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Cauchy distribution

The Cauchy distribution, named after Augustin Cauchy, is a continuous probability distribution. It is also known, especially among physicists, as the Lorentz distribution (after Hendrik Lorentz), Cauchy–Lorentz distribution, Lorentz(ian) function, or Breit–Wigner distribution. The Cauchy distribution is the distribution of the x-intercept of a ray issuing from with a uniformly distributed angle. It is also the distribution of the ratio of two independent normally distributed random variables with mean zero.

Cauchy
Probability density function

The purple curve is the standard Cauchy distribution
Cumulative distribution function
Parameters location (real)
scale (real)
Support
PDF
CDF
Quantile
Mean undefined
Median
Mode
Variance undefined
MAD
Skewness undefined
Ex. kurtosis undefined
Entropy
MGF does not exist
CF
Fisher information

The Cauchy distribution is often used in statistics as the canonical example of a "pathological" distribution since both its expected value and its variance are undefined (but see § Moments below). The Cauchy distribution does not have finite moments of order greater than or equal to one; only fractional absolute moments exist.[1] The Cauchy distribution has no moment generating function.

In mathematics, it is closely related to the Poisson kernel, which is the fundamental solution for the Laplace equation in the upper half-plane.

It is one of the few distributions that is stable and has a probability density function that can be expressed analytically, the others being the normal distribution and the Lévy distribution.

History Edit

 
Estimating the mean and standard deviation through samples from a Cauchy distribution (bottom) does not converge with more samples, as in the normal distribution (top). There can be arbitrarily large jumps in the estimates, as seen in the graphs on the bottom. (Click to expand)

A function with the form of the density function of the Cauchy distribution was studied geometrically by Fermat in 1659, and later was known as the witch of Agnesi, after Agnesi included it as an example in her 1748 calculus textbook. Despite its name, the first explicit analysis of the properties of the Cauchy distribution was published by the French mathematician Poisson in 1824, with Cauchy only becoming associated with it during an academic controversy in 1853.[2] Poisson noted that if the mean of observations following such a distribution were taken, the mean error[further explanation needed] did not converge to any finite number. As such, Laplace's use of the central limit theorem with such distribution was inappropriate, as it assumed a finite mean and variance. Despite this, Poisson did not regard the issue as important, in contrast to Bienaymé, who was to engage Cauchy in a long dispute over the matter.

Constructions Edit

Like any important probability distribution, or any important concept in mathematics, there are multiple ways to construct the Cauchy distribution family. Here are the most important constructions.

Rotational symmetry Edit

If you stand in front of a line and kick a ball with a direction uniformly at random towards the line, then the distribution of the point where the ball hits the line is a Cauchy distribution.

More formally, consider a point at   in the x-y plane, and select a line passing the point, with its direction chosen uniformly at random. The intersection of the line with the x-axis is the Cauchy distribution with location   and scale  .

This definition gives a simple way to sample from the standard Cauchy distribution. Let   be a sample from a uniform distribution from  , then we can generate a sample,   from the standard Cauchy distribution using

 

When   and   are two independent normally distributed random variables with expected value 0 and variance 1, then the ratio   has the standard Cauchy distribution.

More generally, if   is a rotationally symmetric distribution on the plane, then the ratio   has the standard Cauchy distribution.

Probability density function (PDF) Edit

The Cauchy distribution is the probability distribution with the following probability density function (PDF)[1][3]

 

where   is the location parameter, specifying the location of the peak of the distribution, and   is the scale parameter which specifies the half-width at half-maximum (HWHM), alternatively   is full width at half maximum (FWHM).   is also equal to half the interquartile range and is sometimes called the probable error. Augustin-Louis Cauchy exploited such a density function in 1827 with an infinitesimal scale parameter, defining what would now be called a Dirac delta function.

Properties of PDF Edit

The maximum value or amplitude of the Cauchy PDF is  , located at  .

It is sometimes convenient to express the PDF in terms of the complex parameter  

 

The special case when   and   is called the standard Cauchy distribution with the probability density function[4][5]

 

In physics, a three-parameter Lorentzian function is often used:

 

where   is the height of the peak. The three-parameter Lorentzian function indicated is not, in general, a probability density function, since it does not integrate to 1, except in the special case where  

Cumulative distribution function (CDF) Edit

The Cauchy distribution is the probability distribution with the following cumulative distribution function (CDF):

 

and the quantile function (inverse cdf) of the Cauchy distribution is

 

It follows that the first and third quartiles are  , and hence the interquartile range is  .

For the standard distribution, the cumulative distribution function simplifies to arctangent function  :

 

Other constructions Edit

The standard Cauchy distribution is the Student's t-distribution with one degree of freedom, and so it may be constructed by any method that constructs the Student's t-distribution.


If   is a   positive-semidefinite covariance matrix with strictly positive diagonal entries, then for independent and identically distributed   and any random  -vector   independent of   and   such that   and   (defining a categorical distribution) it holds that

 [6]

Properties Edit

The Cauchy distribution is an example of a distribution which has no mean, variance or higher moments defined. Its mode and median are well defined and are both equal to  .

The Cauchy distribution is an infinitely divisible probability distribution. It is also a strictly stable distribution.[7]

Like all stable distributions, the location-scale family to which the Cauchy distribution belongs is closed under linear transformations with real coefficients. In addition, the Cauchy distribution is closed under linear fractional transformations with real coefficients.[8] In this connection, see also McCullagh's parametrization of the Cauchy distributions.

Sum of Cauchy distributions Edit

If   are IID samples from the standard Cauchy distribution, then their sample mean   is also standard Cauchy distributed. In particular, the average does not converge to the mean, and so the standard Cauchy distribution does not follow the law of large numbers.

This can be proved by repeated integration with the PDF, or more conveniently, by using the characteristic function of standard Cauchy distribution (see below):

 
With this, we have  , and so   has a standard Cauchy distribution.

More generally, if   are independent and Cauchy distributed with location parameters   and scales  , and   are real numbers, then   is Cauchy distributed with location   and scale . We see that there is no law of large numbers for any weighted sum of independent Cauchy distributions.

This shows that the condition of finite variance in the central limit theorem cannot be dropped. It is also an example of a more generalized version of the central limit theorem that is characteristic of all stable distributions, of which the Cauchy distribution is a special case.

Central limit theorem Edit

If   are IID samples with PDF   such that   is finite, but nonzero, then   converges in distribution to a Cauchy distribution with scale  .[9]

Characteristic function Edit

Let   denote a Cauchy distributed random variable. The characteristic function of the Cauchy distribution is given by

 

which is just the Fourier transform of the probability density. The original probability density may be expressed in terms of the characteristic function, essentially by using the inverse Fourier transform:

 

The nth moment of a distribution is the nth derivative of the characteristic function evaluated at  . Observe that the characteristic function is not differentiable at the origin: this corresponds to the fact that the Cauchy distribution does not have well-defined moments higher than the zeroth moment.

Kullback-Leibler divergence Edit

The Kullback–Leibler divergence between two Cauchy distributions has the following symmetric closed-form formula:[10]

 

Any f-divergence between two Cauchy distributions is symmetric and can be expressed as a function of the chi-squared divergence.[11] Closed-form expression for the total variation, Jensen–Shannon divergence, Hellinger distance, etc are available.

Comparison with the normal distribution Edit

Compared to the normal distribution, the Cauchy density function has a higher peak and lower tails. An example is shown in the two figures added here

 
Observed histogram and best fitting Cauchy density function.[12]
 
Observed histogram and best fitting normal density function.[12]

The figure to the left shows the Cauchy probability density function fitted to an observed histogram. The peak of the function is higher than the peak of the histogram while the tails are lower than those of the histogram.
The figure to the right shows the normal probability density function fitted to the same observed histogram. The peak of the function is lower than the peak of the histogram.
This illustrates the above statement.


