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Exponential distribution

In probability theory and statistics, the exponential distribution or negative exponential distribution is the probability distribution of the distance between events in a Poisson point process, i.e., a process in which events occur continuously and independently at a constant average rate; the distance parameter could be any meaningful mono-dimensional measure of the process, such as time between production errors, or length along a roll of fabric in the weaving manufacturing process. It is a particular case of the gamma distribution. It is the continuous analogue of the geometric distribution, and it has the key property of being memoryless. In addition to being used for the analysis of Poisson point processes it is found in various other contexts.

Exponential
Probability density function
Cumulative distribution function
Parameters rate, or inverse scale
Support
PDF
CDF
Quantile
Mean
Median
Mode
Variance
Skewness
Excess kurtosis
Entropy
MGF
CF
Fisher information
Kullback–Leibler divergence
Expected shortfall

The exponential distribution is not the same as the class of exponential families of distributions. This is a large class of probability distributions that includes the exponential distribution as one of its members, but also includes many other distributions, like the normal, binomial, gamma, and Poisson distributions.

Definitions

Probability density function

The probability density function (pdf) of an exponential distribution is

 

Here λ > 0 is the parameter of the distribution, often called the rate parameter. The distribution is supported on the interval [0, ∞). If a random variable X has this distribution, we write X ~ Exp(λ).

The exponential distribution exhibits infinite divisibility.

Cumulative distribution function

The cumulative distribution function is given by

 

Alternative parametrization

The exponential distribution is sometimes parametrized in terms of the scale parameter β = 1/λ, which is also the mean:

 

Properties

Mean, variance, moments, and median

 
The mean is the probability mass centre, that is, the first moment.
 
The median is the preimage F−1(1/2).

The mean or expected value of an exponentially distributed random variable X with rate parameter λ is given by

 

In light of the examples given below, this makes sense; a person who receives an average of two telephone calls per hour can expect that the time between consecutive calls will be 0.5 hour, or 30 minutes.

The variance of X is given by

 
so the standard deviation is equal to the mean.

The moments of X, for   are given by

 

The central moments of X, for   are given by

 
where !n is the subfactorial of n

The median of X is given by

 
where ln refers to the natural logarithm. Thus the absolute difference between the mean and median is
 

in accordance with the median-mean inequality.

Memorylessness property of exponential random variable

An exponentially distributed random variable T obeys the relation

 

This can be seen by considering the complementary cumulative distribution function:

 

When T is interpreted as the waiting time for an event to occur relative to some initial time, this relation implies that, if T is conditioned on a failure to observe the event over some initial period of time s, the distribution of the remaining waiting time is the same as the original unconditional distribution. For example, if an event has not occurred after 30 seconds, the conditional probability that occurrence will take at least 10 more seconds is equal to the unconditional probability of observing the event more than 10 seconds after the initial time.

The exponential distribution and the geometric distribution are the only memoryless probability distributions.

The exponential distribution is consequently also necessarily the only continuous probability distribution that has a constant failure rate.

Quantiles

 
Tukey criteria for anomalies.[citation needed]

The quantile function (inverse cumulative distribution function) for Exp(λ) is

 

The quartiles are therefore:

  • first quartile: ln(4/3)/λ
  • median: ln(2)/λ
  • third quartile: ln(4)/λ

And as a consequence the interquartile range is ln(3)/λ.

Conditional Value at Risk (Expected Shortfall)

The conditional value at risk (CVaR) also known as the expected shortfall or superquantile for Exp(λ) is derived as follows:[1]

 

Buffered Probability of Exceedance (bPOE)

The buffered probability of exceedance is one minus the probability level at which the CVaR equals the threshold  . It is derived as follows:[1]

 

Kullback–Leibler divergence

The directed Kullback–Leibler divergence in nats of   ("approximating" distribution) from   ('true' distribution) is given by

 

Maximum entropy distribution

Among all continuous probability distributions with support [0, ∞) and mean μ, the exponential distribution with λ = 1/μ has the largest differential entropy. In other words, it is the maximum entropy probability distribution for a random variate X which is greater than or equal to zero and for which E[X] is fixed.[2]

Distribution of the minimum of exponential random variables

Let X1, …, Xn be independent exponentially distributed random variables with rate parameters λ1, …, λn. Then

 
is also exponentially distributed, with parameter
 

This can be seen by considering the complementary cumulative distribution function:

 

The index of the variable which achieves the minimum is distributed according to the categorical distribution

 

A proof can be seen by letting  . Then,

 

Note that

 
is not exponentially distributed, if X1, …, Xn do not all have parameter 0.[3]

Joint moments of i.i.d. exponential order statistics

Let   be   independent and identically distributed exponential random variables with rate parameter λ. Let   denote the corresponding order statistics. For   , the joint moment   of the order statistics   and   is given by

 

This can be seen by invoking the law of total expectation and the memoryless property:

 

The first equation follows from the law of total expectation. The second equation exploits the fact that once we condition on  , it must follow that  . The third equation relies on the memoryless property to replace   with  .

Sum of two independent exponential random variables

The probability distribution function (PDF) of a sum of two independent random variables is the convolution of their individual PDFs. If   and   are independent exponential random variables with respective rate parameters   and   then the probability density of   is given by

 
The entropy of this distribution is available in closed form: assuming   (without loss of generality), then
 
where   is the Euler-Mascheroni constant, and   is the digamma function.[4]

In the case of equal rate parameters, the result is an Erlang distribution with shape 2 and parameter   which in turn is a special case of gamma distribution.

The sum of n independent Exp(λ) exponential random variables is Gamma(n, λ) gamma distributed.

Related distributions

  • If X ~ Laplace(μ, β−1), then |X − μ| ~ Exp(β).
  • If X ~ Pareto(1, λ), then log(X) ~ Exp(λ).
  • If X ~ SkewLogistic(θ), then  .
  • If Xi ~ U(0, 1) then
     
  • The exponential distribution is a limit of a scaled beta distribution:
     
  • Exponential distribution is a special case of type 3 Pearson distribution.
  • If X ~ Exp(λ) and Xi ~ Exp(λi) then:
    •  , closure under scaling by a positive factor.
    • 1 + X ~ BenktanderWeibull(λ, 1), which reduces to a truncated exponential distribution.
    • keX ~ Pareto(k, λ).
    • e−X ~ Beta(λ, 1).
    • 1/keX ~ PowerLaw(k, λ)
    •  , the Rayleigh distribution
    •  , the Weibull distribution
    •  
    • μ − β log(λX) ∼ Gumbel(μ, β).
    •  , a geometric distribution on 0,1,2,3,...
    •  , a geometric distribution on 1,2,3,4,...
    • If also Y ~ Erlang(n, λ) or  then  
    • If also λ ~ Gamma(k, θ) (shape, scale parametrisation) then the marginal distribution of X is Lomax(k, 1/θ), the gamma mixture
    • λ1X1 − λ2Y2 ~ Laplace(0, 1).
    • min{X1, ..., Xn} ~ Exp(λ1 + ... + λn).
    • If also λi = λ then:
      •   Erlang(k, λ) = Gamma(k, λ−1) = Gamma(k, λ) (in (k, θ) and (α, β) parametrization, respectively) with an integer shape parameter k.[5]
      • If  , then  .
      • XiXj ~ Laplace(0, λ−1).
    • If also Xi are independent, then:
      •   ~ U(0, 1)
      •   has probability density function  . This can be used to obtain a confidence interval for  .
    • If also λ = 1:
      •  , the logistic distribution
      •  
      • μ − σ log(X) ~ GEV(μ, σ, 0).
      • Further if   then   (K-distribution)
    • If also λ = 1/2 then X ∼ χ2
      2
      ; i.e., X has a chi-squared distribution with 2 degrees of freedom. Hence:
       
