamic Load Balancing" (PDF). ACM Transactions on Computer Systems. 15 (3): 253–258. doi:10.1145/263326.263344. S2CID 52861447.
  31. ^ Kleiber and Kotz (2003): p. 94.
  32. ^ Seal, H. (1980). "Survival probabilities based on Pareto claim distributions". ASTIN Bulletin. 11: 61–71. doi:10.1017/S0515036100006620.
  33. ^ CumFreq, software for cumulative frequency analysis and probability distribution fitting [1]
  34. ^ Hardy, Michael (2010). "Pareto's Law". Mathematical Intelligencer. 32 (3): 38–43. doi:10.1007/s00283-010-9159-2. S2CID 121797873.
  35. ^ "62 people own the same as half the world, reveals Oxfam Davos report". Oxfam. Jan 2016.
  36. ^ . Credit Suisse. Oct 2013. p. 22. Archived from the original on 2015-02-14. Retrieved 2016-01-24.
  37. ^ Tanizaki, Hisashi (2004). Computational Methods in Statistics and Econometrics. CRC Press. p. 133. ISBN 9780824750886.

Notes edit

  • Pareto, Vilfredo (1895). "La legge della domanda". Giornale Degli Economisti. 10: 59–68.
  • Pareto, Vilfredo (1896). "Cours d'économie politique". doi:10.1177/000271629700900314. S2CID 143528002. {{cite journal}}: Cite journal requires |journal= (help)

External links edit

  • Crovella, Mark E.; Bestavros, Azer (December 1997). (PDF). IEEE/ACM Transactions on Networking. Vol. 5. pp. 835–846. Archived from the original (PDF) on 2016-03-04. Retrieved 2019-02-25.
  • syntraf1.c is a C program to generate synthetic packet traffic with bounded Pareto burst size and exponential interburst time.

pareto, distribution, named, after, italian, civil, engineer, economist, sociologist, vilfredo, pareto, power, probability, distribution, that, used, description, social, quality, control, scientific, geophysical, actuarial, many, other, types, observable, phe. The Pareto distribution named after the Italian civil engineer economist and sociologist Vilfredo Pareto 2 is a power law probability distribution that is used in description of social quality control scientific geophysical actuarial and many other types of observable phenomena the principle originally applied to describing the distribution of wealth in a society fitting the trend that a large portion of wealth is held by a small fraction of the population 3 4 The Pareto principle or 80 20 rule stating that 80 of outcomes are due to 20 of causes was named in honour of Pareto but the concepts are distinct and only Pareto distributions with shape value a of log45 1 16 precisely reflect it Empirical observation has shown that this 80 20 distribution fits a wide range of cases including natural phenomena 5 and human activities 6 7 Pareto Type IProbability density function Pareto Type I probability density functions for various a displaystyle alpha with x m 1 displaystyle x mathrm m 1 As a displaystyle alpha rightarrow infty the distribution approaches d x x m displaystyle delta x x mathrm m where d displaystyle delta is the Dirac delta function Cumulative distribution function Pareto Type I cumulative distribution functions for various a displaystyle alpha with x m 1 displaystyle x mathrm m 1 Parametersx m gt 0 displaystyle x mathrm m gt 0 scale real a gt 0 displaystyle alpha gt 0 shape real Supportx x m displaystyle x in x mathrm m infty PDFa x m a x a 1 displaystyle frac alpha x mathrm m alpha x alpha 1 CDF1 x m x a displaystyle 1 left frac x mathrm m x right alpha Quantilex m 1 p 1 a displaystyle x mathrm m 1 p frac 1 alpha Mean for a 1 a x m a 1 for a gt 1 displaystyle begin cases infty amp text for alpha leq 1 dfrac alpha x mathrm m alpha 1 amp text for alpha gt 1 end cases Medianx m 2 a displaystyle x mathrm m sqrt alpha 2 Modex m displaystyle x mathrm m Variance for a 2 x m 2 a a 1 2 a 2 for a gt 2 displaystyle begin cases infty amp text for alpha leq 2 dfrac x mathrm m 2 alpha alpha 1 2 alpha 2 amp text for alpha gt 2 end cases Skewness2 1 a a 3 a 2 a for a gt 3 displaystyle frac 2 1 alpha alpha 3 sqrt frac alpha 2 alpha text for alpha gt 3 Excess kurtosis6 a 3 a 2 6 a 2 a a 3 a 4 for a gt 4 displaystyle frac 6 alpha 3 alpha 2 6 alpha 2 alpha alpha 3 alpha 4 text for alpha gt 4 Entropylog x m a e 1 1 a displaystyle log left left frac x mathrm m alpha right e 1 tfrac 1 alpha right MGFdoes not existCFa i x m t a G a i x m t displaystyle alpha ix mathrm m t alpha Gamma alpha ix mathrm m t Fisher informationI x m a a 2 x m 2 0 0 1 a 2 displaystyle mathcal I x mathrm m alpha begin bmatrix dfrac alpha 2 x mathrm m 2 amp 0 0 amp dfrac 1 alpha 2 end bmatrix Expected shortfallx m a 1 p 1 a a 1 displaystyle frac x m alpha 1 p frac 1 alpha alpha 1 1 Contents 1 Definitions 1 1 Cumulative distribution function 1 2 Probability density function 2 Properties 2 1 Moments and characteristic function 2 2 Conditional distributions 2 3 A characterization theorem 2 4 Geometric mean 2 5 Harmonic mean 2 6 Graphical representation 3 Related distributions 3 1 Generalized Pareto distributions 3 1 1 Pareto types I IV 3 1 2 Feller Pareto distribution 3 2 Inverse Pareto Distribution Power Distribution 3 3 Relation to the exponential distribution 3 4 Relation to the log normal distribution 3 5 Relation to the generalized Pareto distribution 3 6 Bounded Pareto distribution 3 6 1 Generating bounded Pareto random