Entropy Edit

The entropy of the Cauchy distribution is given by:

 

The derivative of the quantile function, the quantile density function, for the Cauchy distribution is:

 

The differential entropy of a distribution can be defined in terms of its quantile density,[13] specifically:

 

The Cauchy distribution is the maximum entropy probability distribution for a random variate   for which

 

or, alternatively, for a random variate   for which

 

In its standard form, it is the maximum entropy probability distribution for a random variate   for which[14]

 

Moments Edit

The Cauchy distribution is usually used as an illustrative counterexample in elementary probability courses, as a distribution with no well-defined (or "indefinite") moments.

Sample moments Edit

If we take IID samples   from the standard Cauchy distribution, then the sequence of their sample mean is  , which also has the standard Cauchy distribution. Consequently, no matter how many terms we take, the sample average does not converge.

Similarly, the sample variance   also does not converge.

 
A typical trajectory of sample means looks like long periods of slow convergence to zero, punctuated by large jumps away from zero, but never getting too far away. A typical trajectory of sample variances looks similar, but the jumps accumulate faster than the decay, diverging to infinity.

A typical trajectory of   looks like long periods of slow convergence to zero, punctuated by large jumps away from zero, but never getting too far away. A typical trajectory of   looks similar, but the jumps accumulate faster than the decay, diverging to infinity. These two kinds of trajectories are plotted in the figure.

Moments of sample lower than order 1 would converge to zero. Moments of sample higher than order 2 would diverge to infinity even faster than sample variance.

Mean Edit

If a probability distribution has a density function  , then the mean, if it exists, is given by

 

 

 

 

 

(1)

We may evaluate this two-sided improper integral by computing the sum of two one-sided improper integrals. That is,

 

 

 

 

 

(2)

for an arbitrary real number  .

For the integral to exist (even as an infinite value), at least one of the terms in this sum should be finite, or both should be infinite and have the same sign. But in the case of the Cauchy distribution, both the terms in this sum (2) are infinite and have opposite sign. Hence (1) is undefined, and thus so is the mean.[15]

Note that the Cauchy principal value of the mean of the Cauchy distribution is

 
which is zero. On the other hand, the related integral
 
is not zero, as can be seen by computing the integral. This again shows that the mean (1) cannot exist.

Various results in probability theory about expected values, such as the strong law of large numbers, fail to hold for the Cauchy distribution.[15]

Smaller moments Edit

The absolute moments for   are defined. For   we have

 

Higher moments Edit

The Cauchy distribution does not have finite moments of any order. Some of the higher raw moments do exist and have a value of infinity, for example, the raw second moment:

 

By re-arranging the formula, one can see that the second moment is essentially the infinite integral of a constant (here 1). Higher even-powered raw moments will also evaluate to infinity. Odd-powered raw moments, however, are undefined, which is distinctly different from existing with the value of infinity. The odd-powered raw moments are undefined because their values are essentially equivalent to   since the two halves of the integral both diverge and have opposite signs. The first raw moment is the mean, which, being odd, does not exist. (See also the discussion above about this.) This in turn means that all of the central moments and standardized moments are undefined since they are all based on the mean. The variance—which is the second central moment—is likewise non-existent (despite the fact that the raw second moment exists with the value infinity).

The results for higher moments follow from Hölder's inequality, which implies that higher moments (or halves of moments) diverge if lower ones do.

Moments of truncated distributions Edit

Consider the truncated distribution defined by restricting the standard Cauchy distribution to the interval [−10100, 10100]. Such a truncated distribution has all moments (and the central limit theorem applies for i.i.d. observations from it); yet for almost all practical purposes it behaves like a Cauchy distribution.[16]

Estimation of parameters Edit

Because the parameters of the Cauchy distribution do not correspond to a mean and variance, attempting to estimate the parameters of the Cauchy distribution by using a sample mean and a sample variance will not succeed.[17] For example, if an i.i.d. sample of size n is taken from a Cauchy distribution, one may calculate the sample mean as:

 

Although the sample values   will be concentrated about the central value  , the sample mean will become increasingly variable as more observations are taken, because of the increased probability of encountering sample points with a large absolute value. In fact, the distribution of the sample mean will be equal to the distribution of the observations themselves; i.e., the sample mean of a large sample is no better (or worse) an estimator of   than any single observation from the sample. Similarly, calculating the sample variance will result in values that grow larger as more observations are taken.

Therefore, more robust means of estimating the central value   and the scaling parameter   are needed. One simple method is to take the median value of the sample as an estimator of   and half the sample interquartile range as an estimator of  . Other, more precise and robust methods have been developed [18][19] For example, the truncated mean of the middle 24% of the sample order statistics produces an estimate for   that is more efficient than using either the sample median or the full sample mean.[20][21] However, because of the fat tails of the Cauchy distribution, the efficiency of the estimator decreases if more than 24% of the sample is used.[20][21]

Maximum likelihood can also be used to estimate the parameters   and  . However, this tends to be complicated by the fact that this requires finding the roots of a high degree polynomial, and there can be multiple roots that represent local maxima.[22] Also, while the maximum likelihood estimator is asymptotically efficient, it is relatively inefficient for small samples.[23][24] The log-likelihood function for the Cauchy distribution for sample size   is:

 

Maximizing the log likelihood function with respect to   and   by taking the first derivative produces the following system of equations:

 
 

Note that

 

is a monotone function in   and that the solution   must satisfy

 

Solving just for   requires solving a polynomial of degree  ,[22] and solving just for   requires solving a polynomial of degree  . Therefore, whether solving for one parameter or for both parameters simultaneously, a numerical solution on a computer is typically required. The benefit of maximum likelihood estimation is asymptotic efficiency; estimating   using the sample median is only about 81% as asymptotically efficient as estimating   by maximum likelihood.[21][25] The truncated sample mean using the middle 24% order statistics is about 88% as asymptotically efficient an estimator of   as the maximum likelihood estimate.[21] When Newton's method is used to find the solution for the maximum likelihood estimate, the middle 24% order statistics can be used as an initial solution for  .

The shape can be estimated using the median of absolute values, since for location 0 Cauchy variables  , the   the shape parameter.

Multivariate Cauchy distribution Edit

A random vector   is said to have the multivariate Cauchy distribution if every linear combination of its components   has a Cauchy distribution. That is, for any constant vector  , the random variable   should have a univariate Cauchy distribution.[26] The characteristic function of a multivariate Cauchy distribution is given by:

 

where   and   are real functions with   a homogeneous function of degree one and   a positive homogeneous function of degree one.[26] More formally:[26]

 
 

for all  .

An example of a bivariate Cauchy distribution can be given by:[27]

 

Note that in this example, even though the covariance between   and   is 0,   and   are not statistically independent.[27]

We also can write this formula for complex variable. Then the probability density function of complex cauchy is :

 

Like how the standard Cauchy distribution is the Student t-distribution with one degree of freedom, the multidimensional Cauchy density is the multivariate Student distribution with one degree of freedom. The density of a   dimension Student distribution with one degree of freedom is:

 

The properties of multidimensional Cauchy distribution are then special cases of the multivariate Student distribution.

Transformation properties Edit

  • If   then  [28]
  • If   and   are independent, then   and  
  • If   then  
  • McCullagh's parametrization of the Cauchy distributions:[29] Expressing a Cauchy distribution in terms of one complex parameter  , define   to mean  . If   then:
     
    where  ,  ,   and   are real numbers.
  • Using the same convention as above, if   then:[29]
     
    where   is the circular Cauchy distribution.

Lévy measure Edit

The Cauchy distribution is the stable distribution of index 1. The Lévy–Khintchine representation of such a stable distribution of parameter   is given, for   by:

 

where

 

and   can be expressed explicitly.[30] In the case   of the Cauchy distribution, one has  .

This last representation is a consequence of the formula

 

Related distributions Edit

  •   Student's t distribution
  •   non-standardized Student's t distribution
  • If   independent, then  
  • If   then  
  • If   then  
  • If   then  
  • The Cauchy distribution is a limiting case of a Pearson distribution of type 4[citation needed]
  • The Cauchy distribution is a special case of a Pearson distribution of type 7.[1]
  • The Cauchy distribution is a stable distribution: if  , then  .
  • The Cauchy distribution is a singular limit of a hyperbolic distribution[citation needed]
  • The wrapped Cauchy distribution, taking values on a circle, is derived from the Cauchy distribution by wrapping it around the circle.
  • If  ,  , then  . For half-Cauchy distributions, the relation holds by setting  .

