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Exponential distributionIn probability theory and statistics, the exponential distribution is a continuous probability distribution.
Specification of the exponential distributionProbability density functionThe probability density function (pdf) of the Exponential(λ) distribution is for x ≥ 0 and where λ > 0 is a parameter of the distribution. Alternatively, the exponential distribution can be parameterized by a scale parameter μ = 1/λ, as follows: where μ > 0. Cumulative distribution functionThe cumulative distribution function is given by Quantile functionThe inverse cumulative distribution function is for 0 ≤ p < 1. OccurrenceThe exponential distribution is used to model Poisson processes, which are situations in which an object initially in state A can change to state B with constant probability per unit time λ. The time at which the state actually changes is described by an exponential random variable with parameter λ. Therefore, the integral from 0 to T over f is the probability that the object is in state B at time T. 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. Examples of variables that are approximately exponentially distributed are:
PropertiesMemorylessnessAn important property of the exponential distribution is that it is memoryless. This means that if a random variable T is exponentially distributed, its conditional probability obeys This says that the conditional probability that we need to wait, for example, more than another 10 seconds before the first arrival, given that the first arrival has not yet happened after 30 seconds, is no different from the initial probability that we need to wait more than 10 seconds for the first arrival. This is often misunderstood by students taking courses on probability: the fact that P(T > 40 | T > 30) = P(T > 10) does not mean that the events T > 40 and T > 10 are independent. To summarize: "memorylessness" of the probability distribution of the waiting time T until the first arrival means It does not mean (That would be independence. These two events are not independent.) QuartilesThe quartiles of an Exponential(λ) random variable are as follows:
Parameter estimationMaximum likelihoodThe likelihood function of an independent and identically distributed sample x = (x1, ..., xn) is where is the sample mean. The derivative of the likelihood function is Consequently the maximum likelihood estimate is
Bayesian inferenceThe 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 pdf 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 parameter α can be interpreted as the number of prior observations, and β as the sum of the prior observations. Generating exponential variatesGiven a random variate U drawn from the uniform distribution in the interval (0; 1], the variate has an exponential distribution with parameter λ. Applications of the exponential distributionReliability theory makes 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 . References
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