variables 3 7 Symmetric Pareto distribution 3 8 Multivariate Pareto distribution 4 Statistical inference 4 1 Estimation of parameters 5 Occurrence and applications 5 1 General 5 2 Relation to Zipf s law 5 3 Relation to the Pareto principle 5 4 Relation to Price s law 5 5 Lorenz curve and Gini coefficient 6 Random variate generation 7 See also 8 References 9 Notes 10 External linksDefinitions editIf X is a random variable with a Pareto Type I distribution 8 then the probability that X is greater than some number x i e the survival function also called tail function is given by F x Pr X gt x x m x a x x m 1 x lt x m displaystyle overline F x Pr X gt x begin cases left frac x mathrm m x right alpha amp x geq x mathrm m 1 amp x lt x mathrm m end cases nbsp where xm is the necessarily positive minimum possible value of X and a is a positive parameter The type I Pareto distribution is characterized by a scale parameter xm and a shape parameter a which is known as the tail index If this distribution is used to model the distribution of wealth then the parameter a is called the Pareto index Cumulative distribution function edit From the definition the cumulative distribution function of a Pareto random variable with parameters a and xm is F X x 1 x m x a x x m 0 x lt x m displaystyle F X x begin cases 1 left frac x mathrm m x right alpha amp x geq x mathrm m 0 amp x lt x mathrm m end cases nbsp Probability density function edit It follows by differentiation that the probability density function is f X x a x m a x a 1 x x m 0 x lt x m displaystyle f X x begin cases frac alpha x mathrm m alpha x alpha 1 amp x geq x mathrm m 0 amp x lt x mathrm m end cases nbsp When plotted on linear axes the distribution assumes the familiar J shaped curve which approaches each of the orthogonal axes asymptotically All segments of the curve are self similar subject to appropriate scaling factors When plotted in a log log plot the distribution is represented by a straight line Properties editMoments and characteristic function edit The expected value of a random variable following a Pareto distribution is E X a 1 a x m a 1 a gt 1 displaystyle operatorname E X begin cases infty amp alpha leq 1 frac alpha x mathrm m alpha 1 amp alpha gt 1 end cases nbsp dd The variance of a random variable following a Pareto distribution is Var X a 1 2 x m a 1 2 a a 2 a gt 2 displaystyle operatorname Var X begin cases infty amp alpha in 1 2 left frac x mathrm m alpha 1 right 2 frac alpha alpha 2 amp alpha gt 2 end cases nbsp dd If a 1 the variance does not exist The raw moments are m n a n a x m n a n a gt n displaystyle mu n begin cases infty amp alpha leq n frac alpha x mathrm m n alpha n amp alpha gt n end cases nbsp dd The moment generating function is only defined for non positive values t 0 as M t a x m E e t X a x m t a G a x m t displaystyle M left t alpha x mathrm m right operatorname E left e tX right alpha x mathrm m t alpha Gamma alpha x mathrm m t nbsp M 0 a x m 1 displaystyle M left 0 alpha x mathrm m right 1 nbsp dd Thus since the expectation does not converge on an open interval containing t 0 displaystyle t 0 nbsp we say that the moment generating function does not exist The characteristic function is given by f t a x m a i x m t a G a i x m t displaystyle varphi t alpha x mathrm m alpha ix mathrm m t alpha Gamma alpha ix mathrm m t nbsp dd where G a x is the incomplete gamma function The parameters may be solved for using the method of moments 9 Conditional distributions edit The conditional probability distribution of a Pareto distributed random variable given the event that it is greater than or equal to a particular number x 1 displaystyle x 1 nbsp exceeding x m displaystyle x text m nbsp is a Pareto distribution with the same Pareto index a displaystyle alpha nbsp but with minimum x 1 displaystyle x 1 nbsp instead of x m displaystyle x text m nbsp This implies that the conditional expected value if it is finite i e a gt 1 displaystyle alpha gt 1 nbsp is proportional to x 1 displaystyle x 1 nbsp In case of random variables that describe the lifetime of an object this means that life expectancy is proportional to age and is called the Lindy effect or Lindy s Law 10 A characterization theorem edit Suppose X 1 X 2 X 3 displaystyle X 1 X 2 X 3 dotsc nbsp are independent identically distributed random variables whose probability distribution is supported on the interval x m displaystyle x text m infty nbsp for some x m gt 0 displaystyle x text m gt 0 nbsp Suppose that for all n displaystyle n nbsp the two random variables min X 1 X n displaystyle min X 1 dotsc X n nbsp and X 1 X n min X 1 X n displaystyle X 1 dotsb X n min X 1 dotsc X n nbsp are independent Then the common distribution is a Pareto distribution citation needed Geometric mean edit The geometric mean G is 11 G x m exp 1 a displaystyle G x text m exp left frac 1 alpha right nbsp Harmonic mean edit The harmonic mean H is 11 H x m 1 1 a displaystyle H x text m left 1 frac 1 alpha right nbsp Graphical representation edit The characteristic curved long tail distribution when plotted on a linear scale masks the underlying simplicity of the function when plotted on a log log graph which