Relativistic Breit–Wigner distribution Edit

In nuclear and particle physics, the energy profile of a resonance is described by the relativistic Breit–Wigner distribution, while the Cauchy distribution is the (non-relativistic) Breit–Wigner distribution.[citation needed]

Occurrence and applications Edit

  • In spectroscopy, the Cauchy distribution describes the shape of spectral lines which are subject to homogeneous broadening in which all atoms interact in the same way with the frequency range contained in the line shape. Many mechanisms cause homogeneous broadening, most notably collision broadening.[31] Lifetime or natural broadening also gives rise to a line shape described by the Cauchy distribution.
  • Applications of the Cauchy distribution or its transformation can be found in fields working with exponential growth. A 1958 paper by White [32] derived the test statistic for estimators of   for the equation   and where the maximum likelihood estimator is found using ordinary least squares showed the sampling distribution of the statistic is the Cauchy distribution.
 
Fitted cumulative Cauchy distribution to maximum one-day rainfalls using CumFreq, see also distribution fitting[12]
  • The Cauchy distribution is often the distribution of observations for objects that are spinning. The classic reference for this is called the Gull's lighthouse problem[33] and as in the above section as the Breit–Wigner distribution in particle physics.
  • In hydrology the Cauchy distribution is applied to extreme events such as annual maximum one-day rainfalls and river discharges. The blue picture illustrates an example of fitting the Cauchy distribution to ranked monthly 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.
  • The expression for imaginary part of complex electrical permittivity according to Lorentz model is a model VAR (value at risk) producing a much larger probability of extreme risk than Gaussian Distribution.[34]

See also Edit

References Edit

  1. ^ a b c N. L. Johnson; S. Kotz; N. Balakrishnan (1994). Continuous Univariate Distributions, Volume 1. New York: Wiley., Chapter 16.
  2. ^ Cauchy and the Witch of Agnesi in Statistics on the Table, S M Stigler Harvard 1999 Chapter 18
  3. ^ Feller, William (1971). An Introduction to Probability Theory and Its Applications, Volume II (2 ed.). New York: John Wiley & Sons Inc. pp. 704. ISBN 978-0-471-25709-7.
  4. ^ Riley, Ken F.; Hobson, Michael P.; Bence, Stephen J. (2006). Mathematical Methods for Physics and Engineering (3 ed.). Cambridge, UK: Cambridge University Press. pp. 1333. ISBN 978-0-511-16842-0.
  5. ^ Balakrishnan, N.; Nevrozov, V. B. (2003). A Primer on Statistical Distributions (1 ed.). Hoboken, New Jersey: John Wiley & Sons Inc. pp. 305. ISBN 0-471-42798-5.
  6. ^ Pillai N.; Meng, X.L. (2016). "An unexpected encounter with Cauchy and Lévy". The Annals of Statistics. 44 (5): 2089–2097. arXiv:1505.01957. doi:10.1214/15-AOS1407. S2CID 31582370.
  7. ^ Campbell B. Read; N. Balakrishnan; Brani Vidakovic; Samuel Kotz (2006). Encyclopedia of Statistical Sciences (2nd ed.). John Wiley & Sons. p. 778. ISBN 978-0-471-15044-2.
  8. ^ Knight, Franck B. (1976). "A characterization of the Cauchy type". Proceedings of the American Mathematical Society. 55 (1): 130–135. doi:10.2307/2041858. JSTOR 2041858.
  9. ^ "Updates to the Cauchy Central Limit". Quantum Calculus. 13 November 2022. Retrieved 21 June 2023.
  10. ^ Frederic, Chyzak; Nielsen, Frank (2019). "A closed-form formula for the Kullback-Leibler divergence between Cauchy distributions". arXiv:1905.10965 [cs.IT].
  11. ^ Nielsen, Frank; Okamura, Kazuki (2023). "On f-Divergences Between Cauchy Distributions". IEEE Transactions on Information Theory. 69 (5): 3150–3171. arXiv:2101.12459. doi:10.1109/TIT.2022.3231645. S2CID 231728407.
  12. ^ a b c "CumFreq, free software for cumulative frequency analysis and probability distribution fitting". from the original on 2018-02-21.
  13. ^ Vasicek, Oldrich (1976). "A Test for Normality Based on Sample Entropy". Journal of the Royal Statistical Society, Series B. 38 (1): 54–59.
  14. ^ Park, Sung Y.; Bera, Anil K. (2009). (PDF). Journal of Econometrics. Elsevier. 150 (2): 219–230. doi:10.1016/j.jeconom.2008.12.014. Archived from the original (PDF) on 2011-09-30. Retrieved 2011-06-02.
  15. ^ a b Kyle Siegrist. "Cauchy Distribution". Random. from the original on 9 July 2021. Retrieved 5 July 2021.
  16. ^ Hampel, Frank (1998), "Is statistics too difficult?" (PDF), Canadian Journal of Statistics, 26 (3): 497–513, doi:10.2307/3315772, hdl:20.500.11850/145503, JSTOR 3315772, S2CID 53117661, from the original on 2022-01-25, retrieved 2019-09-25.
  17. ^ "Illustration of instability of sample means". from the original on 2017-03-24. Retrieved 2014-11-22.
  18. ^ Cane, Gwenda J. (1974). "Linear Estimation of Parameters of the Cauchy Distribution Based on Sample Quantiles". Journal of the American Statistical Association. 69 (345): 243–245. doi:10.1080/01621459.1974.10480163. JSTOR 2285535.
  19. ^ Zhang, Jin (2010). "A Highly Efficient L-estimator for the Location Parameter of the Cauchy Distribution". Computational Statistics. 25 (1): 97–105. doi:10.1007/s00180-009-0163-y. S2CID 123586208.
  20. ^ a b Rothenberg, Thomas J.; Fisher, Franklin, M.; Tilanus, C.B. (1964). "A note on estimation from a Cauchy sample". Journal of the American Statistical Association. 59 (306): 460–463. doi:10.1080/01621459.1964.10482170.{{cite journal}}: CS1 maint: multiple names: authors list (link)
  21. ^ a b c d Bloch, Daniel (1966). "A note on the estimation of the location parameters of the Cauchy distribution". Journal of the American Statistical Association. 61 (316): 852–855. doi:10.1080/01621459.1966.10480912. JSTOR 2282794.
  22. ^ a b Ferguson, Thomas S. (1978). "Maximum Likelihood Estimates of the Parameters of the Cauchy Distribution for Samples of Size 3 and 4". Journal of the American Statistical Association. 73 (361): 211–213. doi:10.1080/01621459.1978.10480031. JSTOR 2286549.
  23. ^ Cohen Freue, Gabriella V. (2007). (PDF). Journal of Statistical Planning and Inference. 137 (6): 1901. doi:10.1016/j.jspi.2006.05.002. Archived from the original (PDF) on 2011-08-16.
  24. ^ Wilcox, Rand (2012). Introduction to Robust Estimation & Hypothesis Testing. Elsevier.
  25. ^ Barnett, V. D. (1966). "Order Statistics Estimators of the Location of the Cauchy Distribution". Journal of the American Statistical Association. 61 (316): 1205–1218. doi:10.1080/01621459.1966.10482205. JSTOR 2283210.
  26. ^ a b c Ferguson, Thomas S. (1962). "A Representation of the Symmetric Bivariate Cauchy Distribution". The Annals of Mathematical Statistics. 33 (4): 1256–1266. doi:10.1214/aoms/1177704357. JSTOR 2237984. Retrieved 2017-01-07.
  27. ^ a b Molenberghs, Geert; Lesaffre, Emmanuel (1997). (PDF). Statistica Sinica. 7: 713–738. Archived from the original (PDF) on 2009-09-14.
  28. ^ Lemons, Don S. (2002), "An Introduction to Stochastic Processes in Physics", American Journal of Physics, The Johns Hopkins University Press, 71 (2): 35, Bibcode:2003AmJPh..71..191L, doi:10.1119/1.1526134, ISBN 0-8018-6866-1
  29. ^ a b McCullagh, P., "Conditional inference and Cauchy models", Biometrika, volume 79 (1992), pages 247–259. PDF 2010-06-10 at the Wayback Machine from McCullagh's homepage.
  30. ^ Kyprianou, Andreas (2009). Lévy processes and continuous-state branching processes:part I (PDF). p. 11. (PDF) from the original on 2016-03-03. Retrieved 2016-05-04.
  31. ^ E. Hecht (1987). Optics (2nd ed.). Addison-Wesley. p. 603.
  32. ^ White, J.S. (December 1958). "The Limiting Distribution of the Serial Correlation Coefficient in the Explosive Case". The Annals of Mathematical Statistics. 29 (4): 1188–1197. doi:10.1214/aoms/1177706450.
  33. ^ Gull, S.F. (1988) Bayesian Inductive Inference and Maximum Entropy. Kluwer Academic Publishers, Berlin. https://doi.org/10.1007/978-94-009-3049-0_4 2022-01-25 at the Wayback Machine
  34. ^ Tong Liu (2012), An intermediate distribution between Gaussian and Cauchy distributions. https://arxiv.org/pdf/1208.5109.pdf 2020-06-24 at the Wayback Machine

