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Laplace distribution

In probability theory and statistics, the Laplace distribution is a continuous probability distribution named after Pierre-Simon Laplace. It is also sometimes called the double exponential distribution, because it can be thought of as two exponential distributions (with an additional location parameter) spliced together along the abscissa, although the term is also sometimes used to refer to the Gumbel distribution. The difference between two independent identically distributed exponential random variables is governed by a Laplace distribution, as is a Brownian motion evaluated at an exponentially distributed random time[citation needed]. Increments of Laplace motion or a variance gamma process evaluated over the time scale also have a Laplace distribution.

Laplace
Probability density function
Cumulative distribution function
Parameters location (real)
scale (real)
Support
PDF
CDF
Quantile
Mean
Median
Mode
Variance
MAD
Skewness
Excess kurtosis
Entropy
MGF
CF
Expected shortfall [1]

Definitions edit

Probability density function edit

A random variable has a   distribution if its probability density function is

 

where   is a location parameter, and  , which is sometimes referred to as the "diversity", is a scale parameter. If   and  , the positive half-line is exactly an exponential distribution scaled by 1/2.

The probability density function of the Laplace distribution is also reminiscent of the normal distribution; however, whereas the normal distribution is expressed in terms of the squared difference from the mean  , the Laplace density is expressed in terms of the absolute difference from the mean. Consequently, the Laplace distribution has fatter tails than the normal distribution. It is a special case of the generalized normal distribution and the hyperbolic distribution. Continuous symmetric distributions that have exponential tails, like the Laplace distribution, but which have probability density functions that are differentiable at the mode include the logistic distribution, hyperbolic secant distribution, and the Champernowne distribution.

Cumulative distribution function edit

The Laplace distribution is easy to integrate (if one distinguishes two symmetric cases) due to the use of the absolute value function. Its cumulative distribution function is as follows:

 

The inverse cumulative distribution function is given by

 

Properties edit

Moments edit

 

Related distributions edit

  • If   then  .
  • If   then  .
  • If   then   (exponential distribution).
  • If   then  
  • If   then  .
  • If   then   (exponential power distribution).
  • If   (normal distribution) then   and  .
  • If   then   (chi-squared distribution).
  • If   then  . (F-distribution)
  • If   (uniform distribution) then  .
  • If   and   (Bernoulli distribution) independent of  , then  .
  • If   and   independent of  , then  
  • If   has a Rademacher distribution and   then  .
  • If   and   independent of  , then  .
  • If   (geometric stable distribution) then  .
  • The Laplace distribution is a limiting case of the hyperbolic distribution.
  • If   with   (Rayleigh distribution) then  . Note that if  , then   with  , which in turn equals the exponential distribution  .
  • Given an integer  , if   (gamma distribution, using   characterization), then   (infinite divisibility)[2]
  • If X has a Laplace distribution, then Y = eX has a log-Laplace distribution; conversely, if X has a log-Laplace distribution, then its logarithm has a Laplace distribution.

Probability of a Laplace being greater than another edit

Let   be independent laplace random variables:   and  , and we want to compute  .

The probability of   can be reduced (using the properties below) to  , where  . This probability is equal to

 

When  , both expressions are replaced by their limit as  :

 

To compute the case for  , note that  

since   when  

Relation to the exponential distribution edit

A Laplace random variable can be represented as the difference of two independent and identically distributed (iid) exponential random variables.[2] One way to show this is by using the characteristic function approach. For any set of independent continuous random variables, for any linear combination of those variables, its characteristic function (which uniquely determines the distribution) can be acquired by multiplying the corresponding characteristic functions.

Consider two i.i.d random variables  . The characteristic functions for   are

 

respectively. On multiplying these characteristic functions (equivalent to the characteristic function of the sum of the random variables  ), the result is

 

This is the same as the characteristic function for  , which is

 

Sargan distributions edit

Sargan distributions are a system of distributions of which the Laplace distribution is a core member. A  th order Sargan distribution has density[3][4]

 

for parameters  . The Laplace distribution results for  .

Statistical inference edit

Given   independent and identically distributed samples  , the maximum likelihood (MLE) estimator of   is the sample median,[5]

 

The MLE estimator of   is the mean absolute deviation from the median,[citation needed]

 

revealing a link between the Laplace distribution and least absolute deviations. A correction for small samples can be applied as follows:

 

(see: exponential distribution#Parameter estimation).

