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Laplace Distribution
Statistics - Laplace Distribution
Laplace distribution represents the distribution of differences between two independent variables having identical exponential distributions. It is also called double exponential distribution.
![Laplace distribution](statisticsimageslaplace_distribution.jpg)
Probabipty density function
Probabipty density function of Laplace distribution is given as:
Formula
${ L(x | mu, b) = frac{1}{2b} e^{- frac{| x - mu |}{b}} }$ $ { = frac{1}{2b} } $ $ egin {cases} e^{- frac{x - mu}{b}}, & ext{if $x lt mu $} \[7pt] e^{- frac{mu - x}{b}}, & ext{if $x ge mu $} end{cases} $Where −
${mu}$ = location parameter.
${b}$ = scale parameter and is > 0.
${x}$ = random variable.
Cumulative distribution function
Cumulative distribution function of Laplace distribution is given as:
Formula
${ D(x) = int_{- infty}^x}$
$ = egin {cases} frac{1}{2}e^{frac{x - mu}{b}}, & ext{if $x lt mu $} \[7pt] 1- frac{1}{2}e^{- frac{x - mu}{b}}, & ext{if $x ge mu $} end{cases} $ $ { = frac{1}{2} + frac{1}{2}sgn(x - mu)(1 - e^{- frac{| x - mu |}{b}}) } $Where −
${mu}$ = location parameter.
${b}$ = scale parameter and is > 0.
${x}$ = random variable.