  • If   and   ~ Poisson(X) then   (geometric distribution)
  • The Hoyt distribution can be obtained from exponential distribution and arcsine distribution
  • The exponential distribution is a limit of the κ-exponential distribution in the   case.
  • Exponential distribution is a limit of the κ-Generalized Gamma distribution in the   and   cases:
     

Other related distributions:

Statistical inference

Below, suppose random variable X is exponentially distributed with rate parameter λ, and   are n independent samples from X, with sample mean  .

Parameter estimation

The maximum likelihood estimator for λ is constructed as follows.

The likelihood function for λ, given an independent and identically distributed sample x = (x1, …, xn) drawn from the variable, is:

 

where:

 
is the sample mean.

The derivative of the likelihood function's logarithm is:

 

Consequently, the maximum likelihood estimate for the rate parameter is:

 

This is not an unbiased estimator of   although   is an unbiased[6] MLE[7] estimator of   and the distribution mean.

The bias of   is equal to

 
which yields the bias-corrected maximum likelihood estimator
 

An approximate minimizer of mean squared error (see also: bias–variance tradeoff) can be found, assuming a sample size greater than two, with a correction factor to the MLE:

 
This is derived from the mean and variance of the inverse-gamma distribution,  .[8]

Fisher information

The Fisher information, denoted  , for an estimator of the rate parameter   is given as:

 

Plugging in the distribution and solving gives:

 

This determines the amount of information each independent sample of an exponential distribution carries about the unknown rate parameter  .

Confidence intervals

The 100(1 − α)% confidence interval for the rate parameter of an exponential distribution is given by:[9]

 
which is also equal to:
 
where χ2
p,v
is the 100(p) percentile of the chi squared distribution with v degrees of freedom, n is the number of observations of inter-arrival times in the sample, and x-bar is the sample average. A simple approximation to the exact interval endpoints can be derived using a normal approximation to the χ2
p,v
distribution. This approximation gives the following values for a 95% confidence interval:
 

This approximation may be acceptable for samples containing at least 15 to 20 elements.[10]

Bayesian inference

The conjugate prior for the exponential distribution is the gamma distribution (of which the exponential distribution is a special case). The following parameterization of the gamma probability density function is useful:

 

The posterior distribution p can then be expressed in terms of the likelihood function defined above and a gamma prior:

 

Now the posterior density p has been specified up to a missing normalizing constant. Since it has the form of a gamma pdf, this can easily be filled in, and one obtains:

 

Here the hyperparameter α can be interpreted as the number of prior observations, and β as the sum of the prior observations. The posterior mean here is:

 

Occurrence and applications

Occurrence of events

The exponential distribution occurs naturally when describing the lengths of the inter-arrival times in a homogeneous Poisson process.

The exponential distribution may be viewed as a continuous counterpart of the geometric distribution, which describes the number of Bernoulli trials necessary for a discrete process to change state. In contrast, the exponential distribution describes the time for a continuous process to change state.

In real-world scenarios, the assumption of a constant rate (or probability per unit time) is rarely satisfied. For example, the rate of incoming phone calls differs according to the time of day. But if we focus on a time interval during which the rate is roughly constant, such as from 2 to 4 p.m. during work days, the exponential distribution can be used as a good approximate model for the time until the next phone call arrives. Similar caveats apply to the following examples which yield approximately exponentially distributed variables:

  • The time until a radioactive particle decays, or the time between clicks of a Geiger counter
  • The time between receiving one telephone call and the next
  • The time until default (on payment to company debt holders) in reduced-form credit risk modeling

Exponential variables can also be used to model situations where certain events occur with a constant probability per unit length, such as the distance between mutations on a DNA strand, or between roadkills on a given road.

In queuing theory, the service times of agents in a system (e.g. how long it takes for a bank teller etc. to serve a customer) are often modeled as exponentially distributed variables. (The arrival of customers for instance is also modeled by the Poisson distribution if the arrivals are independent and distributed identically.) The length of a process that can be thought of as a sequence of several independent tasks follows the Erlang distribution (which is the distribution of the sum of several independent exponentially distributed variables). Reliability theory and reliability engineering also make extensive use of the exponential distribution. Because of the memoryless property of this distribution, it is well-suited to model the constant hazard rate portion of the bathtub curve used in reliability theory. It is also very convenient because it is so easy to add failure rates in a reliability model. The exponential distribution is however not appropriate to model the overall lifetime of organisms or technical devices, because the "failure rates" here are not constant: more failures occur for very young and for very old systems.

 
Fitted cumulative exponential distribution to annually maximum 1-day rainfalls using CumFreq[11]

In physics, if you observe a gas at a fixed temperature and pressure in a uniform gravitational field, the heights of the various molecules also follow an approximate exponential distribution, known as the Barometric formula. This is a consequence of the entropy property mentioned below.

In hydrology, the exponential distribution is used to analyze extreme values of such variables as monthly and annual maximum values of daily rainfall and river discharge volumes.[12]

The blue picture illustrates an example of fitting the exponential distribution to ranked annually maximum one-day rainfalls showing also the 90% confidence belt based on the binomial distribution. The rainfall data are represented by plotting positions as part of the cumulative frequency analysis.

In operating-rooms management, the distribution of surgery duration for a category of surgeries with no typical work-content (like in an emergency room, encompassing all types of surgeries).

Prediction

Having observed a sample of n data points from an unknown exponential distribution a common task is to use these samples to make predictions about future data from the same source. A common predictive distribution over future samples is the so-called plug-in distribution, formed by plugging a suitable estimate for the rate parameter λ into the exponential density function. A common choice of estimate is the one provided by the principle of maximum likelihood, and using this yields the predictive density over a future sample xn+1, conditioned on the observed samples x = (x1, ..., xn) given by

 

The Bayesian approach provides a predictive distribution which takes into account the uncertainty of the estimated parameter, although this may depend crucially on the choice of prior.

