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The Pareto distribution, named after the Italian
civil engineer A civil engineer is a person who practices civil engineering – the application of planning, designing, constructing, maintaining, and operating infrastructure while protecting the public and environmental health, as well as improving existing ...
, economist, and sociologist Vilfredo Pareto ( ), is a
power-law In statistics, a power law is a functional relationship between two quantities, where a relative change in one quantity results in a proportional relative change in the other quantity, independent of the initial size of those quantities: one qua ...
probability distribution In probability theory and statistics, a probability distribution is the mathematical function that gives the probabilities of occurrence of different possible outcomes for an experiment. It is a mathematical description of a random phenomenon i ...
that is used in description of social,
quality control Quality control (QC) is a process by which entities review the quality of all factors involved in production. ISO 9000 defines quality control as "a part of quality management focused on fulfilling quality requirements". This approach places ...
, 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. The
Pareto principle The Pareto principle states that for many outcomes, roughly 80% of consequences come from 20% of causes (the "vital few"). Other names for this principle are the 80/20 rule, the law of the vital few, or the principle of factor sparsity. Manage ...
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 () 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 and human activities.


Definitions

If ''X'' is a
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the po ...
with a Pareto (Type I) distribution, then the probability that ''X'' is greater than some number ''x'', i.e. the survival function (also called tail function), is given by :\overline(x) = \Pr(X>x) = \begin \left(\frac\right)^\alpha & x\ge x_\mathrm, \\ 1 & x < x_\mathrm, \end where ''x''m is the (necessarily positive) minimum possible value of ''X'', and ''α'' is a positive parameter. The Pareto Type I distribution is characterized by a scale parameter ''x''m and a shape parameter ''α'', which is known as the ''tail index''. When this distribution is used to model the distribution of wealth, then the parameter ''α'' is called the Pareto index.


Cumulative distribution function

From the definition, the
cumulative distribution function In probability theory and statistics, the cumulative distribution function (CDF) of a real-valued random variable X, or just distribution function of X, evaluated at x, is the probability that X will take a value less than or equal to x. Ev ...
of a Pareto random variable with parameters ''α'' and ''x''m is :F_X(x) = \begin 1-\left(\frac\right)^\alpha & x \ge x_\mathrm, \\ 0 & x < x_\mathrm. \end


Probability density function

It follows (by differentiation) that the probability density function is :f_X(x)= \begin \frac & x \ge x_\mathrm, \\ 0 & x < x_\mathrm. \end When plotted on linear axes, the distribution assumes the familiar J-shaped curve which approaches each of the orthogonal axes
asymptotically In analytic geometry, an asymptote () of a curve is a line such that the distance between the curve and the line approaches zero as one or both of the ''x'' or ''y'' coordinates tends to infinity. In projective geometry and related contexts, ...
. 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


Moments and characteristic function

* The
expected value In probability theory, the expected value (also called expectation, expectancy, mathematical expectation, mean, average, or first moment) is a generalization of the weighted average. Informally, the expected value is the arithmetic mean of a l ...
of a
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the po ...
following a Pareto distribution is : :: \operatorname(X)= \begin \infty & \alpha\le 1, \\ \frac & \alpha>1. \end * The variance of a
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the po ...
following a Pareto distribution is :: \operatorname(X)= \begin \infty & \alpha\in(1,2], \\ \left(\frac\right)^2 \frac & \alpha>2. \end : (If ''α'' ≤ 1, the variance does not exist.) * The raw moment (mathematics), moments are :: \mu_n'= \begin \infty & \alpha\le n, \\ \frac & \alpha>n. \end * The moment generating function is only defined for non-positive values ''t'' ≤ 0 as ::M\left(t;\alpha,x_\mathrm\right) = \operatorname \left ^ \right = \alpha(-x_\mathrm t)^\alpha\Gamma(-\alpha,-x_\mathrm t) ::M\left(0,\alpha,x_\mathrm\right)=1. Thus, since the expectation does not converge on an
open interval In mathematics, a (real) interval is a set of real numbers that contains all real numbers lying between any two numbers of the set. For example, the set of numbers satisfying is an interval which contains , , and all numbers in between. Other ...
containing t=0 we say that the moment generating function does not exist. * The characteristic function is given by :: \varphi(t;\alpha,x_\mathrm)=\alpha(-ix_\mathrm t)^\alpha\Gamma(-\alpha,-ix_\mathrm t), : where Γ(''a'', ''x'') is the
incomplete gamma function In mathematics, the upper and lower incomplete gamma functions are types of special functions which arise as solutions to various mathematical problems such as certain integrals. Their respective names stem from their integral definitions, which ...
. The parameters may be solved for using the method of moments.