External links Edit

cauchy, distribution, lorentz, distribution, redirects, here, confused, with, lorenz, curve, lorenz, system, named, after, augustin, cauchy, continuous, probability, distribution, also, known, especially, among, physicists, lorentz, distribution, after, hendri. Lorentz distribution redirects here Not to be confused with Lorenz curve or Lorenz system The Cauchy distribution named after Augustin Cauchy is a continuous probability distribution It is also known especially among physicists as the Lorentz distribution after Hendrik Lorentz Cauchy Lorentz distribution Lorentz ian function or Breit Wigner distribution The Cauchy distribution f x x 0 g displaystyle f x x 0 gamma is the distribution of the x intercept of a ray issuing from x 0 g displaystyle x 0 gamma with a uniformly distributed angle It is also the distribution of the ratio of two independent normally distributed random variables with mean zero CauchyProbability density function The purple curve is the standard Cauchy distributionCumulative distribution functionParametersx 0 displaystyle x 0 location real g gt 0 displaystyle gamma gt 0 scale real Supportx displaystyle displaystyle x in infty infty PDF1 p g 1 x x 0 g 2 displaystyle frac 1 pi gamma left 1 left frac x x 0 gamma right 2 right CDF1 p arctan x x 0 g 1 2 displaystyle frac 1 pi arctan left frac x x 0 gamma right frac 1 2 Quantilex 0 g tan p p 1 2 displaystyle x 0 gamma tan pi p tfrac 1 2 MeanundefinedMedianx 0 displaystyle x 0 Modex 0 displaystyle x 0 VarianceundefinedMADg displaystyle gamma SkewnessundefinedEx kurtosisundefinedEntropylog 4 p g displaystyle log 4 pi gamma MGFdoes not existCFexp x 0 i t g t displaystyle displaystyle exp x 0 i t gamma t Fisher information1 2 g 2 displaystyle frac 1 2 gamma 2 The Cauchy distribution is often used in statistics as the canonical example of a pathological distribution since both its expected value and its variance are undefined but see Moments below The Cauchy distribution does not have finite moments of order greater than or equal to one only fractional absolute moments exist 1 The Cauchy distribution has no moment generating function In mathematics it is closely related to the Poisson kernel which is the fundamental solution for the Laplace equation in the upper half plane It is one of the few distributions that is stable and has a probability density function that can be expressed analytically the others being the normal distribution and the Levy distribution Contents 1 History 2 Constructions 2 1 Rotational symmetry 2 2 Probability density function PDF 2 2 1 Properties of PDF 2 3 Cumulative distribution function CDF 2 4 Other constructions 3 Properties 3 1 Sum of Cauchy distributions 3 2 Central limit theorem 3 3 Characteristic function 3 4 Kullback Leibler divergence 3 5 Comparison with the normal distribution 3 6 Entropy 4 Moments 4 1 Sample moments 4 2 Mean 4 3 Smaller moments 4 4 Higher moments 4 5 Moments of truncated distributions 5 Estimation of parameters 6 Multivariate Cauchy distribution 7 Transformation properties 8 Levy measure 9 Related distributions 10 Relativistic Breit Wigner distribution 11 Occurrence and applications 12 See also 13 References 14 External linksHistory Edit Estimating the mean and standard deviation through samples from a Cauchy distribution bottom does not converge with more samples as in the normal distribution top There can be arbitrarily large jumps in the estimates as seen in the graphs on the bottom Click to expand A function with the form of the density function of the Cauchy distribution was studied geometrically by Fermat in 1659 and later was known as the witch of Agnesi after Agnesi included it as an example in her 1748 calculus textbook Despite its name the first explicit analysis of the properties of the Cauchy distribution was published by the French mathematician Poisson in 1824 with Cauchy only becoming associated with it during an academic controversy in 1853 2 Poisson noted that if the mean of observations following such a distribution were taken the mean error further explanation needed did not converge to any finite number As such Laplace s use of the central limit theorem with such distribution was inappropriate as it assumed a finite mean and variance Despite this Poisson did not regard the issue as important in contrast to Bienayme who was to engage Cauchy in a long dispute over the matter Constructions EditLike any important probability distribution or any important concept in mathematics there are multiple ways to construct the Cauchy distribution family Here are the most important constructions Rotational symmetry Edit If you stand in front of a line and kick a ball with a direction uniformly at random towards the line then the distribution of the point where the ball hits the line is a Cauchy distribution More formally consider a point at x 0 g displaystyle x 0 gamma in the x y plane and select a line passing the point with its direction chosen uniformly at random The intersection of the line with the x axis is the Cauchy distribution with location x 0 displaystyle x 0 and scale g displaystyle gamma This definition gives a simple way to sample from the standard Cauchy distribution Let u displaystyle u be a sample from a uniform distribution from 0 1 displaystyle 0 1 then we can generate a sample x displaystyle x from the standard Cauchy distribution using x tan p u 1 2 displaystyle x tan left pi u frac 1 2 right When U displaystyle U and V displaystyle V are two independent normally distributed random variables with expected value 0 and variance 1 then the ratio U V displaystyle U V has the standard Cauchy distribution More generally if U V displaystyle U V is a rotationally symmetric distribution on the plane then the ratio U V displaystyle U V has the standard Cauchy distribution Probability density function PDF Edit The Cauchy distribution is the probability distribution with the following probability density function PDF 1 3 f x x 0 g 1 p g 1 x x 0 g 2 1 p g x x 0 2 g 2 displaystyle f x x 0 gamma frac 1 pi gamma left 1 left frac x x 0 gamma right 2 right 1 over pi left gamma over x x 0 2 gamma 2 right where x 0 displaystyle x 0 is the location parameter specifying the location of the peak of the distribution and g displaystyle gamma is the scale parameter which specifies the half width at half maximum HWHM alternatively 2 g displaystyle 2 gamma is full width at half maximum FWHM g displaystyle gamma is also equal to half the interquartile range and is sometimes called the probable error Augustin Louis Cauchy exploited such a density function in 1827 with an infinitesimal scale parameter defining what would now be called a Dirac delta function Properties of PDF Edit The maximum value or amplitude of the Cauchy PDF is 1 p g displaystyle frac 1 pi gamma located at x x 0 displaystyle x x 0 It is sometimes convenient to express the PDF in terms of the complex parameter ps x 0 i g displaystyle psi x 0 i gamma f x ps 1 p Im 1 x ps 1 p Re i x ps displaystyle f x psi frac 1 pi textrm Im left frac 1 x psi right frac 1 pi textrm Re left frac i x psi right The special case when x 0 0 displaystyle x 0 0 and g 1 displaystyle gamma 1 is called the standard Cauchy distribution with the probability density function 4 5 f x 0 1 1 p 1 x 2 displaystyle f x 0 1 frac 1 pi 1 x 2 In physics a three parameter Lorentzian function is often used f x x 0 g I I 1 x x 0 g 2 I g 2 x x 0 2 g 2 displaystyle f x x 0 gamma I frac I left 1 left frac x x 0 gamma right 2 right I left gamma 2 over x x 0 2 gamma 2 right where I displaystyle I is the height of the peak The three parameter Lorentzian function indicated is not in general a probability density function since it does not integrate to 1 except in the special case where I 1 p g displaystyle I frac 1 pi gamma Cumulative distribution function CDF Edit The Cauchy distribution is the probability distribution with the following cumulative distribution