A predictive distribution free of the issues of choosing priors that arise under the subjective Bayesian approach is

 

which can be considered as

  1. a frequentist confidence distribution, obtained from the distribution of the pivotal quantity  ;[13]
  2. a profile predictive likelihood, obtained by eliminating the parameter λ from the joint likelihood of xn+1 and λ by maximization;[14]
  3. an objective Bayesian predictive posterior distribution, obtained using the non-informative Jeffreys prior 1/λ;
  4. the Conditional Normalized Maximum Likelihood (CNML) predictive distribution, from information theoretic considerations.[15]

The accuracy of a predictive distribution may be measured using the distance or divergence between the true exponential distribution with rate parameter, λ0, and the predictive distribution based on the sample x. The Kullback–Leibler divergence is a commonly used, parameterisation free measure of the difference between two distributions. Letting Δ(λ0||p) denote the Kullback–Leibler divergence between an exponential with rate parameter λ0 and a predictive distribution p it can be shown that

 

where the expectation is taken with respect to the exponential distribution with rate parameter λ0 ∈ (0, ∞), and ψ( · ) is the digamma function. It is clear that the CNML predictive distribution is strictly superior to the maximum likelihood plug-in distribution in terms of average Kullback–Leibler divergence for all sample sizes n > 0.

Random variate generation

A conceptually very simple method for generating exponential variates is based on inverse transform sampling: Given a random variate U drawn from the uniform distribution on the unit interval (0, 1), the variate

 

has an exponential distribution, where F−1 is the quantile function, defined by

 

Moreover, if U is uniform on (0, 1), then so is 1 − U. This means one can generate exponential variates as follows:

 

Other methods for generating exponential variates are discussed by Knuth[16] and Devroye.[17]

A fast method for generating a set of ready-ordered exponential variates without using a sorting routine is also available.[17]

See also

References

  1. ^ a b Norton, Matthew; Khokhlov, Valentyn; Uryasev, Stan (2019). (PDF). Annals of Operations Research. 299 (1–2). Springer: 1281–1315. doi:10.1007/s10479-019-03373-1. Archived from the original (PDF) on 2023-03-31. Retrieved 2023-02-27.
  2. ^ Park, Sung Y.; Bera, Anil K. (2009). (PDF). Journal of Econometrics. 150 (2). Elsevier: 219–230. doi:10.1016/j.jeconom.2008.12.014. Archived from the original (PDF) on 2016-03-07. Retrieved 2011-06-02.
  3. ^ Michael, Lugo. (PDF). Archived from the original (PDF) on 20 December 2016. Retrieved 13 December 2016.
  4. ^ Eckford, Andrew W.; Thomas, Peter J. (2016). "Entropy of the sum of two independent, non-identically-distributed exponential random variables". arXiv:1609.02911 [cs.IT].
  5. ^ Ibe, Oliver C. (2014). Fundamentals of Applied Probability and Random Processes (2nd ed.). Academic Press. p. 128. ISBN 9780128010358.
  6. ^ Richard Arnold Johnson; Dean W. Wichern (2007). Applied Multivariate Statistical Analysis. Pearson Prentice Hall. ISBN 978-0-13-187715-3. Retrieved 10 August 2012.
  7. ^ NIST/SEMATECH e-Handbook of Statistical Methods
  8. ^ Elfessi, Abdulaziz; Reineke, David M. (2001). "A Bayesian Look at Classical Estimation: The Exponential Distribution". Journal of Statistics Education. 9 (1). doi:10.1080/10691898.2001.11910648.
  9. ^ Ross, Sheldon M. (2009). Introduction to probability and statistics for engineers and scientists (4th ed.). Associated Press. p. 267. ISBN 978-0-12-370483-2.
  10. ^ Guerriero, V. (2012). "Power Law Distribution: Method of Multi-scale Inferential Statistics". Journal of Modern Mathematics Frontier. 1: 21–28.
  11. ^ "Cumfreq, a free computer program for cumulative frequency analysis".
  12. ^ Ritzema, H.P., ed. (1994). Frequency and Regression Analysis. Chapter 6 in: Drainage Principles and Applications, Publication 16, International Institute for Land Reclamation and Improvement (ILRI), Wageningen, The Netherlands. pp. 175–224. ISBN 90-70754-33-9.
  13. ^ Lawless, J. F.; Fredette, M. (2005). "Frequentist predictions intervals and predictive distributions". Biometrika. 92 (3): 529–542. doi:10.1093/biomet/92.3.529.
  14. ^ Bjornstad, J.F. (1990). "Predictive Likelihood: A Review". Statist. Sci. 5 (2): 242–254. doi:10.1214/ss/1177012175.
  15. ^ D. F. Schmidt and E. Makalic, "Universal Models for the Exponential Distribution", IEEE Transactions on Information Theory, Volume 55, Number 7, pp. 3087–3090, 2009 doi:10.1109/TIT.2009.2018331
  16. ^ Donald E. Knuth (1998). The Art of Computer Programming, volume 2: Seminumerical Algorithms, 3rd edn. Boston: Addison–Wesley. ISBN 0-201-89684-2. See section 3.4.1, p. 133.
  17. ^ a b Luc Devroye (1986). Non-Uniform Random Variate Generation. New York: Springer-Verlag. ISBN 0-387-96305-7. See chapter IX, section 2, pp. 392–401.