Conditional distributions

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 exceeding x_\text, is a Pareto distribution with the same Pareto index \alpha but with minimum x_1 instead of x_\text. This implies that the conditional expected value (if it is finite, i.e. \alpha>1) is proportional to x_1. 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.


A characterization theorem

Suppose X_1, X_2, X_3, \dotsc are independent identically distributed
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the po ...
s whose probability distribution is supported on the interval [x_\text,\infty) for some x_\text>0. Suppose that for all n, the two random variables \min\ and (X_1+\dotsb+X_n)/\min\ are independent. Then the common distribution is a Pareto distribution.


Geometric mean

The geometric mean (''G'') isJohnson NL, Kotz S, Balakrishnan N (1994) Continuous univariate distributions Vol 1. Wiley Series in Probability and Statistics. : G = x_\text \exp \left( \frac \right).


Harmonic mean

The
harmonic mean In mathematics, the harmonic mean is one of several kinds of average, and in particular, one of the Pythagorean means. It is sometimes appropriate for situations when the average rate is desired. The harmonic mean can be expressed as the recipro ...
(''H'') is : H = x_\text \left( 1 + \frac \right).


Graphical representation

The characteristic curved '
long tail In statistics and business, a long tail of some probability distribution, distributions of numbers is the portion of the distribution having many occurrences far from the "head" or central part of the distribution. The distribution could involv ...
' 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'' ≥ ''x''m, :\log f_X(x)= \log \left(\alpha\frac\right) = \log (\alpha x_\mathrm^\alpha) - (\alpha+1) \log x. Since ''α'' is positive, the gradient −(''α'' + 1) is negative.


Related distributions


Generalized Pareto distributions

There is a hierarchy Johnson, Kotz, and Balakrishnan (1994), (20.4). of Pareto distributions known as Pareto Type I, II, III, IV, and Feller–Pareto distributions. Pareto Type IV contains Pareto Type I–III as special cases. The Feller–Pareto "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 ~ ''Ax''−''α'' as ''x'' → ∞." distribution generalizes Pareto Type IV.


Pareto types I–IV

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. In this section, the symbol ''x''m, used before to indicate the minimum value of ''x'', is replaced by ''σ''. The shape parameter ''α'' is the
tail index The tail is the section at the rear end of certain kinds of animals’ bodies; in general, the term refers to a distinct, flexible appendage to the torso. It is the part of the body that corresponds roughly to the sacrum and coccyx in mammals, r ...
, ''μ'' is location, ''σ'' is scale, ''γ'' is an inequality parameter. Some special cases of Pareto Type (IV) are :: P(IV)(\sigma, \sigma, 1, \alpha) = P(I)(\sigma, \alpha), :: P(IV)(\mu, \sigma, 1, \alpha) = P(II)(\mu, \sigma, \alpha), :: P(IV)(\mu, \sigma, \gamma, 1) = P(III)(\mu, \sigma, \gamma). 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.


Feller–Pareto distribution

Feller defines a Pareto variable by transformation ''U'' = ''Y''−1 − 1 of a beta random variable ''Y'', whose probability density function is : f(y) = \frac, \qquad 00, where ''B''( ) is the beta function. If : W = \mu + \sigma(Y^-1)^\gamma, \qquad \sigma>0, \gamma>0, then ''W'' has a Feller–Pareto distribution FP(''μ'', ''σ'', ''γ'', ''γ''1, ''γ''2). If U_1 \sim \Gamma(\delta_1, 1) and U_2 \sim \Gamma(\delta_2, 1) are independent Gamma variables, another construction of a Feller–Pareto (FP) variable is :W = \mu + \sigma \left(\frac\right)^\gamma and we write ''W'' ~ FP(''μ'', ''σ'', ''γ'', ''δ''1, ''δ''2). Special cases of the Feller–Pareto distribution are :FP(\sigma, \sigma, 1, 1, \alpha) = P(I)(\sigma, \alpha) :FP(\mu, \sigma, 1, 1, \alpha) = P(II)(\mu, \sigma, \alpha) :FP(\mu, \sigma, \gamma, 1, 1) = P(III)(\mu, \sigma, \gamma) :FP(\mu, \sigma, \gamma, 1, \alpha) = P(IV)(\mu, \sigma, \gamma, \alpha).