Occurrence and applications edit

The Laplacian distribution has been used in speech recognition to model priors on DFT coefficients [6] and in JPEG image compression to model AC coefficients [7] generated by a DCT.

  • The addition of noise drawn from a Laplacian distribution, with scaling parameter appropriate to a function's sensitivity, to the output of a statistical database query is the most common means to provide differential privacy in statistical databases.
 
Fitted Laplace distribution to maximum one-day rainfalls [8]
The Laplace distribution, being a composite or double distribution, is applicable in situations where the lower values originate under different external conditions than the higher ones so that they follow a different pattern.[12]

Random variate generation edit

Given a random variable   drawn from the uniform distribution in the interval  , the random variable

 

has a Laplace distribution with parameters   and  . This follows from the inverse cumulative distribution function given above.

A   variate can also be generated as the difference of two i.i.d.   random variables. Equivalently,   can also be generated as the logarithm of the ratio of two i.i.d. uniform random variables.

History edit

This distribution is often referred to as "Laplace's first law of errors". He published it in 1774, modeling the frequency of an error as an exponential function of its magnitude once its sign was disregarded. Laplace would later replace this model with his "second law of errors", based on the normal distribution, after the discovery of the central limit theorem.[13][14]

Keynes published a paper in 1911 based on his earlier thesis wherein he showed that the Laplace distribution minimised the absolute deviation from the median.[15]

See also edit

References edit

  1. ^ a b Norton, Matthew; Khokhlov, Valentyn; Uryasev, Stan (2019). "Calculating CVaR and bPOE for common probability distributions with application to portfolio optimization and density estimation" (PDF). Annals of Operations Research. 299 (1–2). Springer: 1281–1315. doi:10.1007/s10479-019-03373-1. Retrieved 2023-02-27.
  2. ^ a b Kotz, Samuel; Kozubowski, Tomasz J.; Podgórski, Krzysztof (2001). The Laplace distribution and generalizations: a revisit with applications to Communications, Economics, Engineering and Finance. Birkhauser. pp. 23 (Proposition 2.2.2, Equation 2.2.8). ISBN 9780817641665.
  3. ^ Everitt, B.S. (2002) The Cambridge Dictionary of Statistics, CUP. ISBN 0-521-81099-X
  4. ^ Johnson, N.L., Kotz S., Balakrishnan, N. (1994) Continuous Univariate Distributions, Wiley. ISBN 0-471-58495-9. p. 60
  5. ^ Robert M. Norton (May 1984). "The Double Exponential Distribution: Using Calculus to Find a Maximum Likelihood Estimator". The American Statistician. 38 (2). American Statistical Association: 135–136. doi:10.2307/2683252. JSTOR 2683252.
  6. ^ Eltoft, T.; Taesu Kim; Te-Won Lee (2006). (PDF). IEEE Signal Processing Letters. 13 (5): 300–303. doi:10.1109/LSP.2006.870353. S2CID 1011487. Archived from the original (PDF) on 2013-06-06. Retrieved 2012-07-04.
  7. ^ Minguillon, J.; Pujol, J. (2001). "JPEG standard uniform quantization error modeling with applications to sequential and progressive operation modes" (PDF). Journal of Electronic Imaging. 10 (2): 475–485. doi:10.1117/1.1344592. hdl:10609/6263.
  8. ^ CumFreq for probability distribution fitting
  9. ^ Pardo, Scott (2020). Statistical Analysis of Empirical Data Methods for Applied Sciences. Springer. p. 58. ISBN 978-3-030-43327-7.
  10. ^ Kou, S.G. (August 8, 2002). "A Jump-Diffusion Model for Option Pricing". Management Science. 48 (8): 1086–1101. doi:10.1287/mnsc.48.8.1086.166. JSTOR 822677. Retrieved 2022-03-01.
  11. ^ Chen, Jian (2018). General Equilibrium Option Pricing Method: Theoretical and Empirical Study. Springer. p. 70. ISBN 9789811074288.
  12. ^ A collection of composite distributions
  13. ^ Laplace, P-S. (1774). Mémoire sur la probabilité des causes par les évènements. Mémoires de l’Academie Royale des Sciences Presentés par Divers Savan, 6, 621–656
  14. ^ Wilson, Edwin Bidwell (1923). "First and Second Laws of Error". Journal of the American Statistical Association. 18 (143). Informa UK Limited: 841–851. doi:10.1080/01621459.1923.10502116. ISSN 0162-1459.   This article incorporates text from this source, which is in the public domain.
  15. ^ Keynes, J. M. (1911). "The Principal Averages and the Laws of Error which Lead to Them". Journal of the Royal Statistical Society. 74 (3). JSTOR: 322–331. doi:10.2307/2340444. ISSN 0952-8385. JSTOR 2340444.