function CDF F x x 0 g 1 p arctan x x 0 g 1 2 displaystyle F x x 0 gamma frac 1 pi arctan left frac x x 0 gamma right frac 1 2 and the quantile function inverse cdf of the Cauchy distribution is Q p x 0 g x 0 g tan p p 1 2 displaystyle Q p x 0 gamma x 0 gamma tan left pi left p tfrac 1 2 right right It follows that the first and third quartiles are x 0 g x 0 g displaystyle x 0 gamma x 0 gamma and hence the interquartile range is 2 g displaystyle 2 gamma For the standard distribution the cumulative distribution function simplifies to arctangent function arctan x displaystyle arctan x F x 0 1 1 p arctan x 1 2 displaystyle F x 0 1 frac 1 pi arctan left x right frac 1 2 Other constructions Edit The standard Cauchy distribution is the Student s t distribution with one degree of freedom and so it may be constructed by any method that constructs the Student s t distribution If S displaystyle Sigma is a p p displaystyle p times p positive semidefinite covariance matrix with strictly positive diagonal entries then for independent and identically distributed X Y N 0 S displaystyle X Y sim N 0 Sigma and any random p displaystyle p vector w displaystyle w independent of X displaystyle X and Y displaystyle Y such that w 1 w p 1 displaystyle w 1 cdots w p 1 and w i 0 i 1 p displaystyle w i geq 0 i 1 ldots p defining a categorical distribution it holds that j 1 p w j X j Y j C a u c h y 0 1 displaystyle sum j 1 p w j frac X j Y j sim mathrm Cauchy 0 1 6 Properties EditThe Cauchy distribution is an example of a distribution which has no mean variance or higher moments defined Its mode and median are well defined and are both equal to x 0 displaystyle x 0 The Cauchy distribution is an infinitely divisible probability distribution It is also a strictly stable distribution 7 Like all stable distributions the location scale family to which the Cauchy distribution belongs is closed under linear transformations with real coefficients In addition the Cauchy distribution is closed under linear fractional transformations with real coefficients 8 In this connection see also McCullagh s parametrization of the Cauchy distributions Sum of Cauchy distributions Edit If X 1 X 2 X n displaystyle X 1 X 2 X n are IID samples from the standard Cauchy distribution then their sample mean X 1 n i X i displaystyle bar X frac 1 n sum i X i is also standard Cauchy distributed In particular the average does not converge to the mean and so the standard Cauchy distribution does not follow the law of large numbers This can be proved by repeated integration with the PDF or more conveniently by using the characteristic function of standard Cauchy distribution see below f X t E e i X t e t displaystyle varphi X t operatorname E left e iXt right e t With this we have f i X i t e n t displaystyle varphi sum i X i t e n t and so X displaystyle bar X has a standard Cauchy distribution More generally if X 1 X 2 X n displaystyle X 1 X 2 X n are independent and Cauchy distributed with location parameters x 1 x n displaystyle x 1 x n and scales g 1 g n displaystyle gamma 1 gamma n and a 1 a n displaystyle a 1 a n are real numbers then i a i X i displaystyle sum i a i X i is Cauchy distributed with location i a i x i displaystyle sum i a i x i and scale i a i g i displaystyle sum i a i gamma i We see that there is no law of large numbers for any weighted sum of independent Cauchy distributions This shows that the condition of finite variance in the central limit theorem cannot be dropped It is also an example of a more generalized version of the central limit theorem that is characteristic of all stable distributions of which the Cauchy distribution is a special case Central limit theorem Edit If X 1 X 2 displaystyle X 1 X 2 are IID samples with PDF r displaystyle rho such that lim c 1 c c c x 2 r x d x 2 g p displaystyle lim c to infty frac 1 c int c c x 2 rho x dx frac 2 gamma pi is finite but nonzero then 1 n i 1 n X i displaystyle frac 1 n sum i 1 n X i converges in distribution to a Cauchy distribution with scale g displaystyle gamma 9 Characteristic function Edit Let X displaystyle X denote a Cauchy distributed random variable The characteristic function of the Cauchy distribution is given by f X t E e i X t f x x 0 g e i x t d x e i x 0 t g t displaystyle varphi X t operatorname E left e iXt right int infty infty f x x 0 gamma e ixt dx e ix 0 t gamma t which is just the Fourier transform of the probability density The original probability density may be expressed in terms of the characteristic function essentially by using the inverse Fourier transform f x x 0 g 1 2 p f X t x 0 g e i x t d t displaystyle f x x 0 gamma frac 1 2 pi int infty infty varphi X t x 0 gamma e ixt dt The nth moment of a distribution is the nth derivative of the characteristic function evaluated at t 0 displaystyle t 0 Observe that the characteristic function is not differentiable at the origin this corresponds to the fact that the Cauchy distribution does not have well defined moments higher than the zeroth moment Kullback Leibler divergence Edit The Kullback Leibler divergence between two Cauchy distributions has the following symmetric closed form formula 10 K L p x 0 1 g 1 p x 0 2 g 2 log g 1 g 2 2 x 0 1 x 0 2 2 4 g 1 g 2 displaystyle mathrm KL left p x 0 1 gamma 1 p x 0 2 gamma 2 right log frac left gamma 1 gamma 2 right 2 left x 0 1 x 0 2 right 2 4 gamma 1 gamma 2 Any f divergence between two Cauchy distributions is symmetric and can be expressed as a function of the chi squared divergence 11 Closed form expression for the total variation Jensen Shannon divergence Hellinger distance etc are available Comparison with the normal distribution Edit Compared to the normal distribution the Cauchy density function has a higher peak and lower tails An example is shown in the two figures added here Observed histogram and best fitting Cauchy density function 12 Observed histogram and best fitting normal density function 12 The figure to the left shows the Cauchy probability density function fitted to an observed histogram The peak of the function is higher than the peak of the histogram while the tails are lower than those of the histogram The figure to the right shows the normal probability density function fitted to the same observed histogram The peak of the function is lower than the peak of the histogram This illustrates the above statement Entropy Edit The entropy of the Cauchy distribution is given by H g f x x 0 g log f x x 0 g d x log 4 p g displaystyle begin aligned H gamma amp int infty infty f x x 0 gamma log f x x 0 gamma dx 6pt amp log 4 pi gamma end aligned The derivative of the quantile function the quantile density function for the Cauchy distribution is Q p g g p sec 2 p p 1 2 displaystyle Q p gamma gamma pi sec 2 left pi left p tfrac 1 2 right right The differential entropy of a distribution can be defined in terms of its quantile density 13 specifically H g 0 1 log Q p g d p log 4 p g displaystyle H gamma int 0 1 log Q p gamma mathrm d p log 4 pi gamma The Cauchy distribution is the maximum entropy probability distribution for a random variate X displaystyle X for which E log 1 X x 0 2 g 2 log 4 displaystyle operatorname E log 1 X x 0 2 gamma 2 log 4 or alternatively for a random variate X displaystyle X for which E log 1 X x 0 2 2 log 1 g displaystyle operatorname E log 1 X x 0 2 2 log 1 gamma In its standard form it is the maximum entropy probability distribution for a random variate X displaystyle X for which 14 E ln 1 X 2 ln 4 displaystyle operatorname E left ln 1 X 2 right ln 4 Moments EditThe Cauchy distribution is usually used as an illustrative counterexample in elementary probability courses as a distribution with no well defined or indefinite moments Sample moments Edit If we take IID samples X 1 X 2 displaystyle X 1 X 2 from the standard Cauchy distribution then the sequence of their sample mean is S n 1 n i 1 n X i displaystyle S n frac 1 n sum i 1 n X i