Inverse-Pareto Distribution / Power Distribution

When a random variable Y follows a pareto distribution, then its inverse X=1/Y follows an Inverse Pareto distribution. Inverse Pareto distribution is equivalent to a Power distribution :Y\sim \mathrm(\alpha, x_m) = \frac \quad (y \ge x_m) \quad \Leftrightarrow \quad X\sim \mathrm(\alpha, x_m) = \mathrm(x_m^, \alpha) = \frac \quad (0< x \le x_m^)


Relation to the exponential distribution

The Pareto distribution is related to the
exponential distribution In probability theory and statistics, the exponential distribution is the probability distribution of the time between events in a Poisson point process, i.e., a process in which events occur continuously and independently at a constant average ...
as follows. If ''X'' is Pareto-distributed with minimum ''x''m and index ''α'', then : Y = \log\left(\frac\right) is exponentially distributed with rate parameter ''α''. Equivalently, if ''Y'' is exponentially distributed with rate ''α'', then : x_\mathrm e^Y is Pareto-distributed with minimum ''x''m and index ''α''. This can be shown using the standard change-of-variable techniques: : \begin \Pr(Y The last expression is the cumulative distribution function of an exponential distribution with rate ''α''. Pareto distribution can be constructed by hierarchical exponential distributions. Let \phi , a \sim \text(a) and \eta , \phi \sim \text(\phi) . Then we have p(\eta , a) = \frac and, as a result, a+\eta \sim \text(a, 1). More in general, if \lambda \sim \text(\alpha, \beta) (shape-rate parametrization) and \eta , \lambda \sim \text(\lambda) , then \beta + \eta \sim \text(\beta, \alpha). Equivalently, if Y \sim \text(\alpha,1) and X \sim \text(1), then x_ \! \left(1 + \frac\right) \sim \text(x_, \alpha).


Relation to the log-normal distribution

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 In probability theory and statistics, the exponential distribution is the probability distribution of the time between events in a Poisson point process, i.e., a process in which events occur continuously and independently at a constant average ...
and
normal distribution In statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is : f(x) = \frac e^ The parameter \mu ...
. (See the previous section.)


Relation to the generalized Pareto distribution

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 distribution In probability theory and statistics, the exponential distribution is the probability distribution of the time between events in a Poisson point process, i.e., a process in which events occur continuously and independently at a constant average ...
s. The Pareto distribution with scale x_m and shape \alpha is equivalent to the generalized Pareto distribution with location \mu=x_m, scale \sigma=x_m/\alpha and shape \xi=1/\alpha. Vice versa one can get the Pareto distribution from the GPD by x_m = \sigma/\xi and \alpha=1/\xi.


Bounded Pareto distribution

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 : \frac, where ''L'' ≤ ''x'' ≤ ''H'', and ''α'' > 0.


Generating bounded Pareto random variables

If ''U'' is uniformly distributed on (0, 1), then applying inverse-transform method :U = \frac :x = \left(-\frac\right)^ is a bounded Pareto-distributed.


Symmetric Pareto distribution

The purpose of Symmetric Pareto distribution and Zero Symmetric Pareto distribution is to capture some special statistical distribution with a sharp probability peak and symmetric long probability tails. These two distributions are derived from Pareto distribution. Long probability tail normally means that probability decays slowly. Pareto distribution performs fitting job in many cases. 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. The Cumulative distribution function (CDF) of Symmetric Pareto distribution is defined as following: F(X) = P(x < X ) = \begin \tfrac() ^a & X The corresponding probability density function (PDF) is: p(x) = ,X\in R 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)=\int_^ (x-b)^2p(x)dx= The CDF of Zero Symmetric Pareto (ZSP) distribution is defined as following: F(X) = P(x < X ) = \begin \tfrac() ^a & X<0 \\ 1- \tfrac(\tfrac)^a& X\geq 0 \end The corresponding PDF is: p(x) = ,X\in R This distribution is symmetric by zero. Parameter a is related to the decay rate of probability and (a/2b) represents peak magnitude of probability.