then takes the form of a straight line with negative gradient It follows from the formula for the probability density function that for x xm log f X x log a x m a x a 1 log a x m a a 1 log x displaystyle log f X x log left alpha frac x mathrm m alpha x alpha 1 right log alpha x mathrm m alpha alpha 1 log x nbsp Since a is positive the gradient a 1 is negative Related distributions editGeneralized Pareto distributions edit See also Generalized Pareto distribution There is a hierarchy 8 12 of Pareto distributions known as Pareto Type I II III IV and Feller Pareto distributions 8 12 13 Pareto Type IV contains Pareto Type I III as special cases The Feller Pareto 12 14 distribution generalizes Pareto Type IV Pareto types I IV edit The Pareto distribution hierarchy is summarized in the next table comparing the survival functions complementary CDF When m 0 the Pareto distribution Type II is also known as the Lomax distribution 15 In this section the symbol xm used before to indicate the minimum value of x is replaced by s Pareto distributions F x 1 F x displaystyle overline F x 1 F x nbsp Support Parameters Type I x s a displaystyle left frac x sigma right alpha nbsp x s displaystyle x geq sigma nbsp s gt 0 a displaystyle sigma gt 0 alpha nbsp Type II 1 x m s a displaystyle left 1 frac x mu sigma right alpha nbsp x m displaystyle x geq mu nbsp m R s gt 0 a displaystyle mu in mathbb R sigma gt 0 alpha nbsp Lomax 1 x s a displaystyle left 1 frac x sigma right alpha nbsp x 0 displaystyle x geq 0 nbsp s gt 0 a displaystyle sigma gt 0 alpha nbsp Type III 1 x m s 1 g 1 displaystyle left 1 left frac x mu sigma right 1 gamma right 1 nbsp x m displaystyle x geq mu nbsp m R s g gt 0 displaystyle mu in mathbb R sigma gamma gt 0 nbsp Type IV 1 x m s 1 g a displaystyle left 1 left frac x mu sigma right 1 gamma right alpha nbsp x m displaystyle x geq mu nbsp m R s g gt 0 a displaystyle mu in mathbb R sigma gamma gt 0 alpha nbsp The shape parameter a is the tail index m is location s is scale g is an inequality parameter Some special cases of Pareto Type IV are P I V s s 1 a P I s a displaystyle P IV sigma sigma 1 alpha P I sigma alpha nbsp P I V m s 1 a P I I m s a displaystyle P IV mu sigma 1 alpha P II mu sigma alpha nbsp P I V m s g 1 P I I I m s g displaystyle P IV mu sigma gamma 1 P III mu sigma gamma nbsp dd The finiteness of the mean and the existence and the finiteness of the variance depend on the tail index a inequality index g In particular fractional d moments are finite for some d gt 0 as shown in the table below where d is not necessarily an integer Moments of Pareto I IV distributions case m 0 E X displaystyle operatorname E X nbsp Condition E X d displaystyle operatorname E X delta nbsp Condition Type I s a a 1 displaystyle frac sigma alpha alpha 1 nbsp a gt 1 displaystyle alpha gt 1 nbsp s d a a d displaystyle frac sigma delta alpha alpha delta nbsp d lt a displaystyle delta lt alpha nbsp Type II s a 1 m displaystyle frac sigma alpha 1 mu nbsp a gt 1 displaystyle alpha gt 1 nbsp s d G a d G 1 d G a displaystyle frac sigma delta Gamma alpha delta Gamma 1 delta Gamma alpha nbsp 0 lt d lt a displaystyle 0 lt delta lt alpha nbsp Type III s G 1 g G 1 g displaystyle sigma Gamma 1 gamma Gamma 1 gamma nbsp 1 lt g lt 1 displaystyle 1 lt gamma lt 1 nbsp s d G 1 g d G 1 g d displaystyle sigma delta Gamma 1 gamma delta Gamma 1 gamma delta nbsp g 1 lt d lt g 1 displaystyle gamma 1 lt delta lt gamma 1 nbsp Type IV s G a g G 1 g G a displaystyle frac sigma Gamma alpha gamma Gamma 1 gamma Gamma alpha nbsp 1 lt g lt a displaystyle 1 lt gamma lt alpha nbsp s d G a g d G 1 g d G a displaystyle frac sigma delta Gamma alpha gamma delta Gamma 1 gamma delta Gamma alpha nbsp g 1 lt d lt a g displaystyle gamma 1 lt delta lt alpha gamma nbsp Feller Pareto distribution edit Feller 12 14 defines a Pareto variable by transformation U Y 1 1 of a beta random variable Y whose probability density function is f y y g 1 1 1 y g 2 1 B g 1 g 2 0 lt y lt 1 g 1 g 2 gt 0 displaystyle f y frac y gamma 1 1 1 y gamma 2 1 B gamma 1 gamma 2 qquad 0 lt y lt 1 gamma 1 gamma 2 gt 0 nbsp where B is the beta function If W m s Y 1 1 g s gt 0 g gt 0 displaystyle W mu sigma Y 1 1 gamma qquad sigma gt 0 gamma gt 0 nbsp then W has a Feller Pareto distribution FP m s g g1 g2 8 If U 1 G d 1 1 displaystyle U 1 sim Gamma delta 1 1 nbsp and U 2 G d 2 1 displaystyle U 2 sim Gamma delta 2 1 nbsp are independent Gamma variables another construction of a Feller Pareto FP variable is 16 W m s U 1 U 2 g displaystyle W mu sigma left frac U 1 U 2 right gamma nbsp and we write W FP m s g d1 d2 Special cases of the Feller Pareto distribution are F P s s 1 1 a P I s a displaystyle FP sigma sigma 1 1 alpha P I sigma alpha nbsp F P m s 1 1 a P I I m s a displaystyle FP mu sigma 1 1 alpha P II mu sigma alpha nbsp F P m s g 1 1 P I I I m s g displaystyle FP mu sigma gamma 1 1 P III mu sigma gamma nbsp F P m s g 1 a P I V m s g a displaystyle FP mu sigma gamma 1 alpha P IV mu sigma gamma alpha nbsp Inverse Pareto Distribution Power Distribution edit When a random variable Y displaystyle Y nbsp follows a pareto distribution then its inverse X 1 Y displaystyle X 1 Y nbsp follows an Inverse