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Epanechnikov distribution

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Continuous probability distribution
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Epanechnikov
Parameters c > 0 {\displaystyle c>0} scale (real)
Support c x c {\displaystyle -c\leq x\leq c}
PDF 3 4 c max ( 0 , 1 ( x c ) 2 ) {\displaystyle {\frac {3}{4c}}\max \left(0,1-\left({\frac {x}{c}}\right)^{2}\right)}
CDF { 0 for  x c 1 2 + 3 x 4 c x 3 4 c 3 for  x ( c , c ) 1 for  x c {\displaystyle {\begin{cases}0&{\text{for }}x\leq -c\\{\frac {1}{2}}+{\frac {3x}{4c}}-{\frac {x^{3}}{4c^{3}}}&{\text{for }}x\in (-c,c)\\1&{\text{for }}x\geq c\end{cases}}}
Mean 0 {\displaystyle 0}
Median 0 {\displaystyle 0}
Mode 0 {\displaystyle 0}
Variance c 2 5 {\displaystyle {\frac {c^{2}}{5}}}
Skewness 0 {\displaystyle 0}
Excess kurtosis 6 7 {\displaystyle -{\frac {6}{7}}}


In probability theory and statistics, the Epanechnikov distribution, also known as the Epanechnikov kernel, is a continuous probability distribution that is defined on a finite interval. It is named after V. A. Epanechnikov, who introduced it in 1969 in the context of kernel density estimation.

Definition

A random variable has an Epanechnikov distribution if its probability density function is given by:

p ( x | c ) = 3 4 c max ( 0 , 1 ( x c ) 2 ) {\displaystyle p(x|c)={\frac {3}{4c}}\max \left(0,1-\left({\frac {x}{c}}\right)^{2}\right)}

where c > 0 {\displaystyle c>0} is a scale parameter. Setting c = 5 {\displaystyle c={\sqrt {5}}} yields a unit variance probability distribution.

Applications

The Epanechnikov distribution has applications in various fields, including:

Related distributions

  • The Epanechnikov distribution can be viewed as a special case of a Beta distribution that has been shifted and scaled along the x-axis.

References

  1. Epanechnikov, V. A. (January 1969). "Non-Parametric Estimation of a Multivariate Probability Density". Theory of Probability & Its Applications. 14 (1): 153–158. doi:10.1137/1114019.
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