Multivariate Pareto distribution

The univariate Pareto distribution has been extended to a multivariate Pareto distribution.


Statistical inference


Estimation of parameters

The likelihood function for the Pareto distribution parameters ''α'' and ''x''m, given an independent
sample Sample or samples may refer to: Base meaning * Sample (statistics), a subset of a population – complete data set * Sample (signal), a digital discrete sample of a continuous analog signal * Sample (material), a specimen or small quantity of s ...
''x'' = (''x''1, ''x''2, ..., ''xn''), is : L(\alpha, x_\mathrm) = \prod_^n \alpha \frac = \alpha^n x_\mathrm^ \prod_^n \frac . Therefore, the logarithmic likelihood function is : \ell(\alpha, x_\mathrm) = n \ln \alpha + n\alpha \ln x_\mathrm - (\alpha + 1) \sum_ ^n \ln x_i. It can be seen that \ell(\alpha, x_\mathrm) is monotonically increasing with ''x''m, that is, the greater the value of ''x''m, the greater the value of the likelihood function. Hence, since ''x'' ≥ ''x''m, we conclude that : \widehat x_\mathrm = \min_i . To find the estimator for ''α'', we compute the corresponding partial derivative and determine where it is zero: : \frac = \frac + n \ln x_\mathrm - \sum _^n \ln x_i = 0. Thus the maximum likelihood estimator for ''α'' is: : \widehat \alpha = \frac. The expected statistical error is: : \sigma = \frac . Malik (1970) gives the exact joint distribution of (\hat_\mathrm,\hat\alpha). In particular, \hat_\mathrm and \hat\alpha are independent and \hat_\mathrm is Pareto with scale parameter ''x''m and shape parameter ''nα'', whereas \hat\alpha has an inverse-gamma distribution with shape and scale parameters ''n'' − 1 and ''nα'', respectively.


Occurrence and applications


General

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.Pareto, Vilfredo, ''Cours d'Économie Politique: Nouvelle édition par G.-H. Bousquet et G. Busino'', Librairie Droz, Geneva, 1964, pp. 299–345
Original book archived
/ref> This idea is sometimes expressed more simply as the
Pareto principle The Pareto principle states that for many outcomes, roughly 80% of consequences come from 20% of causes (the "vital few"). Other names for this principle are the 80/20 rule, the law of the vital few, or the principle of factor sparsity. Manage ...
or the "80-20 rule" which says that 20% of the population controls 80% of the 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. 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 Net worth is the value of all the non-financial and financial assets owned by an individual or institution minus the value of all its outstanding liabilities. Since financial assets minus outstanding liabilities equal net financial assets, net ...
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: * The sizes of human settlements (few cities, many hamlets/villages) * File size distribution of Internet traffic which uses the TCP protocol (many smaller files, few larger ones) * Hard disk drive error rates * Clusters of Bose–Einstein condensate near
absolute zero Absolute zero is the lowest limit of the thermodynamic temperature scale, a state at which the enthalpy and entropy of a cooled ideal gas reach their minimum value, taken as zero kelvin. The fundamental particles of nature have minimum vibration ...
* The values of oil reserves in oil fields (a few large fields, many small fields) * The length distribution in jobs assigned to supercomputers (a few large ones, many small ones) * The standardized price returns on individual stocks * Sizes of sand particles * The size of meteorites * Severity of large casualty losses for certain lines of business such as general liability, commercial auto, and workers compensation. * Amount of time a user on
Steam Steam is a substance containing water in the gas phase, and sometimes also an aerosol of liquid water droplets, or air. This may occur due to evaporation or due to boiling, where heat is applied until water reaches the enthalpy of vaporization ...
will spend playing different games. (Some games get played a lot, but most get played almost never.