Pareto distribution Inverse Pareto distribution is equivalent to a Power distribution 17 Y P a a x m a x m a y a 1 y x m X i P a a x m P o w e r x m 1 a a x a 1 x m 1 a 0 lt x x m 1 displaystyle Y sim mathrm Pa alpha x m frac alpha x m alpha y alpha 1 quad y geq x m quad Leftrightarrow quad X sim mathrm iPa alpha x m mathrm Power x m 1 alpha frac alpha x alpha 1 x m 1 alpha quad 0 lt x leq x m 1 nbsp Relation to the exponential distribution edit The Pareto distribution is related to the exponential distribution as follows If X is Pareto distributed with minimum xm and index a then Y log X x m displaystyle Y log left frac X x mathrm m right nbsp is exponentially distributed with rate parameter a Equivalently if Y is exponentially distributed with rate a then x m e Y displaystyle x mathrm m e Y nbsp is Pareto distributed with minimum xm and index a This can be shown using the standard change of variable techniques Pr Y lt y Pr log X x m lt y Pr X lt x m e y 1 x m x m e y a 1 e a y displaystyle begin aligned Pr Y lt y amp Pr left log left frac X x mathrm m right lt y right amp Pr X lt x mathrm m e y 1 left frac x mathrm m x mathrm m e y right alpha 1 e alpha y end aligned nbsp The last expression is the cumulative distribution function of an exponential distribution with rate a Pareto distribution can be constructed by hierarchical exponential distributions 18 Let ϕ a Exp a displaystyle phi a sim text Exp a nbsp and h ϕ Exp ϕ displaystyle eta phi sim text Exp phi nbsp Then we have p h a a a h 2 displaystyle p eta a frac a a eta 2 nbsp and as a result a h Pareto a 1 displaystyle a eta sim text Pareto a 1 nbsp More in general if l Gamma a b displaystyle lambda sim text Gamma alpha beta nbsp shape rate parametrization and h l Exp l displaystyle eta lambda sim text Exp lambda nbsp then b h Pareto b a displaystyle beta eta sim text Pareto beta alpha nbsp Equivalently if Y Gamma a 1 displaystyle Y sim text Gamma alpha 1 nbsp and X Exp 1 displaystyle X sim text Exp 1 nbsp then x m 1 X Y Pareto x m a displaystyle x text m left 1 frac X Y right sim text Pareto x text m alpha nbsp Relation to the log normal distribution edit The Pareto distribution and log normal distribution are alternative distributions for describing the same types of quantities One of the connections between the two is that they are both the distributions of the exponential of random variables distributed according to other common distributions respectively the exponential distribution and normal distribution See the previous section Relation to the generalized Pareto distribution edit The Pareto distribution is a special case of the generalized Pareto distribution which is a family of distributions of similar form but containing an extra parameter in such a way that the support of the distribution is either bounded below at a variable point or bounded both above and below where both are variable with the Lomax distribution as a special case This family also contains both the unshifted and shifted exponential distributions The Pareto distribution with scale x m displaystyle x m nbsp and shape a displaystyle alpha nbsp is equivalent to the generalized Pareto distribution with location m x m displaystyle mu x m nbsp scale s x m a displaystyle sigma x m alpha nbsp and shape 3 1 a displaystyle xi 1 alpha nbsp and conversely one can get the Pareto distribution from the GPD by taking x m s 3 displaystyle x m sigma xi nbsp and a 1 3 displaystyle alpha 1 xi nbsp if 3 gt 0 displaystyle xi gt 0 nbsp Bounded Pareto distribution edit See also Truncated distribution Bounded ParetoParametersL gt 0 displaystyle L gt 0 nbsp location real H gt L displaystyle H gt L nbsp location real a gt 0 displaystyle alpha gt 0 nbsp shape real SupportL x H displaystyle L leqslant x leqslant H nbsp PDFa L a x a 1 1 L H a displaystyle frac alpha L alpha x alpha 1 1 left frac L H right alpha nbsp CDF1 L a x a 1 L H a displaystyle frac 1 L alpha x alpha 1 left frac L H right alpha nbsp MeanL a 1 L H a a a 1 1 L a 1 1 H a 1 a 1 displaystyle frac L alpha 1 left frac L H right alpha cdot left frac alpha alpha 1 right cdot left frac 1 L alpha 1 frac 1 H alpha 1 right alpha neq 1 nbsp H L H L ln H L a 1 displaystyle frac H L H L ln frac H L alpha 1 nbsp MedianL 1 1 2 1 L H a 1 a displaystyle L left 1 frac 1 2 left 1 left frac L H right alpha right right frac 1 alpha nbsp VarianceL a 1 L H a a a 2 1 L a 2 1 H a 2 a 2 displaystyle frac L alpha 1 left frac L H right alpha cdot left frac alpha alpha 2 right cdot left frac 1 L alpha 2 frac 1 H alpha 2 right alpha neq 2 nbsp 2 H 2 L 2 H 2 L 2 ln H L a 2 displaystyle frac 2 H 2 L 2 H 2 L 2 ln frac H L alpha 2 nbsp this is the second raw moment not the variance SkewnessL a 1 L H a a L k a H k a a k a j displaystyle frac L alpha 1 left frac L H right alpha cdot frac alpha L k alpha H k alpha alpha k alpha neq j nbsp this is the kth raw moment not the skewness The bounded or truncated Pareto distribution has three parameters a L and H As in the standard Pareto distribution a determines the shape L denotes the minimal value and H denotes the maximal value The probability density function is a L a x a 1 1 L H a displaystyle frac alpha L alpha x alpha 