External links edit

laplace, distribution, probability, theory, statistics, continuous, probability, distribution, named, after, pierre, simon, laplace, also, sometimes, called, double, exponential, distribution, because, thought, exponential, distributions, with, additional, loc. In probability theory and statistics the Laplace distribution is a continuous probability distribution named after Pierre Simon Laplace It is also sometimes called the double exponential distribution because it can be thought of as two exponential distributions with an additional location parameter spliced together along the abscissa although the term is also sometimes used to refer to the Gumbel distribution The difference between two independent identically distributed exponential random variables is governed by a Laplace distribution as is a Brownian motion evaluated at an exponentially distributed random time citation needed Increments of Laplace motion or a variance gamma process evaluated over the time scale also have a Laplace distribution LaplaceProbability density functionCumulative distribution functionParametersm displaystyle mu location real b gt 0 displaystyle b gt 0 scale real SupportR displaystyle mathbb R PDF1 2 b exp x m b displaystyle frac 1 2b exp left frac x mu b right CDF 1 2 exp x m b if x m 1 1 2 exp x m b if x m displaystyle begin cases frac 1 2 exp left frac x mu b right amp text if x leq mu 8pt 1 frac 1 2 exp left frac x mu b right amp text if x geq mu end cases Quantile m b ln 2 F if F 1 2 m b ln 2 2 F if F 1 2 displaystyle begin cases mu b ln left 2F right amp text if F leq frac 1 2 8pt mu b ln left 2 2F right amp text if F geq frac 1 2 end cases Meanm displaystyle mu Medianm displaystyle mu Modem displaystyle mu Variance2 b 2 displaystyle 2b 2 MADb displaystyle b Skewness0 displaystyle 0 Excess kurtosis6 displaystyle 6 Entropyln 2 b e displaystyle ln 2be MGFexp m t 1 b 2 t 2 for t lt 1 b displaystyle frac exp mu t 1 b 2 t 2 text for t lt 1 b CFexp m i t 1 b 2 t 2 displaystyle frac exp mu it 1 b 2 t 2 Expected shortfall m b p 1 p 1 ln 2 p p lt 5 m b 1 ln 2 1 p p 5 displaystyle begin cases mu b left frac p 1 p right 1 ln 2p amp p lt 5 mu b left 1 ln left 2 1 p right right amp p geq 5 end cases 1 Contents 1 Definitions 1 1 Probability density function 1 2 Cumulative distribution function 2 Properties 2 1 Moments 2 2 Related distributions 2 3 Probability of a Laplace being greater than another 2 4 Relation to the exponential distribution 2 5 Sargan distributions 3 Statistical inference 4 Occurrence and applications 5 Random variate generation 6 History 7 See also 8 References 9 External linksDefinitions editProbability density function edit A random variable has a Laplace m b displaystyle operatorname Laplace mu b nbsp distribution if its probability density function is f x m b 1 2 b exp x m b displaystyle f x mid mu b frac 1 2b exp left frac x mu b right nbsp where m displaystyle mu nbsp is a location parameter and b gt 0 displaystyle b gt 0 nbsp which is sometimes referred to as the diversity is a scale parameter If m 0 displaystyle mu 0 nbsp and b 1 displaystyle b 1 nbsp the positive half line is exactly an exponential distribution scaled by 1 2 The probability density function of the Laplace distribution is also reminiscent of the normal distribution however whereas the normal distribution is expressed in terms of the squared difference from the mean m displaystyle mu nbsp the Laplace density is expressed in terms of the absolute difference from the mean Consequently the Laplace distribution has fatter tails than the normal distribution It is a special case of the generalized normal distribution and the hyperbolic distribution Continuous symmetric distributions that have exponential tails like the Laplace distribution but