External links

exponential, distribution, confused, with, exponential, family, probability, distributions, probability, theory, statistics, exponential, distribution, negative, exponential, distribution, probability, distribution, distance, between, events, poisson, point, p. Not to be confused with the exponential family of probability distributions In probability theory and statistics the exponential distribution or negative exponential distribution is the probability distribution of the distance between events in a Poisson point process i e a process in which events occur continuously and independently at a constant average rate the distance parameter could be any meaningful mono dimensional measure of the process such as time between production errors or length along a roll of fabric in the weaving manufacturing process It is a particular case of the gamma distribution It is the continuous analogue of the geometric distribution and it has the key property of being memoryless In addition to being used for the analysis of Poisson point processes it is found in various other contexts ExponentialProbability density functionCumulative distribution functionParametersl gt 0 displaystyle lambda gt 0 rate or inverse scaleSupportx 0 displaystyle x in 0 infty PDFl e l x displaystyle lambda e lambda x CDF1 e l x displaystyle 1 e lambda x Quantile ln 1 p l displaystyle frac ln 1 p lambda Mean1 l displaystyle frac 1 lambda Medianln 2 l displaystyle frac ln 2 lambda Mode0 displaystyle 0 Variance1 l 2 displaystyle frac 1 lambda 2 Skewness2 displaystyle 2 Excess kurtosis6 displaystyle 6 Entropy1 ln l displaystyle 1 ln lambda MGFl l t for t lt l displaystyle frac lambda lambda t text for t lt lambda CFl l i t displaystyle frac lambda lambda it Fisher information1 l 2 displaystyle frac 1 lambda 2 Kullback Leibler divergenceln l 0 l l l 0 1 displaystyle ln frac lambda 0 lambda frac lambda lambda 0 1 Expected shortfall ln 1 p 1 l displaystyle frac ln 1 p 1 lambda The exponential distribution is not the same as the class of exponential families of distributions This is a large class of probability distributions that includes the exponential distribution as one of its members but also includes many other distributions like the normal binomial gamma and Poisson distributions Contents 1 Definitions 1 1 Probability density function 1 2 Cumulative distribution function 1 3 Alternative parametrization 2 Properties 2 1 Mean variance moments and median 2 2 Memorylessness property of exponential random variable 2 3 Quantiles 2 4 Conditional Value at Risk Expected Shortfall 2 5 Buffered Probability of Exceedance bPOE 2 6 Kullback Leibler divergence 2 7 Maximum entropy distribution 2 8 Distribution of the minimum of exponential random variables 2 9 Joint moments of i i d exponential order statistics 2 10 Sum of two independent exponential random variables 3 Related distributions 4 Statistical inference 4 1 Parameter estimation 4 2 Fisher information 4 3 Confidence intervals 4 4 Bayesian inference 5 Occurrence and applications 5 1 Occurrence of events 5 2 Prediction 6 Random variate generation 7 See also 8 References 9 External linksDefinitionsProbability density function The probability density function pdf of an exponential distribution is f x l l e l x x 0 0 x lt 0 displaystyle f x lambda begin cases lambda e lambda x amp x geq 0 0 amp x lt 0 end cases nbsp Here l gt 0 is the parameter of the distribution often called the rate parameter The distribution is supported on the interval 0 If a random variable X has this distribution we write X Exp l The exponential distribution exhibits infinite divisibility Cumulative distribution function The cumulative distribution function is given by F x l 1 e l x x 0 0 x lt 0 displaystyle F x lambda begin cases 1 e lambda x amp x geq 0 0 amp x lt 0 end cases nbsp Alternative parametrization The exponential distribution is sometimes parametrized in terms of the scale parameter b 1 l which is also the mean f x b 1 b e x b x 0 0 x lt 0 F x b 1 e x b x 0 0 x lt 0 displaystyle f x beta begin cases frac 1 beta e x beta amp x geq 0 0 amp x lt 0 end cases qquad qquad F x beta begin cases 1 e x beta amp x geq 0 0 amp x lt 0 end cases nbsp PropertiesMean variance moments and median nbsp The mean is the probability mass centre that is the first moment nbsp The median is the preimage F 1 1 2 The mean or expected value of an exponentially distributed random variable X with rate parameter l is given byE X 1 l displaystyle operatorname E X frac 1 lambda nbsp In light of the examples given below this makes sense a person who receives an average of two telephone calls per hour can expect that the time between consecutive calls will be 0 5 hour or 30 minutes The variance of X is given byVar X 1 l 2 displaystyle operatorname Var X frac 1 lambda 2 nbsp so the standard deviation is equal to the mean The moments of X for n N displaystyle n in mathbb N nbsp are given byE X n n l n displaystyle operatorname E left X n right frac n lambda n nbsp The central moments of X for n N displaystyle n in mathbb N nbsp are given bym n n l n n l n k 0 n 1 k k displaystyle mu n frac n lambda n frac n lambda n sum k 0 n frac 1 k k nbsp where n is the subfactorial of n The median of X is given bym X ln 2 l lt E X displaystyle operatorname m X frac ln 2 lambda lt operatorname E X nbsp where ln refers to the natural logarithm Thus the absolute difference between the mean and median is E X m X 1 ln 2 l lt 1 l s X displaystyle left operatorname E left X right operatorname m left X right right frac 1 ln 2 lambda lt frac 1 lambda operatorname sigma X nbsp in accordance with the median mean inequality Memorylessness property of exponential random variable An exponentially distributed random variable T obeys the relationPr T gt s t T gt s Pr T gt t s t 0 displaystyle Pr left T gt s t mid T gt s right Pr T gt t qquad forall s t geq 0 nbsp This can be seen by considering the complementary cumulative distribution function Pr T gt s t T gt s Pr T gt s t T gt s Pr T gt s Pr T gt s t Pr T gt s e l s t e l s e l t Pr T gt t displaystyle begin aligned Pr left T gt s t mid T gt s right amp frac Pr left T gt s t cap T gt s right Pr left T gt s right 4pt amp frac Pr left T gt s t right Pr left T gt s right 4pt amp frac e lambda s t e lambda s 4pt amp e lambda t 4pt amp Pr T gt t end aligned nbsp When T is interpreted as the waiting time for an event to occur relative to some initial time this relation implies that if T is conditioned on a failure to observe the event over some initial period of time s the distribution of the remaining waiting time is the same as the original unconditional distribution For example if an event has not occurred after 30 seconds the conditional probability that occurrence will take at least 10 more seconds is equal to the unconditional probability of observing the event more than 10 seconds after the initial time The exponential distribution and the geometric distribution are the only memoryless probability distributions The exponential distribution is consequently also necessarily the only continuous probability distribution that has a constant failure rate Quantiles nbsp Tukey criteria for anomalies citation needed The