1 1 left frac L H right alpha nbsp where L x H and a gt 0 Generating bounded Pareto random variables edit If U is uniformly distributed on 0 1 then applying inverse transform method 19 U 1 L a x a 1 L H a displaystyle U frac 1 L alpha x alpha 1 frac L H alpha nbsp x U H a U L a H a H a L a 1 a displaystyle x left frac UH alpha UL alpha H alpha H alpha L alpha right frac 1 alpha nbsp is a bounded Pareto distributed Symmetric Pareto distribution edit The purpose of the Symmetric and Zero Symmetric Pareto distributions is to capture some special statistical distribution with a sharp probability peak and symmetric long probability tails These two distributions are derived from the Pareto distribution Long probability tails normally means that probability decays slowly and can be used to fit a variety of datasets But if the distribution has symmetric structure with two slow decaying tails Pareto could not do it Then Symmetric Pareto or Zero Symmetric Pareto distribution is applied instead 20 The Cumulative distribution function CDF of Symmetric Pareto distribution is defined as following 20 F X P x lt X 1 2 b 2 b X a X lt b 1 1 2 b X a X b displaystyle F X P x lt X begin cases tfrac 1 2 b over 2b X a amp X lt b 1 tfrac 1 2 tfrac b X a amp X geq b end cases nbsp The corresponding probability density function PDF is 20 p x a b a 2 b x b a 1 X R displaystyle p x ab a over 2 b left vert x b right vert a 1 X in R nbsp This distribution has two parameters a and b It is symmetric by b Then the mathematic expectation is b When it has variance as following E x b 2 x b 2 p x d x 2 b 2 a 2 a 1 displaystyle E x b 2 int infty infty x b 2 p x dx 2b 2 over a 2 a 1 nbsp The CDF of Zero Symmetric Pareto ZSP distribution is defined as following F X P x lt X 1 2 b b X a X lt 0 1 1 2 b b X a X 0 displaystyle F X P x lt X begin cases tfrac 1 2 b over b X a amp X lt 0 1 tfrac 1 2 tfrac b b X a amp X geq 0 end cases nbsp The corresponding PDF is p x a b a 2 b x a 1 X R displaystyle p x ab a over 2 b left vert x right vert a 1 X in R nbsp This distribution is symmetric by zero Parameter a is related to the decay rate of probability and a 2b represents peak magnitude of probability 20 Multivariate Pareto distribution edit The univariate Pareto distribution has been extended to a multivariate Pareto distribution 21 Statistical inference editEstimation of parameters edit The likelihood function for the Pareto distribution parameters a and xm given an independent sample x x1 x2 xn is L a x m i 1 n a x m a x i a 1 a n x m n a i 1 n 1 x i a 1 displaystyle L alpha x mathrm m prod i 1 n alpha frac x mathrm m alpha x i alpha 1 alpha n x mathrm m n alpha prod i 1 n frac 1 x i alpha 1 nbsp Therefore the logarithmic likelihood function is ℓ a x m n ln a n a ln x m a 1 i 1 n ln x i displaystyle ell alpha x mathrm m n ln alpha n alpha ln x mathrm m alpha 1 sum i 1 n ln x i nbsp It can be seen that ℓ a x m displaystyle ell alpha x mathrm m nbsp is monotonically increasing with xm that is the greater the value of xm the greater the value of the likelihood function Hence since x xm we conclude that x m min i x i displaystyle widehat x mathrm m min i x i nbsp To find the estimator for a we compute the corresponding partial derivative and determine where it is zero ℓ a n a n ln x m i 1 n ln x i 0 displaystyle frac partial ell partial alpha frac n alpha n ln x mathrm m sum i 1 n ln x i 0 nbsp Thus the maximum likelihood estimator for a is a n i ln x i x m displaystyle widehat alpha frac n sum i ln x i widehat x mathrm m nbsp The expected statistical error is 22 s a n displaystyle sigma frac widehat alpha sqrt n nbsp Malik 1970 23 gives the exact joint distribution of x m a displaystyle hat x mathrm m hat alpha nbsp In particular x m displaystyle hat x mathrm m nbsp and a displaystyle hat alpha nbsp are independent and x m displaystyle hat x mathrm m nbsp is Pareto with scale parameter xm and shape parameter na whereas a displaystyle hat alpha nbsp has an inverse gamma distribution with shape and scale parameters n 1 and na respectively Occurrence and applications editGeneral edit Vilfredo Pareto originally used this distribution to describe the allocation of wealth among individuals since it seemed to show rather well the way that a larger portion of the wealth of any society is owned by a smaller percentage of the people in that society He also used it to describe distribution of income 4 This idea is sometimes expressed more simply as the Pareto principle or the 80 20 rule which says that 20 of the population controls 80 of the wealth 24 As Michael Hudson points out The Collapse of Antiquity 2023 p 85 amp n 7 a mathematical corollary is that 10 would have 65 of the wealth and 5 would have half the national wealth However the 80 20 rule corresponds to a particular value of a and in fact Pareto s data on British income taxes in his Cours d economie politique indicates that about 30 of the population had about 70 of the income citation needed The probability density function PDF graph at the beginning of this article shows that the probability or fraction of the population that owns a small amount of wealth per person is rather high and then decreases steadily