which also has the standard Cauchy distribution Consequently no matter how many terms we take the sample average does not converge Similarly the sample variance V n 1 n i 1 n X i S n 2 displaystyle V n frac 1 n sum i 1 n X i S n 2 also does not converge A typical trajectory of sample means looks like long periods of slow convergence to zero punctuated by large jumps away from zero but never getting too far away A typical trajectory of sample variances looks similar but the jumps accumulate faster than the decay diverging to infinity A typical trajectory of S 1 S 2 displaystyle S 1 S 2 looks like long periods of slow convergence to zero punctuated by large jumps away from zero but never getting too far away A typical trajectory of V 1 V 2 displaystyle V 1 V 2 looks similar but the jumps accumulate faster than the decay diverging to infinity These two kinds of trajectories are plotted in the figure Moments of sample lower than order 1 would converge to zero Moments of sample higher than order 2 would diverge to infinity even faster than sample variance Mean Edit If a probability distribution has a density function f x displaystyle f x then the mean if it exists is given by x f x d x displaystyle int infty infty xf x dx 1 We may evaluate this two sided improper integral by computing the sum of two one sided improper integrals That is a x f x d x a x f x d x displaystyle int infty a xf x dx int a infty xf x dx 2 for an arbitrary real number a displaystyle a For the integral to exist even as an infinite value at least one of the terms in this sum should be finite or both should be infinite and have the same sign But in the case of the Cauchy distribution both the terms in this sum 2 are infinite and have opposite sign Hence 1 is undefined and thus so is the mean 15 Note that the Cauchy principal value of the mean of the Cauchy distribution islim a a a x f x d x displaystyle lim a to infty int a a xf x dx which is zero On the other hand the related integral lim a 2 a a x f x d x displaystyle lim a to infty int 2a a xf x dx is not zero as can be seen by computing the integral This again shows that the mean 1 cannot exist Various results in probability theory about expected values such as the strong law of large numbers fail to hold for the Cauchy distribution 15 Smaller moments Edit The absolute moments for p 1 1 displaystyle p in 1 1 are defined For X C a u c h y 0 g displaystyle X sim mathrm Cauchy 0 gamma we have E X p g p s e c p p 2 displaystyle operatorname E X p gamma p mathrm sec pi p 2 Higher moments Edit The Cauchy distribution does not have finite moments of any order Some of the higher raw moments do exist and have a value of infinity for example the raw second moment E X 2 x 2 1 x 2 d x 1 1 1 x 2 d x d x 1 1 x 2 d x d x p displaystyle begin aligned operatorname E X 2 amp propto int infty infty frac x 2 1 x 2 dx int infty infty 1 frac 1 1 x 2 dx 8pt amp int infty infty dx int infty infty frac 1 1 x 2 dx int infty infty dx pi infty end aligned By re arranging the formula one can see that the second moment is essentially the infinite integral of a constant here 1 Higher even powered raw moments will also evaluate to infinity Odd powered raw moments however are undefined which is distinctly different from existing with the value of infinity The odd powered raw moments are undefined because their values are essentially equivalent to displaystyle infty infty since the two halves of the integral both diverge and have opposite signs The first raw moment is the mean which being odd does not exist See also the discussion above about this This in turn means that all of the central moments and standardized moments are undefined since they are all based on the mean The variance which is the second central moment is likewise non existent despite the fact that the raw second moment exists with the value infinity The results for higher moments follow from Holder s inequality which implies that higher moments or halves of moments diverge if lower ones do Moments of truncated distributions Edit Consider the truncated distribution defined by restricting the standard Cauchy distribution to the interval 10100 10100 Such a truncated distribution has all moments and the central limit theorem applies for i i d observations from it yet for almost all practical purposes it behaves like a Cauchy distribution 16 Estimation of parameters EditBecause the parameters of the Cauchy distribution do not correspond to a mean and variance attempting to estimate the parameters of the Cauchy distribution by using a sample mean and a sample variance will not succeed 17 For example if an i i d sample of size n is taken from a Cauchy distribution one may calculate the sample mean as x 1 n i 1 n x i displaystyle bar x frac 1 n sum i 1 n x i Although the sample values x i displaystyle x i will be concentrated about the central value x 0 displaystyle x 0 the sample mean will become increasingly variable as more observations are taken because of the increased probability of encountering sample points with a large absolute value In fact the distribution of the sample mean will be equal to the distribution of the observations themselves i e the sample mean of a large sample is no better or worse an estimator of x 0 displaystyle x 0 than any single observation from the sample Similarly calculating the sample variance will result in values that grow larger as more observations are taken Therefore more robust means of estimating the central value x 0 displaystyle x 0 and the scaling parameter g displaystyle gamma are needed One simple method is to take the median value of the sample as an estimator of x 0 displaystyle x 0 and half the sample interquartile range as an estimator of g displaystyle gamma Other more precise and robust methods have been developed 18 19 For example the truncated mean of the middle 24 of the sample order statistics produces an estimate for x 0 displaystyle x 0 that is more efficient than using either the sample median or the full sample mean 20 21 However because of the fat tails of the Cauchy distribution the efficiency of the estimator decreases if more than 24 of the sample is used 20 21 Maximum likelihood can also be used to estimate the parameters x 0 displaystyle x 0 and g displaystyle gamma However this tends to be complicated by the fact that this requires finding the roots of a high degree polynomial and there can be multiple roots that represent local maxima 22 Also while the maximum likelihood estimator is asymptotically efficient it is relatively inefficient for small samples 23 24 The log likelihood function for the Cauchy distribution for sample size n displaystyle n is ℓ x 1 x n x 0 g n log g p i 1 n log 1 x i x 0 g 2 displaystyle hat ell x 1 dotsc x n mid x 0 gamma n log gamma pi sum i 1 n log left 1 left frac x i x 0 gamma right 2 right Maximizing the log likelihood function with respect to x 0 displaystyle x 0 and g displaystyle gamma by taking the first derivative produces the following system of equations d ℓ d x 0 i 1 n 2 x i x 0 g 2 x i x 0 2 0 displaystyle frac d ell dx 0 sum i 1 n frac 2 x i x 0 gamma 2 left x i x 0 right 2 0 d ℓ d g i 1 n 2 x i x 0 2 g g 2 x i x 0 2 n g 0 displaystyle frac d ell d gamma sum i 1 n frac 2 left x i x 0 right 2 gamma gamma 2 left x i x 0 right 2 frac n gamma 0 Note that i 1 n x i x 0 2 g 2 x i x 0 2 displaystyle sum i 1 n frac left x i x 0 right 2 gamma 2 left x i x 0 right 2 is a monotone function in g displaystyle gamma and that the solution g displaystyle gamma must satisfy min x i x 0 g max x i x 0 displaystyle min x i x 0 leq gamma leq max x i x 0 Solving just for x 0 displaystyle x 0 requires solving a polynomial of degree 2 n 1 displaystyle 2n 1 22 and solving just for g displaystyle gamma requires solving a polynomial of degree 2 n displaystyle 2n Therefore whether solving for one parameter or for both parameters simultaneously a numerical solution on a computer is