quantile function inverse cumulative distribution function for Exp l isF 1 p l ln 1 p l 0 p lt 1 displaystyle F 1 p lambda frac ln 1 p lambda qquad 0 leq p lt 1 nbsp The quartiles are therefore first quartile ln 4 3 l median ln 2 l third quartile ln 4 l And as a consequence the interquartile range is ln 3 l Conditional Value at Risk Expected Shortfall The conditional value at risk CVaR also known as the expected shortfall or superquantile for Exp l is derived as follows 1 q a X 1 1 a a 1 q p X d p 1 1 a a 1 ln 1 p l d p 1 l 1 a 1 a 0 ln y d y 1 l 1 a 0 1 a ln y d y 1 l 1 a 1 a ln 1 a 1 a ln 1 a 1 l displaystyle begin aligned bar q alpha X amp frac 1 1 alpha int alpha 1 q p X dp amp frac 1 1 alpha int alpha 1 frac ln 1 p lambda dp amp frac 1 lambda 1 alpha int 1 alpha 0 ln y dy amp frac 1 lambda 1 alpha int 0 1 alpha ln y dy amp frac 1 lambda 1 alpha 1 alpha ln 1 alpha 1 alpha amp frac ln 1 alpha 1 lambda end aligned nbsp Buffered Probability of Exceedance bPOE Main article Buffered probability of exceedance The buffered probability of exceedance is one minus the probability level at which the CVaR equals the threshold x displaystyle x nbsp It is derived as follows 1 p x X 1 a q a X x 1 a ln 1 a 1 l x 1 a ln 1 a 1 l x 1 a e ln 1 a e 1 l x 1 a 1 a e 1 l x e 1 l x displaystyle begin aligned bar p x X amp 1 alpha bar q alpha X x amp 1 alpha frac ln 1 alpha 1 lambda x amp 1 alpha ln 1 alpha 1 lambda x amp 1 alpha e ln 1 alpha e 1 lambda x 1 alpha 1 alpha e 1 lambda x e 1 lambda x end aligned nbsp Kullback Leibler divergence The directed Kullback Leibler divergence in nats of e l displaystyle e lambda nbsp approximating distribution from e l 0 displaystyle e lambda 0 nbsp true distribution is given byD l 0 l E l 0 log p l 0 x p l x E l 0 log l 0 e l 0 x l e l x log l 0 log l l 0 l E l 0 x log l 0 log l l l 0 1 displaystyle begin aligned Delta lambda 0 parallel lambda amp mathbb E lambda 0 left log frac p lambda 0 x p lambda x right amp mathbb E lambda 0 left log frac lambda 0 e lambda 0 x lambda e lambda x right amp log lambda 0 log lambda lambda 0 lambda E lambda 0 x amp log lambda 0 log lambda frac lambda lambda 0 1 end aligned nbsp Maximum entropy distribution Among all continuous probability distributions with support 0 and mean m the exponential distribution with l 1 m has the largest differential entropy In other words it is the maximum entropy probability distribution for a random variate X which is greater than or equal to zero and for which E X is fixed 2 Distribution of the minimum of exponential random variables Let X1 Xn be independent exponentially distributed random variables with rate parameters l1 ln Thenmin X 1 X n displaystyle min left X 1 dotsc X n right nbsp is also exponentially distributed with parameter l l 1 l n displaystyle lambda lambda 1 dotsb lambda n nbsp This can be seen by considering the complementary cumulative distribution function Pr min X 1 X n gt x Pr X 1 gt x X n gt x i 1 n Pr X i gt x i 1 n exp x l i exp x i 1 n l i displaystyle begin aligned amp Pr left min X 1 dotsc X n gt x right amp Pr left X 1 gt x dotsc X n gt x right amp prod i 1 n Pr left X i gt x right amp prod i 1 n exp left x lambda i right exp left x sum i 1 n lambda i right end aligned nbsp The index of the variable which achieves the minimum is distributed according to the categorical distributionPr X k min X 1 X n l k l 1 l n displaystyle Pr left X k min X 1 dotsc X n right frac lambda k lambda 1 dotsb lambda n nbsp A proof can be seen by letting I argmin i 1 n X 1 X n displaystyle I operatorname argmin i in 1 dotsb n X 1 dotsc X n nbsp Then Pr I k 0 Pr X k x Pr i k X i gt x d x 0 l k e l k x i 1 i k n e l i x d x l k 0 e l 1 l n x d x l k l 1 l n displaystyle begin aligned Pr I k amp int 0 infty Pr X k x Pr forall i neq k X i gt x dx amp int 0 infty lambda k e lambda k x left prod i 1 i neq k n e lambda i x right dx amp lambda k int 0 infty e left lambda 1 dotsb lambda n right x dx amp frac lambda k lambda 1 dotsb lambda n end aligned nbsp Note thatmax X 1 X n displaystyle max X 1 dotsc X n nbsp is not exponentially distributed if X1 Xn do not all have parameter 0 3 Joint moments of i i d exponential order statistics Let X 1 X n displaystyle X 1 dotsc X n nbsp be n displaystyle n nbsp independent and identically distributed exponential random variables with rate parameter l Let X 1 X n displaystyle X 1 dotsc X n nbsp denote the corresponding order statistics For i lt j displaystyle i lt j nbsp the joint moment E X i X j displaystyle operatorname E left X i X j right nbsp of the order statistics X i displaystyle X i nbsp and X j displaystyle X j nbsp is given byE X i X j k 0 j 1 1 n k l E X i E X i 2 k 0 j 1 1 n k l k 0 i 1 1 n k l k 0 i 1 1 n k l 2 k 0 i 1 1 n k l 2 displaystyle begin aligned operatorname E left X i X j right amp sum k 0 j 1 frac 1 n k lambda operatorname E left X i right operatorname E left X i 2 right amp sum k 0 j 1 frac 1 n k lambda sum k 0 i 1 frac 1 n k lambda sum k 0 i 1 frac 1 n k lambda 2 left sum k 0 i 1 frac 1 n k lambda right 2 end aligned nbsp This can be seen by invoking the law of total expectation and the memoryless property E X i X j 0 E X i X j X i x f X i x d x x 0 x E X j X j x f X i x d x since X i x X j x x 0 x E X j x f X i x d x by the memoryless property k 0 j 1 1 n k l E X i E X i 2 displaystyle begin aligned operatorname E left X i X j right amp int 0 infty operatorname E left X i X j mid X i x right f X i x dx amp int x 0 infty x operatorname E left X j mid X j geq x right f X i x dx amp amp left textrm since X i x implies X j geq x right amp int x 0 infty x left operatorname E left X j right x right f X i x dx amp amp left text by the memoryless property right amp sum k 0 j 1 frac 1 n k lambda operatorname E left X i right operatorname E left X i 2 right end aligned nbsp The first equation follows from the law of total expectation The second equation exploits the fact that once we condition on X i x displaystyle X i x nbsp it must follow that X j x displaystyle X j geq x nbsp The third equation relies on the memoryless property to replace E X j X j x displaystyle operatorname E left X j mid X j geq x right nbsp with E X j x displaystyle operatorname E left X j right x nbsp Sum of two independent exponential random variables The probability distribution function PDF of a sum of two independent random variables is the convolution of their individual PDFs If X 1 displaystyle X 1 nbsp and X 2 displaystyle X 2 nbsp are independent exponential random variables with respective rate parameters l 1 displaystyle lambda 1 nbsp and l 2 displaystyle lambda 2 nbsp then the probability density of Z X 1 X 2 displaystyle Z X 1 X 2 nbsp is given byf Z z f X 1 x 1 f X 2 z x 1 d x 1 0 z l 1 e l 1 x 1 l 2 e l 2 z x 1 d x 1 l 1 l 2 e l 2 z 0 z e l 2 l 1 x 1 d x 1 l 1 l 2 l 2 l 1 e l 1 z e l 2 z if l 1 l 2 l 2 z e l z if l 1 l 2 l displaystyle begin aligned f Z z amp int infty infty f X 1 x 1 f X 2 z x 1 dx 1 amp int 0 z lambda 1 e lambda 1 x 1 lambda 2 e lambda 2 z x 1 dx 1 amp lambda 1 lambda 2 e lambda 2 z int 0 z e lambda 2 lambda 1 x 1 dx 1 amp begin cases dfrac lambda 1 lambda 2 lambda 2 lambda 1 left e lambda 1 z e lambda 2 z right amp text if lambda 1 neq lambda 2 4pt