as wealth increases The Pareto distribution is not realistic for wealth for the lower end however In fact net worth may even be negative This distribution is not limited to describing wealth or income but to many situations in which an equilibrium is found in the distribution of the small to the large The following examples are sometimes seen as approximately Pareto distributed All four variables of the household s budget constraint consumption labor income capital income and wealth 25 The sizes of human settlements few cities many hamlets villages 26 27 File size distribution of Internet traffic which uses the TCP protocol many smaller files few larger ones 26 Hard disk drive error rates 28 Clusters of Bose Einstein condensate near absolute zero 29 nbsp Fitted cumulative Pareto Lomax distribution to maximum one day rainfalls using CumFreq see also distribution fitting The values of oil reserves in oil fields a few large fields many small fields 26 The length distribution in jobs assigned to supercomputers a few large ones many small ones 30 The standardized price returns on individual stocks 26 Sizes of sand particles 26 The size of meteorites Severity of large casualty losses for certain lines of business such as general liability commercial auto and workers compensation 31 32 Amount of time a user on Steam will spend playing different games Some games get played a lot but most get played almost never 2 original research In hydrology the Pareto distribution is applied to extreme events such as annually maximum one day rainfalls and river discharges 33 The blue picture illustrates an example of fitting the Pareto distribution to ranked annually maximum one day rainfalls showing also the 90 confidence belt based on the binomial distribution The rainfall data are represented by plotting positions as part of the cumulative frequency analysis In Electric Utility Distribution Reliability 80 of the Customer Minutes Interrupted occur on approximately 20 of the days in a given year Relation to Zipf s law edit The Pareto distribution is a continuous probability distribution Zipf s law also sometimes called the zeta distribution is a discrete distribution separating the values into a simple ranking Both are a simple power law with a negative exponent scaled so that their cumulative distributions equal 1 Zipf s can be derived from the Pareto distribution if the x displaystyle x nbsp values incomes are binned into N displaystyle N nbsp ranks so that the number of people in each bin follows a 1 rank pattern The distribution is normalized by defining x m displaystyle x m nbsp so that a x m a 1 H N a 1 displaystyle alpha x mathrm m alpha frac 1 H N alpha 1 nbsp where H N a 1 displaystyle H N alpha 1 nbsp is the generalized harmonic number This makes Zipf s probability density function derivable from Pareto s f x a x m a x a 1 1 x s H N s displaystyle f x frac alpha x mathrm m alpha x alpha 1 frac 1 x s H N s nbsp where s a 1 displaystyle s alpha 1 nbsp and x displaystyle x nbsp is an integer representing rank from 1 to N where N is the highest income bracket So a randomly selected person or word website link or city from a population or language internet or country has f x displaystyle f x nbsp probability of ranking x displaystyle x nbsp Relation to the Pareto principle edit The 80 20 law according to which 20 of all people receive 80 of all income and 20 of the most affluent 20 receive 80 of that 80 and so on holds precisely when the Pareto index is a log 4 5 log 10 5 log 10 4 1 161 displaystyle alpha log 4 5 cfrac log 10 5 log 10 4 approx 1 161 nbsp This result can be derived from the Lorenz curve formula given below Moreover the following have been shown 34 to be mathematically equivalent Income is distributed according to a Pareto distribution with index a gt 1 There is some number 0 p 1 2 such that 100p of all people receive 100 1 p of all income and similarly for every real not necessarily integer n gt 0 100pn of all people receive 100 1 p n percentage of all income a and p are related by 1 1 a ln 1 p ln p ln 1 p n ln p n displaystyle 1 frac 1 alpha frac ln 1 p ln p frac ln 1 p n ln p n nbsp dd This does not apply only to income but also to wealth or to anything else that can be modeled by this distribution This excludes Pareto distributions in which 0 lt a 1 which as noted above have an infinite expected value and so cannot reasonably model income distribution Relation to Price s law edit Price s square root law is sometimes offered as a property of or as similar to the Pareto distribution However the law only holds in the case that a 1 displaystyle alpha 1 nbsp Note that in this case the total and expected amount of wealth are not defined and the rule only applies asymptotically to random samples The extended Pareto Principle mentioned above is a far more general rule Lorenz curve and Gini coefficient edit nbsp Lorenz curves for a number of Pareto distributions The case a corresponds to perfectly equal distribution G 0 and the a 1 line corresponds to complete inequality G 1 The Lorenz curve is often used to characterize income and wealth distributions For any distribution the Lorenz curve L F is written in terms