Exponential distribution: Difference between revisions

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The '''[[exponential distribution|exponential distribution]]''' is a class of [[continuous probability distribution|continuous probability distributions]].
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The '''[[exponential distribution|exponential distribution]]''' is any member of a class of [[continuous probability distribution|continuous probability distributions]] assigning probability


It's well suited to model lifetimes of things that don't "wear out",  among other things.   
: <math>e^{-x/\mu} \,</math>
 
to the interval <nowiki>[</nowiki>''x'',&nbsp;&infin;<nowiki>)</nowiki>, for ''x'' &ge; 0.
 
It is well suited to model lifetimes of things that don't "wear out",  among other things.   


The exponential distribution is one of the most important elementary distributions.
The exponential distribution is one of the most important elementary distributions.


==A basic introduction to the concept==
==A basic introduction to the concept==


The main and unique characteristic of the exponential distribution is that the [[conditional probability|conditional probabilities]] P(X>x+1 given X>x) stay constant for all values of x. 
The main and unique characteristic of the exponential distribution is that the [[conditional probability|conditional probabilities]] satisfy P(''X''&nbsp;>&nbsp;''x''&nbsp;+&nbsp;''s'' | ''X''&nbsp;>&nbsp;''x'') = P(''X''&nbsp;>&nbsp;''s'') for all ''x'', ''s'' &ge; 0.
 
More generally,  we have P(X>x+s given X>x)= P(X>s) for all x and s.
 
===Example===
A living person's final total length of life may be represented by a [[stochastic variable]] X.
 
A newborn will have a certain [[probability]] of seeing his 10th birthday, a 10 year old will have a certain probability of seeing his 20th birthday, and so on.  Regrettably, a 60 year old may count on a slightly smaller probability of seeing his 70th birthday,  and an octogenarian's chances of enjoying 10 more years may be smaller still.
 
So in the real world,  X is not exponentially distributed.  If it were,  all probabilities mentioned above would be identical.  


===Formal definition===
===Formal definition===
Let X be a real, positive stochastic variable with [[probability density function]] <math>f(x)= \lambda e^{-\lambda x}, \lambda \in <0, \infty>  </math>.
Let ''X'' be a real, positive stochastic variable with [[probability density function]]
Then X follows the exponential distribution with parameter <math>\lambda</math>.


: <math>f(x)= \lambda e^{-\lambda x}\,</math>


 
for ''x'' &ge; 0.  Then ''X'' follows the exponential distribution with parameter <math>\lambda</math>.
==References==


==See also==
==See also==
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*[[Poisson distribution]]
*[[Poisson distribution]]


==External links==
==References==
 
{{reflist}}
 
[[Category:Mathematics Workgroup]]

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The exponential distribution is any member of a class of continuous probability distributions assigning probability

to the interval [x, ∞), for x ≥ 0.

It is well suited to model lifetimes of things that don't "wear out", among other things.

The exponential distribution is one of the most important elementary distributions.

A basic introduction to the concept

The main and unique characteristic of the exponential distribution is that the conditional probabilities satisfy P(X > x + s | X > x) = P(X > s) for all x, s ≥ 0.

Formal definition

Let X be a real, positive stochastic variable with probability density function

for x ≥ 0. Then X follows the exponential distribution with parameter .

See also

Related topics

References