lambda 2 ze lambda z amp text if lambda 1 lambda 2 lambda end cases end aligned nbsp The entropy of this distribution is available in closed form assuming l 1 gt l 2 displaystyle lambda 1 gt lambda 2 nbsp without loss of generality then H Z 1 g ln l 1 l 2 l 1 l 2 ps l 1 l 1 l 2 displaystyle begin aligned H Z amp 1 gamma ln left frac lambda 1 lambda 2 lambda 1 lambda 2 right psi left frac lambda 1 lambda 1 lambda 2 right end aligned nbsp where g displaystyle gamma nbsp is the Euler Mascheroni constant and ps displaystyle psi cdot nbsp is the digamma function 4 In the case of equal rate parameters the result is an Erlang distribution with shape 2 and parameter l displaystyle lambda nbsp which in turn is a special case of gamma distribution The sum of n independent Exp l exponential random variables is Gamma n l gamma distributed Related distributionsThis section includes a list of general references but it lacks sufficient corresponding inline citations Please help to improve this section by introducing more precise citations March 2011 Learn how and when to remove this template message If X Laplace m b 1 then X m Exp b If X Pareto 1 l then log X Exp l If X SkewLogistic 8 then log 1 e X Exp 8 displaystyle log left 1 e X right sim operatorname Exp theta nbsp If Xi U 0 1 then lim n n min X 1 X n Exp 1 displaystyle lim n to infty n min left X 1 ldots X n right sim operatorname Exp 1 nbsp The exponential distribution is a limit of a scaled beta distribution lim n n Beta 1 n Exp 1 displaystyle lim n to infty n operatorname Beta 1 n operatorname Exp 1 nbsp Exponential distribution is a special case of type 3 Pearson distribution If X Exp l and Xi Exp li then k X Exp l k displaystyle kX sim operatorname Exp left frac lambda k right nbsp closure under scaling by a positive factor 1 X BenktanderWeibull l 1 which reduces to a truncated exponential distribution keX Pareto k l e X Beta l 1 1 k eX PowerLaw k l X Rayleigh 1 2 l displaystyle sqrt X sim operatorname Rayleigh left frac 1 sqrt 2 lambda right nbsp the Rayleigh distribution X Weibull 1 l 1 displaystyle X sim operatorname Weibull left frac 1 lambda 1 right nbsp the Weibull distribution X 2 Weibull 1 l 2 1 2 displaystyle X 2 sim operatorname Weibull left frac 1 lambda 2 frac 1 2 right nbsp m b log lX Gumbel m b X Geometric 1 e l displaystyle lfloor X rfloor sim operatorname Geometric left 1 e lambda right nbsp a geometric distribution on 0 1 2 3 X Geometric 1 e l displaystyle lceil X rceil sim operatorname Geometric left 1 e lambda right nbsp a geometric distribution on 1 2 3 4 If also Y Erlang n l orY G n 1 l displaystyle Y sim Gamma left n frac 1 lambda right nbsp then X Y 1 Pareto 1 n displaystyle frac X Y 1 sim operatorname Pareto 1 n nbsp If also l Gamma k 8 shape scale parametrisation then the marginal distribution of X is Lomax k 1 8 the gamma mixture l1X1 l2Y2 Laplace 0 1 min X1 Xn Exp l1 ln If also li l then X 1 X k i X i displaystyle X 1 cdots X k sum i X i sim nbsp Erlang k l Gamma k l 1 Gamma k l in k 8 and a b parametrization respectively with an integer shape parameter k 5 If T X 1 X n i 1 n X i displaystyle T X 1 cdots X n sum i 1 n X i nbsp then 2 l T x 2 n 2 displaystyle 2 lambda T sim chi 2n 2 nbsp Xi Xj Laplace 0 l 1 If also Xi are independent then X i X i X j displaystyle frac X i X i X j nbsp U 0 1 Z l i X i l j X j displaystyle Z frac lambda i X i lambda j X j nbsp has probability density function f Z z 1 z 1 2 displaystyle f Z z frac 1 z 1 2 nbsp This can be used to obtain a confidence interval for l i l j displaystyle frac lambda i lambda j nbsp If also l 1 m b log e X 1 e X Logistic m b displaystyle mu beta log left frac e X 1 e X right sim operatorname Logistic mu beta nbsp the logistic distribution m b log X i X j Logistic m b displaystyle mu beta log left frac X i X j right sim operatorname Logistic mu beta nbsp m s log X GEV m s 0 Further if Y G a b a displaystyle Y sim Gamma left alpha frac beta alpha right nbsp then X Y K a b displaystyle sqrt XY sim operatorname K alpha beta nbsp K distribution If also l 1 2 then X x22 i e X has a chi squared distribution with 2 degrees of freedom Hence Exp l 1 2 l Exp 1 2 1 2 l x 2 2 i 1 n Exp l 1 2 l x 2 n 2 displaystyle operatorname Exp lambda frac 1 2 lambda operatorname Exp left frac 1 2 right sim frac 1 2 lambda chi 2 2 Rightarrow sum i 1 n operatorname Exp lambda sim frac 1 2 lambda chi 2n 2 nbsp If X Exp 1 l displaystyle X sim operatorname Exp left frac 1 lambda right nbsp and Y X displaystyle Y mid X nbsp Poisson X then Y Geometric 1 1 l displaystyle Y sim operatorname Geometric left frac 1 1 lambda right nbsp geometric distribution The Hoyt distribution can be obtained from exponential distribution and arcsine distribution The exponential distribution is a limit of the k exponential distribution in the k 0 displaystyle kappa 0 nbsp case Exponential distribution is a limit of the k Generalized Gamma distribution in the a 1 displaystyle alpha 1 nbsp and n 1 displaystyle nu 1 nbsp cases lim a n 0 1 p k x 1 k n 2 k n G 1 2 k n 2 G 1 2 k n 2 a l n G n x a n 1 exp k l x a l e l x displaystyle lim alpha nu to 0 1 p kappa x 1 kappa nu 2 kappa nu frac Gamma Big frac 1 2 kappa frac nu 2 Big Gamma Big frac 1 2 kappa frac nu 2 Big frac alpha lambda nu Gamma nu x alpha nu 1 exp kappa lambda x alpha lambda e lambda x nbsp Other related distributions Hyper exponential distribution the distribution whose density is a weighted sum of exponential densities Hypoexponential distribution the distribution of a general sum of exponential random variables exGaussian distribution the sum of an exponential distribution and a normal distribution Statistical inferenceBelow suppose random variable X is exponentially distributed with rate parameter l and x 1 x n displaystyle x 1 dotsc x n nbsp are n independent samples from X with sample mean x displaystyle bar x nbsp Parameter estimation The maximum likelihood estimator for l is constructed as follows The likelihood function for l given an independent and identically distributed sample x x1 xn drawn from the variable is L l i 1 n l exp l x i l n exp l i 1 n x i l n exp l n x displaystyle L lambda prod i 1 n lambda exp lambda x i lambda n exp left lambda sum i 1 n x i right lambda n exp left lambda n overline x right nbsp where x 1 n i 1 n x i displaystyle overline x frac 1 n sum i 1 n x i nbsp is the sample mean The derivative of the likelihood function s logarithm is d d l ln L l d d l n ln l l n x n l n x gt 0 0 lt l lt 1 x 0 l 1 x lt 0 l gt 1 x displaystyle frac d d lambda ln L lambda frac d d lambda left n ln lambda lambda n overline x right frac n lambda n overline x begin cases gt 0 amp 0 lt lambda lt frac 1 overline x 8pt 0 amp lambda frac 1 overline x 8pt lt 0 amp lambda gt frac 1 overline x end cases nbsp Consequently the maximum likelihood estimate for the rate parameter is l mle 1 x n i x i displaystyle widehat lambda text mle frac 1 overline x frac n sum i x i nbsp This is not an unbiased estimator of l displaystyle lambda nbsp although x displaystyle overline x nbsp is an unbiased 6 MLE 7 estimator of 1 l displaystyle 1 lambda nbsp and the distribution mean The bias of l mle displaystyle widehat lambda text mle nbsp is equal toB E l mle l l n 1 displaystyle