which have probability density functions that are differentiable at the mode include the logistic distribution hyperbolic secant distribution and the Champernowne distribution Cumulative distribution function edit The Laplace distribution is easy to integrate if one distinguishes two symmetric cases due to the use of the absolute value function Its cumulative distribution function is as follows F x x f u d u 1 2 exp x m b if x lt m 1 1 2 exp x m b if x m 1 2 1 2 sgn x m 1 exp x m b displaystyle begin aligned F x amp int infty x f u mathrm d u begin cases frac 1 2 exp left frac x mu b right amp mbox if x lt mu 1 frac 1 2 exp left frac x mu b right amp mbox if x geq mu end cases amp tfrac 1 2 tfrac 1 2 operatorname sgn x mu left 1 exp left frac x mu b right right end aligned nbsp The inverse cumulative distribution function is given by F 1 p m b sgn p 0 5 ln 1 2 p 0 5 displaystyle F 1 p mu b operatorname sgn p 0 5 ln 1 2 p 0 5 nbsp Properties editMoments edit m r 1 2 k 0 r r r k b k m r k 1 1 k displaystyle mu r bigg frac 1 2 bigg sum k 0 r bigg frac r r k b k mu r k 1 1 k bigg nbsp Related distributions edit If X Laplace m b displaystyle X sim textrm Laplace mu b nbsp then k X c Laplace k m c k b displaystyle kX c sim textrm Laplace k mu c k b nbsp If X Laplace 0 1 displaystyle X sim textrm Laplace 0 1 nbsp then b X Laplace 0 b displaystyle bX sim textrm Laplace 0 b nbsp If X Laplace 0 b displaystyle X sim textrm Laplace 0 b nbsp then X Exponential b 1 displaystyle left X right sim textrm Exponential left b 1 right nbsp exponential distribution If X Y Exponential l displaystyle X Y sim textrm Exponential lambda nbsp then X Y Laplace 0 l 1 displaystyle X Y sim textrm Laplace left 0 lambda 1 right nbsp If X Laplace m b displaystyle X sim textrm Laplace mu b nbsp then X m Exponential b 1 displaystyle left X mu right sim textrm Exponential b 1 nbsp If X Laplace m b displaystyle X sim textrm Laplace mu b nbsp then X EPD m b 1 displaystyle X sim textrm EPD mu b 1 nbsp exponential power distribution If X 1 X 4 N 0 1 displaystyle X 1 X 4 sim textrm N 0 1 nbsp normal distribution then X 1 X 2 X 3 X 4 Laplace 0 1 displaystyle X 1 X 2 X 3 X 4 sim textrm Laplace 0 1 nbsp and X 1 2 X 2 2 X 3 2 X 4 2 2 Laplace 0 1 displaystyle X 1 2 X 2 2 X 3 2 X 4 2 2 sim textrm Laplace 0 1 nbsp If X i Laplace m b displaystyle X i sim textrm Laplace mu b nbsp then 2 b i 1 n X i m x 2 2 n displaystyle frac displaystyle 2 b sum i 1 n X i mu sim chi 2 2n nbsp chi squared distribution If X Y Laplace m b displaystyle X Y sim textrm Laplace mu b nbsp then X m Y m F 2 2 displaystyle tfrac X mu Y mu sim operatorname F 2 2 nbsp F distribution If X Y U 0 1 displaystyle X Y sim textrm U 0 1 nbsp uniform distribution then log X Y Laplace 0 1 displaystyle log X Y sim textrm Laplace 0 1 nbsp If X Exponential l displaystyle X sim textrm Exponential lambda nbsp and Y Bernoulli 0 5 displaystyle Y sim textrm Bernoulli 0 5 nbsp Bernoulli distribution independent of X displaystyle X nbsp then X 2 Y 1 Laplace 0 l 1 displaystyle X 2Y 1 sim textrm Laplace left 0 lambda 1 right nbsp If X Exponential l displaystyle X sim textrm Exponential lambda nbsp and Y Exponential n displaystyle Y sim textrm Exponential nu nbsp independent of X displaystyle X nbsp then l X n Y Laplace 0 1 displaystyle lambda X nu Y sim textrm Laplace 0 1 nbsp If X displaystyle X nbsp has a Rademacher distribution and Y Exponential l displaystyle Y sim textrm Exponential lambda nbsp then X Y Laplace 0 1 l displaystyle XY sim textrm Laplace 0 1 lambda nbsp If V Exponential 1 displaystyle V sim textrm Exponential 1 nbsp and Z N 0 1 displaystyle Z sim N 0 1 nbsp independent of V displaystyle V nbsp then X m b 2 V Z L a p l a c e m b displaystyle X mu b sqrt 2V Z sim mathrm Laplace mu b nbsp If X GeometricStable 2 0 l 