* In hydrology the Pareto distribution is applied to extreme events such as annually maximum one-day rainfalls and river discharges. The blue picture illustrates an example of fitting the Pareto distribution to ranked annually maximum one-day rainfalls showing also the 90%
confidence belt In frequentist statistics, a confidence interval (CI) is a range of estimates for an unknown parameter. A confidence interval is computed at a designated ''confidence level''; the 95% confidence level is most common, but other levels, such as 9 ...
based on the
binomial distribution In probability theory and statistics, the binomial distribution with parameters ''n'' and ''p'' is the discrete probability distribution of the number of successes in a sequence of ''n'' independent experiments, each asking a yes–no quest ...
. 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

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 values (incomes) are binned into N ranks so that the number of people in each bin follows a 1/rank pattern. The distribution is normalized by defining x_m so that \alpha x_\mathrm^\alpha = \frac where H(N,\alpha-1) is the
generalized harmonic number In mathematics, the -th harmonic number is the sum of the reciprocals of the first natural numbers: H_n= 1+\frac+\frac+\cdots+\frac =\sum_^n \frac. Starting from , the sequence of harmonic numbers begins: 1, \frac, \frac, \frac, \frac, \dot ...
. This makes Zipf's probability density function derivable from Pareto's. : f(x) = \frac = \frac where s = \alpha-1 and x 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) probability of ranking x.


Relation to the "Pareto principle"

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 \alpha = \log_4 5 = \cfrac \approx 1.161. This result can be derived from the
Lorenz curve In economics, the Lorenz curve is a graphical representation of the distribution of income or of wealth. It was developed by Max O. Lorenz in 1905 for representing Economic inequality, inequality of the wealth distribution. The curve is a graph o ...
formula given below. Moreover, the following have been shown 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 100''p'' % of all people receive 100(1 − ''p'')% of all income, and similarly for every real (not necessarily integer) ''n'' > 0, 100''pn'' % of all people receive 100(1 − ''p'')''n'' percentage of all income. ''α'' and ''p'' are related by :: 1-\frac=\frac=\frac 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

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 \alpha=1. 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

The
Lorenz curve In economics, the Lorenz curve is a graphical representation of the distribution of income or of wealth. It was developed by Max O. Lorenz in 1905 for representing Economic inequality, inequality of the wealth distribution. The curve is a graph o ...
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)=\frac =\frac where ''x''(''F'') is the inverse of the CDF. For the Pareto distribution, :x(F)=\frac and the Lorenz curve is calculated to be :L(F) = 1-(1-F)^, For 0<\alpha\le 1 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 Oxfam is a British-founded confederation of 21 independent charitable organizations focusing on the alleviation of global poverty, founded in 1942 and led by Oxfam International. History Founded at 17 Broad Street, Oxford, as the Oxford Co ...
(2016) the richest 62 people have as much wealth as the poorest half of the world's population. We can estimate the Pareto index that would apply to this situation. Letting ε equal 62/(7\times 10^9) we have: :L(1/2)=1-L(1-\varepsilon) or :1-(1/2)^=\varepsilon^ 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. The Gini coefficient is a measure of the deviation of the Lorenz curve from the equidistribution line which is a line connecting , 0and , 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 \alpha\ge 1) to be :G = 1-2 \left (\int_0^1L(F) \, dF \right ) = \frac (see Aaberge 2005).


Random variate generation

Random samples can be generated using inverse transform sampling. Given a random variate ''U'' drawn from the
uniform distribution Uniform distribution may refer to: * Continuous uniform distribution * Discrete uniform distribution * Uniform distribution (ecology) * Equidistributed sequence In mathematics, a sequence (''s''1, ''s''2, ''s''3, ...) of real numbers is said to be ...
on the unit interval (0, 1], the variate ''T'' given by :T=\frac is Pareto-distributed. If ''U'' is uniformly distributed on , 1), it can be exchanged with (1 − ''U'').


See also

* Bradford's law
* Gutenberg–Richter law">Bradford's law">, 1), it can be exchanged with (1 − ''U'').


See also

* Bradford's law * Gutenberg–Richter law * Matthew effect * Pareto analysis * Pareto efficiency * Pareto interpolation * Power law#Power-law probability distributions, Power law probability distributions * Sturgeon's law * Traffic generation model * Zipf's law * Heavy-tailed distribution


References


Notes

* * * *


External links

* * * *
syntraf1.c
is a
C program C (''pronounced like the letter c'') is a general-purpose computer programming language. It was created in the 1970s by Dennis Ritchie, and remains very widely used and influential. By design, C's features cleanly reflect the capabilities of ...
to generate synthetic packet traffic with bounded Pareto burst size and exponential interburst time. {{DEFAULTSORT:Pareto Distribution Actuarial science Continuous distributions Power laws Probability distributions with non-finite variance Exponential family distributions Vilfredo Pareto