B equiv operatorname E left left widehat lambda text mle lambda right right frac lambda n 1 nbsp which yields the bias corrected maximum likelihood estimator l mle l mle B displaystyle widehat lambda text mle widehat lambda text mle B nbsp An approximate minimizer of mean squared error see also bias variance tradeoff can be found assuming a sample size greater than two with a correction factor to the MLE l n 2 n 1 x n 2 i x i displaystyle widehat lambda left frac n 2 n right left frac 1 bar x right frac n 2 sum i x i nbsp This is derived from the mean and variance of the inverse gamma distribution Inv Gamma n l textstyle mbox Inv Gamma n lambda nbsp 8 Fisher information The Fisher information denoted I l displaystyle mathcal I lambda nbsp for an estimator of the rate parameter l displaystyle lambda nbsp is given as I l E l log f x l 2 l l log f x l 2 f x l d x displaystyle mathcal I lambda operatorname E left left left frac partial partial lambda log f x lambda right 2 right lambda right int left frac partial partial lambda log f x lambda right 2 f x lambda dx nbsp Plugging in the distribution and solving gives I l 0 l log l e l x 2 l e l x d x 0 1 l x 2 l e l x d x l 2 displaystyle mathcal I lambda int 0 infty left frac partial partial lambda log lambda e lambda x right 2 lambda e lambda x dx int 0 infty left frac 1 lambda x right 2 lambda e lambda x dx lambda 2 nbsp This determines the amount of information each independent sample of an exponential distribution carries about the unknown rate parameter l displaystyle lambda nbsp Confidence intervals The 100 1 a confidence interval for the rate parameter of an exponential distribution is given by 9 2 n l x a 2 2 n 2 lt 1 l lt 2 n l x 1 a 2 2 n 2 displaystyle frac 2n widehat lambda chi frac alpha 2 2n 2 lt frac 1 lambda lt frac 2n widehat lambda chi 1 frac alpha 2 2n 2 nbsp which is also equal to 2 n x x a 2 2 n 2 lt 1 l lt 2 n x x 1 a 2 2 n 2 displaystyle frac 2n overline x chi frac alpha 2 2n 2 lt frac 1 lambda lt frac 2n overline x chi 1 frac alpha 2 2n 2 nbsp where x2p v is the 100 p percentile of the chi squared distribution with v degrees of freedom n is the number of observations of inter arrival times in the sample and x bar is the sample average A simple approximation to the exact interval endpoints can be derived using a normal approximation to the x2p v distribution This approximation gives the following values for a 95 confidence interval l lower l 1 1 96 n l upper l 1 1 96 n displaystyle begin aligned lambda text lower amp widehat lambda left 1 frac 1 96 sqrt n right lambda text upper amp widehat lambda left 1 frac 1 96 sqrt n right end aligned nbsp This approximation may be acceptable for samples containing at least 15 to 20 elements 10 Bayesian inference The conjugate prior for the exponential distribution is the gamma distribution of which the exponential distribution is a special case The following parameterization of the gamma probability density function is useful Gamma l a b b a G a l a 1 exp l b displaystyle operatorname Gamma lambda alpha beta frac beta alpha Gamma alpha lambda alpha 1 exp lambda beta nbsp The posterior distribution p can then be expressed in terms of the likelihood function defined above and a gamma prior p l L l G l a b l n exp l n x b a G a l a 1 exp l b l a n 1 exp l b n x displaystyle begin aligned p lambda amp propto L lambda Gamma lambda alpha beta amp lambda n exp left lambda n overline x right frac beta alpha Gamma alpha lambda alpha 1 exp lambda beta amp propto lambda alpha n 1 exp lambda left beta n overline x right end aligned nbsp Now the posterior density p has been specified up to a missing normalizing constant Since it has the form of a gamma pdf this can easily be filled in and one obtains p l Gamma l a n b n x displaystyle p lambda operatorname Gamma lambda alpha n beta n overline x nbsp Here the hyperparameter a can be interpreted as the number of prior observations and b as the sum of the prior observations The posterior mean here is a n b n x displaystyle frac alpha n beta n overline x nbsp Occurrence and applicationsOccurrence of events The exponential distribution occurs naturally when describing the lengths of the inter arrival times in a homogeneous Poisson process The exponential distribution may be viewed as a continuous counterpart of the geometric distribution which describes the number of Bernoulli trials necessary for a discrete process to change state In contrast the exponential distribution describes the time for a continuous process to change state In real world scenarios the assumption of a constant rate or probability per unit time is rarely satisfied For example the rate of incoming phone calls differs according to the time of day But if we focus on a time interval during which the rate is roughly constant such as from 2 to 4 p m during work days the exponential distribution can be used as a good approximate model for the time until the next phone call arrives Similar caveats apply to the following examples which yield approximately exponentially distributed variables The time until a radioactive particle decays or the time between clicks of a Geiger counter The time between receiving one telephone call and the next The time until default on payment to company debt holders in reduced form credit risk modeling Exponential variables can also be used to model situations where certain events occur with a constant probability per unit length such as the distance between mutations on a DNA strand or between roadkills on a given road In queuing theory the service times of agents in a system e g how long it takes for a bank teller etc to serve a customer are often modeled as exponentially distributed variables The arrival of customers for instance is also modeled by the Poisson distribution if the arrivals are independent and distributed identically The length of a process that can be thought of as a sequence of several independent tasks follows the Erlang distribution which is the distribution of the sum of several independent exponentially distributed variables Reliability theory and reliability engineering also make extensive use of the exponential distribution Because of the memoryless property of this distribution it is well suited to model the constant hazard rate portion of the bathtub curve used in reliability theory It is also very convenient because it is so easy to add failure rates in a reliability model The exponential distribution is however not appropriate to model the overall lifetime of organisms or technical devices because the failure rates here are not constant more failures occur for very young and for very old systems nbsp Fitted cumulative exponential distribution to annually maximum 1 day rainfalls using CumFreq 11 In physics if you observe a gas at a fixed temperature and pressure in a uniform gravitational field the heights of the various molecules also follow an approximate exponential distribution known as the Barometric formula This is a consequence of the entropy property mentioned below In hydrology the exponential distribution is used to analyze extreme values of such variables as monthly and annual maximum values of daily rainfall and river discharge