0 displaystyle X sim textrm GeometricStable 2 0 lambda 0 nbsp geometric stable distribution then X Laplace 0 l displaystyle X sim textrm Laplace 0 lambda nbsp The Laplace distribution is a limiting case of the hyperbolic distribution If X Y N m Y 2 displaystyle X Y sim textrm N mu Y 2 nbsp with Y Rayleigh b displaystyle Y sim textrm Rayleigh b nbsp Rayleigh distribution then X Laplace m b displaystyle X sim textrm Laplace mu b nbsp Note that if Y Rayleigh b displaystyle Y sim textrm Rayleigh b nbsp then Y 2 Gamma 1 2 b 2 displaystyle Y 2 sim textrm Gamma 1 2b 2 nbsp with E Y 2 2 b 2 displaystyle textrm E Y 2 2b 2 nbsp which in turn equals the exponential distribution Exp 1 2 b 2 displaystyle textrm Exp 1 2b 2 nbsp Given an integer n 1 displaystyle n geq 1 nbsp if X i Y i G 1 n b displaystyle X i Y i sim Gamma left frac 1 n b right nbsp gamma distribution using k 8 displaystyle k theta nbsp characterization then i 1 n m n X i Y i Laplace m b displaystyle sum i 1 n left frac mu n X i Y i right sim textrm Laplace mu b nbsp infinite divisibility 2 If X has a Laplace distribution then Y eX has a log Laplace distribution conversely if X has a log Laplace distribution then its logarithm has a Laplace distribution Probability of a Laplace being greater than another edit Let X Y displaystyle X Y nbsp be independent laplace random variables X Laplace m X b X displaystyle X sim textrm Laplace mu X b X nbsp and Y Laplace m Y b Y displaystyle Y sim textrm Laplace mu Y b Y nbsp and we want to compute P X gt Y displaystyle P X gt Y nbsp The probability of P X gt Y displaystyle P X gt Y nbsp can be reduced using the properties below to P m b Z 1 gt Z 2 displaystyle P mu bZ 1 gt Z 2 nbsp where Z 1 Z 2 Laplace 0 1 displaystyle Z 1 Z 2 sim textrm Laplace 0 1 nbsp This probability is equal toP m b Z 1 gt Z 2 b 2 e m b e m 2 b 2 1 when m lt 0 1 b 2 e m b e m 2 b 2 1 when m gt 0 displaystyle P mu bZ 1 gt Z 2 begin cases frac b 2 e mu b e mu 2 b 2 1 amp text when mu lt 0 1 frac b 2 e mu b e mu 2 b 2 1 amp text when mu gt 0 end cases nbsp When b 1 displaystyle b 1 nbsp both expressions are replaced by their limit as b 1 displaystyle b to 1 nbsp P m Z 1 gt Z 2 e m 2 m 4 when m lt 0 1 e m 2 m 4 when m gt 0 displaystyle P mu Z 1 gt Z 2 begin cases e mu frac 2 mu 4 amp text when mu lt 0 1 e mu frac 2 mu 4 amp text when mu gt 0 end cases nbsp To compute the case for m gt 0 displaystyle mu gt 0 nbsp note that P m Z 1 gt Z 2 1 P m Z 1 lt Z 2 1 P m Z 1 gt Z 2 1 P m Z 1 gt Z 2 displaystyle P mu Z 1 gt Z 2 1 P mu Z 1 lt Z 2 1 P mu Z 1 gt Z 2 1 P mu Z 1 gt Z 2 nbsp since Z Z displaystyle Z sim Z nbsp when Z Laplace 0 1 displaystyle Z sim textrm Laplace 0 1 nbsp Relation to the exponential distribution edit A Laplace random variable can be represented as the difference of two independent and identically distributed iid exponential random variables 2 One way to show this is by using the characteristic function approach For any set of independent continuous random variables for any linear combination of those variables its characteristic function which uniquely determines the distribution can be acquired by multiplying the corresponding characteristic functions Consider two i i d random variables X Y Exponential l displaystyle X Y sim textrm Exponential lambda nbsp The characteristic functions for X Y displaystyle X Y nbsp are l i t l l i t l displaystyle frac lambda it lambda quad frac lambda it lambda nbsp respectively On multiplying these characteristic functions equivalent to the characteristic function of the sum of the random variables X Y displaystyle X Y nbsp the result is l 2 i t l i t l l 2 t 2 l 2 displaystyle frac lambda 2 it lambda it lambda frac lambda 2 t 2 lambda 2 nbsp This is the same as the characteristic function for Z Laplace 0 1 l displaystyle Z