typically required The benefit of maximum likelihood estimation is asymptotic efficiency estimating x 0 displaystyle x 0 using the sample median is only about 81 as asymptotically efficient as estimating x 0 displaystyle x 0 by maximum likelihood 21 25 The truncated sample mean using the middle 24 order statistics is about 88 as asymptotically efficient an estimator of x 0 displaystyle x 0 as the maximum likelihood estimate 21 When Newton s method is used to find the solution for the maximum likelihood estimate the middle 24 order statistics can be used as an initial solution for x 0 displaystyle x 0 The shape can be estimated using the median of absolute values since for location 0 Cauchy variables X C a u c h y 0 g displaystyle X sim mathrm Cauchy 0 gamma the m e d i a n X g displaystyle mathrm median X gamma the shape parameter Multivariate Cauchy distribution EditA random vector X X 1 X k T displaystyle X X 1 ldots X k T is said to have the multivariate Cauchy distribution if every linear combination of its components Y a 1 X 1 a k X k displaystyle Y a 1 X 1 cdots a k X k has a Cauchy distribution That is for any constant vector a R k displaystyle a in mathbb R k the random variable Y a T X displaystyle Y a T X should have a univariate Cauchy distribution 26 The characteristic function of a multivariate Cauchy distribution is given by f X t e i x 0 t g t displaystyle varphi X t e ix 0 t gamma t where x 0 t displaystyle x 0 t and g t displaystyle gamma t are real functions with x 0 t displaystyle x 0 t a homogeneous function of degree one and g t displaystyle gamma t a positive homogeneous function of degree one 26 More formally 26 x 0 a t a x 0 t displaystyle x 0 at ax 0 t g a t a g t displaystyle gamma at a gamma t for all t displaystyle t An example of a bivariate Cauchy distribution can be given by 27 f x y x 0 y 0 g 1 2 p g x x 0 2 y y 0 2 g 2 3 2 displaystyle f x y x 0 y 0 gamma 1 over 2 pi left gamma over x x 0 2 y y 0 2 gamma 2 3 2 right Note that in this example even though the covariance between x displaystyle x and y displaystyle y is 0 x displaystyle x and y displaystyle y are not statistically independent 27 We also can write this formula for complex variable Then the probability density function of complex cauchy is f z z 0 g 1 2 p g z z 0 2 g 2 3 2 displaystyle f z z 0 gamma 1 over 2 pi left gamma over z z 0 2 gamma 2 3 2 right Like how the standard Cauchy distribution is the Student t distribution with one degree of freedom the multidimensional Cauchy density is the multivariate Student distribution with one degree of freedom The density of a k displaystyle k dimension Student distribution with one degree of freedom is f x m S k G 1 k 2 G 1 2 p k 2 S 1 2 1 x m T S 1 x m 1 k 2 displaystyle f mathbf x mathbf mu mathbf Sigma k frac Gamma left frac 1 k 2 right Gamma frac 1 2 pi frac k 2 left mathbf Sigma right frac 1 2 left 1 mathbf x mathbf mu T mathbf Sigma 1 mathbf x mathbf mu right frac 1 k 2 The properties of multidimensional Cauchy distribution are then special cases of the multivariate Student distribution Transformation properties EditIf X Cauchy x 0 g displaystyle X sim operatorname Cauchy x 0 gamma then k X ℓ Cauchy x 0 k ℓ g k displaystyle kX ell sim textrm Cauchy x 0 k ell gamma k 28 If X Cauchy x 0 g 0 displaystyle X sim operatorname Cauchy x 0 gamma 0 and Y Cauchy x 1 g 1 displaystyle Y sim operatorname Cauchy x 1 gamma 1 are independent then X Y Cauchy x 0 x 1 g 0 g 1 displaystyle X Y sim operatorname Cauchy x 0 x 1 gamma 0 gamma 1 and X Y Cauchy x 0 x 1 g 0 g 1 displaystyle X Y sim operatorname Cauchy x 0 x 1 gamma 0 gamma 1 If X Cauchy 0 g displaystyle X sim operatorname Cauchy 0 gamma then 1 X Cauchy 0 1 g displaystyle tfrac 1 X sim operatorname Cauchy 0 tfrac 1 gamma McCullagh s parametrization of the Cauchy distributions 29 Expressing a Cauchy distribution in terms of one complex parameter ps x 0 i g displaystyle psi x 0 i gamma define X Cauchy ps displaystyle X sim operatorname Cauchy psi to mean X Cauchy x 0 g displaystyle X sim operatorname Cauchy x 0 gamma If X Cauchy ps displaystyle X sim operatorname Cauchy psi then a X b c X d Cauchy a ps b c ps d displaystyle frac aX b cX d sim operatorname Cauchy left frac a psi b c psi d right where a displaystyle a b displaystyle b c displaystyle c and d displaystyle d are real numbers Using the same convention as above if X Cauchy ps displaystyle X sim operatorname Cauchy psi then 29 X i X i CCauchy ps i ps i displaystyle frac X i X i sim operatorname CCauchy left frac psi i psi i right where CCauchy displaystyle operatorname CCauchy is the circular Cauchy distribution Levy measure EditThe Cauchy distribution is the stable distribution of index 1 The Levy Khintchine representation of such a stable distribution of parameter g displaystyle gamma is given for X Stable g 0 0 displaystyle X sim operatorname Stable gamma 0 0 by E e i x X exp R e i x y 1 P g d y displaystyle operatorname E left e ixX right exp left int mathbb R e ixy 1 Pi gamma dy right where P g d y c 1 g 1 y 1 g 1 y gt 0 c 2 g 1 y 1 g 1 y lt 0 d y displaystyle Pi gamma dy left c 1 gamma frac 1 y 1 gamma 1 left y gt 0 right c 2 gamma frac 1 y 1 gamma 1 left y lt 0 right right dy and c 1 g c 2 g displaystyle c 1 gamma c 2 gamma can be expressed explicitly 30 In the case g 1 displaystyle gamma 1 of the Cauchy distribution one has c 1 g c 2 g displaystyle c 1 gamma c 2 gamma This last representation is a consequence of the formula p x PV R 0 1 e i x y d y y 2 displaystyle pi x operatorname PV int mathbb R setminus lbrace 0 rbrace 1 e ixy frac dy y 2 Related distributions EditCauchy 0 1 t d f 1 displaystyle operatorname Cauchy 0 1 sim textrm t mathrm df 1 Student s t distribution Cauchy m s t d f 1 m s displaystyle operatorname Cauchy mu sigma sim textrm t mathrm df 1 mu sigma non standardized Student s t distribution If X Y N 0 1 X Y displaystyle X Y sim textrm N 0 1 X Y independent then X Y Cauchy 0 1 displaystyle tfrac X Y sim textrm Cauchy 0 1 If X U 0 1 displaystyle X sim textrm U 0 1 then tan p X 1 2 Cauchy 0 1 displaystyle tan left pi left X tfrac 1 2 right right sim textrm Cauchy 0 1 If X L o g C a u c h y 0 1 displaystyle X sim operatorname Log Cauchy 0 1 then ln X Cauchy 0 1 displaystyle ln X sim textrm Cauchy 0 1 If X Cauchy x 0 g displaystyle X sim operatorname Cauchy x 0 gamma then 1 X Cauchy x 0 x 0 2 g 2 g x 0 2 g 2 displaystyle tfrac 1 X sim operatorname Cauchy left tfrac x 0 x 0 2 gamma 2 tfrac gamma x 0 2 gamma 2 right The Cauchy distribution is a limiting case of a Pearson distribution of type 4 citation needed The Cauchy distribution is a special case of a Pearson distribution of type 7 1 The Cauchy distribution is a stable distribution if X Stable 1 0 g m displaystyle X sim textrm Stable 1 0 gamma mu then X Cauchy m g displaystyle X sim operatorname Cauchy mu gamma The Cauchy distribution is a singular limit of a hyperbolic distribution citation needed The wrapped Cauchy distribution taking values on a circle is derived from the Cauchy distribution by wrapping it around the circle If X N 0 1 displaystyle X sim textrm N 0 1 Z I n v e r s e G a m m a 1 2 s 2 2 displaystyle Z sim operatorname Inverse Gamma 1 2 s 2 2 then Y m X Z Cauchy m s displaystyle Y mu X sqrt Z sim operatorname Cauchy mu s For half Cauchy distributions the relation holds by setting X N 0 1 I X gt 0 displaystyle X sim textrm N 0 1 I X gt 0 Relativistic Breit Wigner distribution EditMain article Relativistic Breit Wigner distribution In nuclear and particle physics the energy profile of a resonance is described by the relativistic Breit Wigner distribution while the Cauchy distribution is the non relativistic Breit Wigner distribution citation needed Occurrence and applications EditIn spectroscopy the Cauchy distribution describes the shape of spectral lines which are subject to homogeneous broadening in which all atoms interact in the same way with the frequency range contained in the line