volumes 12 The blue picture illustrates an example of fitting the exponential distribution to ranked annually maximum one day rainfalls showing also the 90 confidence belt based on the binomial distribution The rainfall data are represented by plotting positions as part of the cumulative frequency analysis In operating rooms management the distribution of surgery duration for a category of surgeries with no typical work content like in an emergency room encompassing all types of surgeries Prediction Having observed a sample of n data points from an unknown exponential distribution a common task is to use these samples to make predictions about future data from the same source A common predictive distribution over future samples is the so called plug in distribution formed by plugging a suitable estimate for the rate parameter l into the exponential density function A common choice of estimate is the one provided by the principle of maximum likelihood and using this yields the predictive density over a future sample xn 1 conditioned on the observed samples x x1 xn given byp M L x n 1 x 1 x n 1 x exp x n 1 x displaystyle p rm ML x n 1 mid x 1 ldots x n left frac 1 overline x right exp left frac x n 1 overline x right nbsp The Bayesian approach provides a predictive distribution which takes into account the uncertainty of the estimated parameter although this may depend crucially on the choice of prior A predictive distribution free of the issues of choosing priors that arise under the subjective Bayesian approach isp C N M L x n 1 x 1 x n n n 1 x n n x x n 1 n 1 displaystyle p rm CNML x n 1 mid x 1 ldots x n frac n n 1 left overline x right n left n overline x x n 1 right n 1 nbsp which can be considered as a frequentist confidence distribution obtained from the distribution of the pivotal quantity x n 1 x displaystyle x n 1 overline x nbsp 13 a profile predictive likelihood obtained by eliminating the parameter l from the joint likelihood of xn 1 and l by maximization 14 an objective Bayesian predictive posterior distribution obtained using the non informative Jeffreys prior 1 l the Conditional Normalized Maximum Likelihood CNML predictive distribution from information theoretic considerations 15 The accuracy of a predictive distribution may be measured using the distance or divergence between the true exponential distribution with rate parameter l0 and the predictive distribution based on the sample x The Kullback Leibler divergence is a commonly used parameterisation free measure of the difference between two distributions Letting D l0 p denote the Kullback Leibler divergence between an exponential with rate parameter l0 and a predictive distribution p it can be shown thatE l 0 D l 0 p M L ps n 1 n 1 log n E l 0 D l 0 p C N M L ps n 1 n log n displaystyle begin aligned operatorname E lambda 0 left Delta lambda 0 parallel p rm ML right amp psi n frac 1 n 1 log n operatorname E lambda 0 left Delta lambda 0 parallel p rm CNML right amp psi n frac 1 n log n end aligned nbsp where the expectation is taken with respect to the exponential distribution with rate parameter l0 0 and ps is the digamma function It is clear that the CNML predictive distribution is strictly superior to the maximum likelihood plug in distribution in terms of average Kullback Leibler divergence for all sample sizes n gt 0 Random variate generationFurther information Non uniform random variate generation A conceptually very simple method for generating exponential variates is based on inverse transform sampling Given a random variate U drawn from the uniform distribution on the unit interval 0 1 the variateT F 1 U displaystyle T F 1 U nbsp has an exponential distribution where F 1 is the quantile function defined byF 1 p ln 1 p l displaystyle F 1 p frac ln 1 p lambda nbsp Moreover if U is uniform on 0 1 then so is 1 U This means one can generate exponential variates as follows T ln U l displaystyle T frac ln U lambda nbsp Other methods for generating exponential variates are discussed by Knuth 16 and Devroye 17 A fast method for generating a set of ready ordered exponential variates without using a sorting routine is also available 17 See alsoDead time an application of exponential distribution to particle detector analysis Laplace distribution or the double exponential distribution Relationships among probability distributions Marshall Olkin exponential distributionReferences 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 Archived from the original PDF on 2023 03 31 Retrieved 2023 02 27 Park Sung Y Bera Anil K 2009 Maximum entropy autoregressive conditional heteroskedasticity model PDF Journal of Econometrics 150 2 Elsevier 219 230 doi 10 1016 j jeconom 2008 12 014 Archived from the original PDF on 2016 03 07 Retrieved 2011 06 02 Michael Lugo The expectation of the maximum of exponentials PDF Archived from the original PDF on 20 December 2016 Retrieved 13 December 2016 Eckford Andrew W Thomas Peter J 2016 Entropy of the sum of two independent non identically distributed exponential random variables arXiv 1609 02911 cs IT Ibe Oliver C 2014 Fundamentals of Applied Probability and Random Processes 2nd ed Academic Press p 128 ISBN 9780128010358 Richard Arnold Johnson Dean W Wichern 2007 Applied Multivariate Statistical Analysis Pearson Prentice Hall ISBN 978 0 13 187715 3 Retrieved 10 August 2012 NIST SEMATECH e Handbook of Statistical Methods Elfessi Abdulaziz Reineke David M 2001 A Bayesian Look at Classical Estimation The Exponential Distribution Journal of Statistics Education 9 1 doi 10 1080 10691898 2001 11910648 Ross Sheldon M 2009 Introduction to probability and statistics for engineers and scientists 4th ed Associated Press p 267 ISBN 978 0 12 370483 2 Guerriero V 2012 Power Law Distribution Method of Multi scale Inferential Statistics Journal of Modern Mathematics Frontier 1 21 28 Cumfreq a free computer program for cumulative frequency analysis Ritzema H P ed 1994 Frequency and Regression Analysis Chapter 6 in Drainage Principles and Applications Publication 16 International Institute for Land Reclamation and Improvement ILRI Wageningen The Netherlands pp 175 224 ISBN 90 70754 33 9 Lawless J F Fredette M 2005 Frequentist predictions intervals and predictive distributions Biometrika 92 3 529 542 doi 10 1093 biomet 92 3 529 Bjornstad J F 1990 Predictive Likelihood A Review Statist Sci 5 2 242 254 doi 10 1214 ss 1177012175 D F Schmidt and E Makalic Universal Models for the Exponential Distribution IEEE Transactions on Information Theory Volume 55 Number 7 pp 3087 3090 2009 doi 10 1109 TIT 2009 2018331 Donald E Knuth 1998 The Art of Computer Programming volume 2 Seminumerical Algorithms 3rd edn Boston Addison Wesley ISBN 0 201 89684 2 See section 3 4 1 p 133 a b Luc Devroye 1986 Non Uniform Random Variate Generation New York Springer Verlag ISBN 0 387 96305 7 See chapter IX section 2 pp 392 401 External links Exponential distribution Encyclopedia of Mathematics EMS Press 2001 1994 Online calculator of Exponential Distribution Retrieved from https en wikipedia org w index php title Exponential distribution amp oldid 1218090986, wikipedia, wiki, book, books, library,

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