sim textrm Laplace 0 1 lambda nbsp which is 1 1 t 2 l 2 displaystyle frac 1 1 frac t 2 lambda 2 nbsp Sargan distributions edit Sargan distributions are a system of distributions of which the Laplace distribution is a core member A p displaystyle p nbsp th order Sargan distribution has density 3 4 f p x 1 2 exp a x 1 j 1 p b j a j x j 1 j 1 p j b j displaystyle f p x tfrac 1 2 exp alpha x frac displaystyle 1 sum j 1 p beta j alpha j x j displaystyle 1 sum j 1 p j beta j nbsp for parameters a 0 b j 0 displaystyle alpha geq 0 beta j geq 0 nbsp The Laplace distribution results for p 0 displaystyle p 0 nbsp Statistical inference editGiven n displaystyle n nbsp independent and identically distributed samples x 1 x 2 x n displaystyle x 1 x 2 x n nbsp the maximum likelihood MLE estimator of m displaystyle mu nbsp is the sample median 5 m m e d x displaystyle hat mu mathrm med x nbsp The MLE estimator of b displaystyle b nbsp is the mean absolute deviation from the median citation needed b 1 n i 1 n x i m displaystyle hat b frac 1 n sum i 1 n x i hat mu nbsp revealing a link between the Laplace distribution and least absolute deviations A correction for small samples can be applied as follows b b n n 2 displaystyle hat b hat b cdot n n 2 nbsp see exponential distribution Parameter estimation Occurrence and applications editThe Laplacian distribution has been used in speech recognition to model priors on DFT coefficients 6 and in JPEG image compression to model AC coefficients 7 generated by a DCT The addition of noise drawn from a Laplacian distribution with scaling parameter appropriate to a function s sensitivity to the output of a statistical database query is the most common means to provide differential privacy in statistical databases nbsp Fitted Laplace distribution to maximum one day rainfalls 8 In regression analysis the least absolute deviations estimate arises as the maximum likelihood estimate if the errors have a Laplace distribution The Lasso can be thought of as a Bayesian regression with a Laplacian prior for the coefficients 9 In hydrology the Laplace distribution is applied to extreme events such as annual maximum one day rainfalls and river discharges The blue picture made with CumFreq illustrates an example of fitting the Laplace distribution to ranked annually maximum one day rainfalls showing also the 90 confidence belt based on the binomial distribution The rainfall data are represented by plotting positions as part of the cumulative frequency analysis The Laplace distribution has applications in finance For example S G Kou developed a model for financial instrument prices incorporating a Laplace distribution in some cases an asymmetric Laplace distribution to address problems of skewness kurtosis and the volatility smile that often occur when using a normal distribution for pricing these instruments 10 11 The Laplace distribution being a composite or double distribution is applicable in situations where the lower values originate under different external conditions than the higher ones so that they follow a different pattern 12 Random variate generation editFurther information Non uniform random variate generation Given a random variable U displaystyle U nbsp drawn from the uniform distribution in the interval 1 2 1 2 displaystyle left 1 2 1 2 right nbsp the random variable X m b sgn U ln 1 2 U displaystyle X mu b operatorname sgn U ln 1 2 U nbsp has a Laplace distribution with parameters m displaystyle mu nbsp and b displaystyle b nbsp This follows from the inverse cumulative distribution function given above A Laplace 0 b displaystyle textrm Laplace 0 b nbsp variate can also be generated as the difference of two i i d Exponential 1 b displaystyle textrm Exponential 1 b nbsp random variables Equivalently Laplace 0 