of the PDF f or the CDF F as L F x m x F x f x d x x m x f x d x 0 F x F d F 0 1 x F d F displaystyle L F frac int x mathrm m x F xf x dx int x mathrm m infty xf x dx frac int 0 F x F dF int 0 1 x F dF nbsp where x F is the inverse of the CDF For the Pareto distribution x F x m 1 F 1 a displaystyle x F frac x mathrm m 1 F frac 1 alpha nbsp and the Lorenz curve is calculated to be L F 1 1 F 1 1 a displaystyle L F 1 1 F 1 frac 1 alpha nbsp For 0 lt a 1 displaystyle 0 lt alpha leq 1 nbsp the denominator is infinite yielding L 0 Examples of the Lorenz curve for a number of Pareto distributions are shown in the graph on the right According to Oxfam 2016 the richest 62 people have as much wealth as the poorest half of the world s population 35 We can estimate the Pareto index that would apply to this situation Letting e equal 62 7 10 9 displaystyle 62 7 times 10 9 nbsp we have L 1 2 1 L 1 e displaystyle L 1 2 1 L 1 varepsilon nbsp or 1 1 2 1 1 a e 1 1 a displaystyle 1 1 2 1 frac 1 alpha varepsilon 1 frac 1 alpha nbsp The solution is that a equals about 1 15 and about 9 of the wealth is owned by each of the two groups But actually the poorest 69 of the world adult population owns only about 3 of the wealth 36 The Gini coefficient is a measure of the deviation of the Lorenz curve from the equidistribution line which is a line connecting 0 0 and 1 1 which is shown in black a in the Lorenz plot on the right Specifically the Gini coefficient is twice the area between the Lorenz curve and the equidistribution line The Gini coefficient for the Pareto distribution is then calculated for a 1 displaystyle alpha geq 1 nbsp to be G 1 2 0 1 L F d F 1 2 a 1 displaystyle G 1 2 left int 0 1 L F dF right frac 1 2 alpha 1 nbsp see Aaberge 2005 Random variate generation editFurther information Non uniform random variate generation Random samples can be generated using inverse transform sampling Given a random variate U drawn from the uniform distribution on the unit interval 0 1 the variate T given by T x m U 1 a displaystyle T frac x mathrm m U 1 alpha nbsp is Pareto distributed 37 If U is uniformly distributed on 0 1 it can be exchanged with 1 U See also editBradford s law Pattern of references in science journals Gutenberg Richter law Law in seismology describing earthquake frequency and magnitude Matthew effect The rich get richer and the poor get poorer Pareto analysis Statistical principle about ratio of effects to causesPages displaying short descriptions of redirect targets Pareto efficiency Optimal allocation of resources Pareto interpolation Method of estimating the median of a population Power law probability distributions Functional relationship between two quantities Sturgeon s law Ninety percent of everything is crap Traffic generation model simulated flow of data in a communications networkPages displaying wikidata descriptions as a fallback Zipf s law Probability distribution Heavy tailed distribution Probability distributionReferences edit a b Norton Matthew Khokhlov Valentyn Uryasev Stan 2019 Calculating CVaR and bPOE for common probability distributions with application to portfolio optimization and density estimation PDF Annals of Operations Research 299 1 2 Springer 1281 1315 arXiv 1811 11301 doi 10 1007 s10479 019 03373 1 S2CID 254231768 Retrieved 2023 02 27 Amoroso Luigi 1938 VILFREDO PARETO Econometrica Pre 1986 Jan 1938 6 1 ProQuest 6 Pareto Vilfredo 1898 Cours d economie politique Journal of Political Economy 6 doi 10 1086 250536 a b Pareto Vilfredo Cours d Economie Politique Nouvelle edition par G H Bousquet et G Busino Librairie Droz Geneva 1964 pp 299 345 Original book archived VAN MONTFORT M A J 1986 The Generalized Pareto distribution applied to rainfall depths Hydrological Sciences Journal 31 2 151 162 Bibcode 1986HydSJ 31 151V doi 10 1080 02626668609491037 Oancea Bogdan 2017 Income inequality in Romania The exponential Pareto distribution Physica A Statistical Mechanics and Its Applications 469 486 498 Bibcode 2017PhyA 469 486O doi 10 1016 j physa 2016 11 094 Morella Matteo Pareto Distribution academia edu a b c d Barry C Arnold 1983 Pareto Distributions International Co operative Publishing House ISBN 978 0 89974 012 6 S Hussain S H Bhatti 2018 Parameter estimation of Pareto distribution Some modified moment estimators Maejo International Journal of Science and Technology 12 1 11 27 Eliazar Iddo November 2017 Lindy s Law Physica A Statistical Mechanics and Its Applications 486 797 805 Bibcode 2017PhyA 486 797E doi 10 1016 j physa 2017 05 077 S2CID 125349686 a b Johnson NL Kotz S Balakrishnan N 1994 Continuous univariate distributions Vol 1 Wiley Series in Probability and Statistics a b c d Johnson Kotz and Balakrishnan 1994 20 4 Christian Kleiber amp Samuel Kotz 2003 Statistical Size Distributions in Economics and Actuarial Sciences Wiley ISBN 978 0 471 15064 0 a b Feller W 1971 An Introduction to Probability Theory and its Applications Vol II 2nd ed New York Wiley p 50 The densities 4 3 are sometimes called after the economist Pareto It was thought rather naively from a modern statistical standpoint that income distributions should have a tail with a density Ax a as x Lomax K S 1954 Business failures