Wrapped exponential distribution
Probability density function The support is chosen to be [0,2π] | |||
Cumulative distribution function The support is chosen to be [0,2π] | |||
Parameters | |||
---|---|---|---|
Support | |||
CDF | |||
Mean | (circular) | ||
Variance | (circular) | ||
Entropy | where (differential) | ||
CF |
In probability theory and directional statistics, a wrapped exponential distribution is a wrapped probability distribution that results from the "wrapping" of the exponential distribution around the unit circle.
Definition
[edit]The probability density function of the wrapped exponential distribution is[1]
for where is the rate parameter of the unwrapped distribution. This is identical to the truncated distribution obtained by restricting observed values X from the exponential distribution with rate parameter λ to the range . Note that this distribution is not periodic.
Characteristic function
[edit]The characteristic function of the wrapped exponential is just the characteristic function of the exponential function evaluated at integer arguments:
which yields an alternate expression for the wrapped exponential PDF in terms of the circular variable z=e i (θ-m) valid for all real θ and m:
where is the Lerch transcendent function.
Circular moments
[edit]In terms of the circular variable the circular moments of the wrapped exponential distribution are the characteristic function of the exponential distribution evaluated at integer arguments:
where is some interval of length . The first moment is then the average value of z, also known as the mean resultant, or mean resultant vector:
The mean angle is
and the length of the mean resultant is
and the variance is then 1-R.
Characterisation
[edit]The wrapped exponential distribution is the maximum entropy probability distribution for distributions restricted to the range for a fixed value of the expectation .[1]
See also
[edit]References
[edit]- ^ a b Jammalamadaka, S. Rao; Kozubowski, Tomasz J. (2004). "New Families of Wrapped Distributions for Modeling Skew Circular Data" (PDF). Communications in Statistics - Theory and Methods. 33 (9): 2059–2074. doi:10.1081/STA-200026570. Retrieved 2011-06-13.