1 displaystyle textrm Laplace 0 1 nbsp can also be generated as the logarithm of the ratio of two i i d uniform random variables History editThis distribution is often referred to as Laplace s first law of errors He published it in 1774 modeling the frequency of an error as an exponential function of its magnitude once its sign was disregarded Laplace would later replace this model with his second law of errors based on the normal distribution after the discovery of the central limit theorem 13 14 Keynes published a paper in 1911 based on his earlier thesis wherein he showed that the Laplace distribution minimised the absolute deviation from the median 15 See also editGeneralized normal distribution Symmetric version Multivariate Laplace distribution Besov measure a generalisation of the Laplace distribution to function spaces Cauchy distribution also called the Lorentzian distribution ie the Fourier transform of the Laplace Characteristic function probability theory References edit a b Norton Matthew Khokhlov Valentyn Uryasev Stan 2019 Calculating CVaR and bPOE for common probability distributions with application to portfolio optimization and density estimation PDF Annals of Operations Research 299 1 2 Springer 1281 1315 doi 10 1007 s10479 019 03373 1 Retrieved 2023 02 27 a b Kotz Samuel Kozubowski Tomasz J Podgorski Krzysztof 2001 The Laplace distribution and generalizations a revisit with applications to Communications Economics Engineering and Finance Birkhauser pp 23 Proposition 2 2 2 Equation 2 2 8 ISBN 9780817641665 Everitt B S 2002 The Cambridge Dictionary of Statistics CUP ISBN 0 521 81099 X Johnson N L Kotz S Balakrishnan N 1994 Continuous Univariate Distributions Wiley ISBN 0 471 58495 9 p 60 Robert M Norton May 1984 The Double Exponential Distribution Using Calculus to Find a Maximum Likelihood Estimator The American Statistician 38 2 American Statistical Association 135 136 doi 10 2307 2683252 JSTOR 2683252 Eltoft T Taesu Kim Te Won Lee 2006 On the multivariate Laplace distribution PDF IEEE Signal Processing Letters 13 5 300 303 doi 10 1109 LSP 2006 870353 S2CID 1011487 Archived from the original PDF on 2013 06 06 Retrieved 2012 07 04 Minguillon J Pujol J 2001 JPEG standard uniform quantization error modeling with applications to sequential and progressive operation modes PDF Journal of Electronic Imaging 10 2 475 485 doi 10 1117 1 1344592 hdl 10609 6263 CumFreq for probability distribution fitting Pardo Scott 2020 Statistical Analysis of Empirical Data Methods for Applied Sciences Springer p 58 ISBN 978 3 030 43327 7 Kou S G August 8 2002 A Jump Diffusion Model for Option Pricing Management Science 48 8 1086 1101 doi 10 1287 mnsc 48 8 1086 166 JSTOR 822677 Retrieved 2022 03 01 Chen Jian 2018 General Equilibrium Option Pricing Method Theoretical and Empirical Study Springer p 70 ISBN 9789811074288 A collection of composite distributions Laplace P S 1774 Memoire sur la probabilite des causes par les evenements Memoires de l Academie Royale des Sciences Presentes par Divers Savan 6 621 656 Wilson Edwin Bidwell 1923 First and Second Laws of Error Journal of the American Statistical Association 18 143 Informa UK Limited 841 851 doi 10 1080 01621459 1923 10502116 ISSN 0162 1459 nbsp This article incorporates text from this source which is in the public domain Keynes J M 1911 The Principal Averages and the Laws of Error which Lead to Them Journal of the Royal Statistical Society 74 3 JSTOR 322 331 doi 10 2307 2340444 ISSN 0952 8385 JSTOR 2340444 External links edit Laplace distribution Encyclopedia of Mathematics EMS Press 2001 1994 Retrieved from https en wikipedia org w index php title Laplace distribution amp oldid 1223082357, wikipedia, wiki, book, books, library,

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