Another example of the analysis of failure data Journal of the American Statistical Association 49 268 847 52 doi 10 1080 01621459 1954 10501239 Chotikapanich Duangkamon 16 September 2008 Chapter 7 Pareto and Generalized Pareto Distributions Modeling Income Distributions and Lorenz Curves Springer pp 121 22 ISBN 9780387727967 Dallas A C Characterizing the Pareto and power distributions Annals of the Institute of Statistical Mathematics 28 1 1976 491 497 White Gentry 2006 Bayesian semiparametric spatial and joint spatio temporal modeling Thesis thesis University of Missouri Columbia section 5 3 1 Inverse Transform Method Archived from the original on 2012 01 17 Retrieved 2012 08 27 a b c d Huang Xiao dong 2004 A Multiscale Model for MPEG 4 Varied Bit Rate Video Traffic IEEE Transactions on Broadcasting 50 3 323 334 doi 10 1109 TBC 2004 834013 Rootzen Holger Tajvidi Nader 2006 Multivariate generalized Pareto distributions Bernoulli 12 5 917 30 CiteSeerX 10 1 1 145 2991 doi 10 3150 bj 1161614952 S2CID 16504396 M E J Newman 2005 Power laws Pareto distributions and Zipf s law Contemporary Physics 46 5 323 51 arXiv cond mat 0412004 Bibcode 2005ConPh 46 323N doi 10 1080 00107510500052444 S2CID 202719165 H J Malik 1970 Estimation of the Parameters of the Pareto Distribution Metrika 15 126 132 doi 10 1007 BF02613565 S2CID 124007966 For a two quantile population where approximately 18 of the population owns 82 of the wealth the Theil index takes the value 1 Gaillard Alexandre Hellwig Christian Wangner Philipp Werquin Nicolas 2023 Consumption Wealth and Income Inequality A Tale of Tails SSRN 4636704 a b c d e Reed William J et al 2004 The Double Pareto Lognormal Distribution A New Parametric Model for Size Distributions Communications in Statistics Theory and Methods 33 8 1733 53 CiteSeerX 10 1 1 70 4555 doi 10 1081 sta 120037438 S2CID 13906086 Reed William J 2002 On the rank size distribution for human settlements Journal of Regional Science 42 1 1 17 Bibcode 2002JRegS 42 1R doi 10 1111 1467 9787 00247 S2CID 154285730 Schroeder Bianca Damouras Sotirios Gill Phillipa 2010 02 24 Understanding latent sector error and how to protect against them PDF 8th Usenix Conference on File and Storage Technologies FAST 2010 Retrieved 2010 09 10 We experimented with 5 different distributions Geometric Weibull Rayleigh Pareto and Lognormal that are commonly used in the context of system reliability and evaluated their fit through the total squared differences between the actual and hypothesized frequencies x2 statistic We found consistently across all models that the geometric distribution is a poor fit while the Pareto distribution provides the best fit Yuji Ijiri Simon Herbert A May 1975 Some Distributions Associated with Bose Einstein Statistics Proc Natl Acad Sci USA 72 5 1654 57 Bibcode 1975PNAS 72 1654I doi 10 1073 pnas 72 5 1654 PMC 432601 PMID 16578724 Harchol Balter Mor Downey Allen August 1997 Exploiting Process Lifetime Distributions for Dynamic Load Balancing PDF ACM Transactions on Computer Systems 15 3 253 258 doi 10 1145 263326 263344 S2CID 52861447 Kleiber and Kotz 2003 p 94 Seal H 1980 Survival probabilities based on Pareto claim distributions ASTIN Bulletin 11 61 71 doi 10 1017 S0515036100006620 CumFreq software for cumulative frequency analysis and probability distribution fitting 1 Hardy Michael 2010 Pareto s Law Mathematical Intelligencer 32 3 38 43 doi 10 1007 s00283 010 9159 2 S2CID 121797873 62 people own the same as half the world reveals Oxfam Davos report Oxfam Jan 2016 Global Wealth Report 2013 Credit Suisse Oct 2013 p 22 Archived from the original on 2015 02 14 Retrieved 2016 01 24 Tanizaki Hisashi 2004 Computational Methods in Statistics and Econometrics CRC Press p 133 ISBN 9780824750886 Notes editM O Lorenz 1905 Methods of measuring the concentration of wealth Publications of the American Statistical Association 9 70 209 19 Bibcode 1905PAmSA 9 209L doi 10 2307 2276207 JSTOR 2276207 S2CID 154048722 Pareto Vilfredo 1965 Librairie Droz ed Ecrits sur la courbe de la repartition de la richesse Œuvres completes T III p 48 ISBN 9782600040211 Pareto Vilfredo 1895 La legge della domanda Giornale Degli Economisti 10 59 68 Pareto Vilfredo 1896 Cours d economie politique doi 10 1177 000271629700900314 S2CID 143528002 a href Template Cite journal html title Template Cite journal cite journal a Cite journal requires journal help External links edit Pareto distribution Encyclopedia of Mathematics EMS Press 2001 1994 Weisstein Eric W Pareto distribution MathWorld Aaberge Rolf May 2005 Gini s Nuclear Family International Conference to Honor Two Eminent Social Scientists PDF Crovella Mark E Bestavros Azer December 1997 Self Similarity in World Wide Web Traffic Evidence and Possible Causes PDF IEEE ACM Transactions on Networking Vol 5 pp 835 846 Archived from the original PDF on 2016 03 04 Retrieved 2019 02 25 syntraf1 c is a C program to generate synthetic packet traffic with bounded Pareto burst size and exponential interburst time Retrieved from https en wikipedia org w index php title Pareto distribution amp oldid 1214581060, wikipedia, wiki, book, books, library,

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