shape Many mechanisms cause homogeneous broadening most notably collision broadening 31 Lifetime or natural broadening also gives rise to a line shape described by the Cauchy distribution Applications of the Cauchy distribution or its transformation can be found in fields working with exponential growth A 1958 paper by White 32 derived the test statistic for estimators of b displaystyle hat beta for the equation x t 1 b x t e t 1 b gt 1 displaystyle x t 1 beta x t varepsilon t 1 beta gt 1 and where the maximum likelihood estimator is found using ordinary least squares showed the sampling distribution of the statistic is the Cauchy distribution Fitted cumulative Cauchy distribution to maximum one day rainfalls using CumFreq see also distribution fitting 12 The Cauchy distribution is often the distribution of observations for objects that are spinning The classic reference for this is called the Gull s lighthouse problem 33 and as in the above section as the Breit Wigner distribution in particle physics In hydrology the Cauchy distribution is applied to extreme events such as annual maximum one day rainfalls and river discharges The blue picture illustrates an example of fitting the Cauchy distribution to ranked monthly 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 The expression for imaginary part of complex electrical permittivity according to Lorentz model is a model VAR value at risk producing a much larger probability of extreme risk than Gaussian Distribution 34 See also EditLevy flight and Levy process Laplace distribution the Fourier transform of the Cauchy distribution Cauchy process Stable process Slash distributionReferences Edit a b c N L Johnson S Kotz N Balakrishnan 1994 Continuous Univariate Distributions Volume 1 New York Wiley Chapter 16 Cauchy and the Witch of Agnesi in Statistics on the Table S M Stigler Harvard 1999 Chapter 18 Feller William 1971 An Introduction to Probability Theory and Its Applications Volume II 2 ed New York John Wiley amp Sons Inc pp 704 ISBN 978 0 471 25709 7 Riley Ken F Hobson Michael P Bence Stephen J 2006 Mathematical Methods for Physics and Engineering 3 ed Cambridge UK Cambridge University Press pp 1333 ISBN 978 0 511 16842 0 Balakrishnan N Nevrozov V B 2003 A Primer on Statistical Distributions 1 ed Hoboken New Jersey John Wiley amp Sons Inc pp 305 ISBN 0 471 42798 5 Pillai N Meng X L 2016 An unexpected encounter with Cauchy and Levy The Annals of Statistics 44 5 2089 2097 arXiv 1505 01957 doi 10 1214 15 AOS1407 S2CID 31582370 Campbell B Read N Balakrishnan Brani Vidakovic Samuel Kotz 2006 Encyclopedia of Statistical Sciences 2nd ed John Wiley amp Sons p 778 ISBN 978 0 471 15044 2 Knight Franck B 1976 A characterization of the Cauchy type Proceedings of the American Mathematical Society 55 1 130 135 doi 10 2307 2041858 JSTOR 2041858 Updates to the Cauchy Central Limit Quantum Calculus 13 November 2022 Retrieved 21 June 2023 Frederic Chyzak Nielsen Frank 2019 A closed form formula for the Kullback Leibler divergence between Cauchy distributions arXiv 1905 10965 cs IT Nielsen Frank Okamura Kazuki 2023 On f Divergences Between Cauchy Distributions IEEE Transactions on Information Theory 69 5 3150 3171 arXiv 2101 12459 doi 10 1109 TIT 2022 3231645 S2CID 231728407 a b c CumFreq free software for cumulative frequency analysis and probability distribution fitting Archived from the original on 2018 02 21 Vasicek Oldrich 1976 A Test for Normality Based on Sample Entropy Journal of the Royal Statistical Society Series B 38 1 54 59 Park Sung Y Bera Anil K 2009 Maximum entropy autoregressive conditional heteroskedasticity model PDF Journal of Econometrics Elsevier 150 2 219 230 doi 10 1016 j jeconom 2008 12 014 Archived from the original PDF on 2011 09 30 Retrieved 2011 06 02 a b Kyle Siegrist Cauchy Distribution Random Archived from the original on 9 July 2021 Retrieved 5 July 2021 Hampel Frank 1998 Is statistics too difficult PDF Canadian Journal of Statistics 26 3 497 513 doi 10 2307 3315772 hdl 20 500 11850 145503 JSTOR 3315772 S2CID 53117661 archived from the original on 2022 01 25 retrieved 2019 09 25 Illustration of instability of sample means Archived from the original on 2017 03 24 Retrieved 2014 11 22 Cane Gwenda J 1974 Linear Estimation of Parameters of the Cauchy Distribution Based on Sample Quantiles Journal of the American Statistical Association 69 345 243 245 doi 10 1080 01621459 1974 10480163 JSTOR 2285535 Zhang Jin 2010 A Highly Efficient L estimator for the Location Parameter of the Cauchy Distribution Computational Statistics 25 1 97 105 doi 10 1007 s00180 009 0163 y S2CID 123586208 a b Rothenberg Thomas J Fisher Franklin M Tilanus C B 1964 A note on estimation from a Cauchy sample Journal of the American Statistical Association 59 306 460 463 doi 10 1080 01621459 1964 10482170 a href Template Cite journal html title Template Cite journal cite journal a CS1 maint multiple names authors list link a b c d Bloch Daniel 1966 A note on the estimation of the location parameters of the Cauchy distribution Journal of the American Statistical Association 61 316 852 855 doi 10 1080 01621459 1966 10480912 JSTOR 2282794 a b Ferguson Thomas S 1978 Maximum Likelihood Estimates of the Parameters of the Cauchy Distribution for Samples of Size 3 and 4 Journal of the American Statistical Association 73 361 211 213 doi 10 1080 01621459 1978 10480031 JSTOR 2286549 Cohen Freue Gabriella V 2007 The Pitman estimator of the Cauchy location parameter PDF Journal of Statistical Planning and Inference 137 6 1901 doi 10 1016 j jspi 2006 05 002 Archived from the original PDF on 2011 08 16 Wilcox Rand 2012 Introduction to Robust Estimation amp Hypothesis Testing Elsevier Barnett V D 1966 Order Statistics Estimators of the Location of the Cauchy Distribution Journal of the American Statistical Association 61 316 1205 1218 doi 10 1080 01621459 1966 10482205 JSTOR 2283210 a b c Ferguson Thomas S 1962 A Representation of the Symmetric Bivariate Cauchy Distribution The Annals of Mathematical Statistics 33 4 1256 1266 doi 10 1214 aoms 1177704357 JSTOR 2237984 Retrieved 2017 01 07 a b Molenberghs Geert Lesaffre Emmanuel 1997 Non linear Integral Equations to Approximate Bivariate Densities with Given Marginals and Dependence Function PDF Statistica Sinica 7 713 738 Archived from the original PDF on 2009 09 14 Lemons Don S 2002 An Introduction to Stochastic Processes in Physics American Journal of Physics The Johns Hopkins University Press 71 2 35 Bibcode 2003AmJPh 71 191L doi 10 1119 1 1526134 ISBN 0 8018 6866 1 a b McCullagh P Conditional inference and Cauchy models Biometrika volume 79 1992 pages 247 259 PDF Archived 2010 06 10 at the Wayback Machine from McCullagh s homepage Kyprianou Andreas 2009 Levy processes and continuous state branching processes part I PDF p 11 Archived PDF from the original on 2016 03 03 Retrieved 2016 05 04 E Hecht 1987 Optics 2nd ed Addison Wesley p 603 White J S December 1958 The Limiting Distribution of the Serial Correlation Coefficient in the Explosive Case The Annals of Mathematical Statistics 29 4 1188 1197 doi 10 1214 aoms 1177706450 Gull S F 1988 Bayesian Inductive Inference and Maximum Entropy Kluwer Academic Publishers Berlin https doi org 10 1007 978 94 009 3049 0 4 Archived 2022 01 25 at the Wayback Machine Tong Liu 2012 An intermediate distribution between Gaussian and Cauchy distributions https arxiv org pdf 1208 5109 pdf Archived 2020 06 24 at the Wayback MachineExternal links Edit Cauchy distribution Encyclopedia of Mathematics EMS Press 2001 1994 Earliest Uses The entry on Cauchy distribution has some historical information Weisstein Eric W Cauchy Distribution MathWorld GNU Scientific Library Reference Manual Ratios of Normal Variables by George Marsaglia Retrieved from https en wikipedia org w index php title Cauchy distribution amp oldid 1171710108, wikipedia, wiki, book, books, library,

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