- Shape parameter
In
probability theory andstatistics , a shape parameter is a kind ofnumerical parameter of a parametric family ofprobability distribution s. [Everitt B.S. (2002) Cambridge Dictionary of Statistics. 2nd Edition. CUP. ISBN 0-521-81099-x]Definition
A shape parameter is any parameter of a probability distribution that is neither a
location parameter nor ascale parameter (nor a function of either of both or these only, such as arate parameter ). Such a parameter must affect the "shape" of a distribution rather than simply shifting it (as a location parameter does) or stretching/shrinking it (as a scale parameter does).Examples
The following continuous probability distributions have a shape parameter:
*Beta distribution
*Burr distribution
*Erlang distribution
*Exponential power distribution
*Gamma distribution
*Generalized extreme value distribution
*Log-logistic distribution
*Inverse-gamma distribution
*Pareto distribution
*Pearson distribution
*Weibull distribution By contrast, the following continuous distributions do "not" have a shape parameter, so their shape is fixed and only their location or their scale or both can change. It follows that (where they exist) theskewness andkurtosis of these distribution are constants, as skewness and kurtosis are independent of location and scale parameters.
*Exponential distribution
*Cauchy distribution
*Logistic distribution
*Normal distribution
*Raised cosine distribution
*Uniform distribution
*Wigner semicircle distribution See also
*
skewness
*kurtosis References
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