Wrapped exponential distribution

Probability distribution
Wrapped Exponential
Probability density function
Plot of the wrapped exponential PDF
The support is chosen to be [0,2π]
Cumulative distribution function
Plot of the wrapped exponential CDF
The support is chosen to be [0,2π]
Parameters λ > 0 {\displaystyle \lambda >0}
Support 0 θ < 2 π {\displaystyle 0\leq \theta <2\pi }
PDF λ e λ θ 1 e 2 π λ {\displaystyle {\frac {\lambda e^{-\lambda \theta }}{1-e^{-2\pi \lambda }}}}
CDF 1 e λ θ 1 e 2 π λ {\displaystyle {\frac {1-e^{-\lambda \theta }}{1-e^{-2\pi \lambda }}}}
Mean arctan ( 1 / λ ) {\displaystyle \arctan(1/\lambda )} (circular)
Variance 1 λ 1 + λ 2 {\displaystyle 1-{\frac {\lambda }{\sqrt {1+\lambda ^{2}}}}} (circular)
Entropy 1 + ln ( β 1 λ ) β β 1 ln ( β ) {\displaystyle 1+\ln \left({\frac {\beta -1}{\lambda }}\right)-{\frac {\beta }{\beta -1}}\ln(\beta )} where β = e 2 π λ {\displaystyle \beta =e^{2\pi \lambda }} (differential)
CF 1 1 i n / λ {\displaystyle {\frac {1}{1-in/\lambda }}}

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

The probability density function of the wrapped exponential distribution is[1]

f W E ( θ ; λ ) = k = 0 λ e λ ( θ + 2 π k ) = λ e λ θ 1 e 2 π λ , {\displaystyle f_{WE}(\theta ;\lambda )=\sum _{k=0}^{\infty }\lambda e^{-\lambda (\theta +2\pi k)}={\frac {\lambda e^{-\lambda \theta }}{1-e^{-2\pi \lambda }}},}

for 0 θ < 2 π {\displaystyle 0\leq \theta <2\pi } where λ > 0 {\displaystyle \lambda >0} 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 0 X < 2 π {\displaystyle 0\leq X<2\pi } . Note that this distribution is not periodic.

Characteristic function

The characteristic function of the wrapped exponential is just the characteristic function of the exponential function evaluated at integer arguments:

φ n ( λ ) = 1 1 i n / λ {\displaystyle \varphi _{n}(\lambda )={\frac {1}{1-in/\lambda }}}

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:

f W E ( z ; λ ) = 1 2 π n = z n 1 i n / λ = { λ π Im ( Φ ( z , 1 , i λ ) ) 1 2 π if  z 1 λ 1 e 2 π λ if  z = 1 {\displaystyle {\begin{aligned}f_{WE}(z;\lambda )&={\frac {1}{2\pi }}\sum _{n=-\infty }^{\infty }{\frac {z^{-n}}{1-in/\lambda }}\\[10pt]&={\begin{cases}{\frac {\lambda }{\pi }}\,{\textrm {Im}}(\Phi (z,1,-i\lambda ))-{\frac {1}{2\pi }}&{\text{if }}z\neq 1\\[12pt]{\frac {\lambda }{1-e^{-2\pi \lambda }}}&{\text{if }}z=1\end{cases}}\end{aligned}}}

where Φ ( ) {\displaystyle \Phi ()} is the Lerch transcendent function.

Circular moments

In terms of the circular variable z = e i θ {\displaystyle z=e^{i\theta }} the circular moments of the wrapped exponential distribution are the characteristic function of the exponential distribution evaluated at integer arguments:

z n = Γ e i n θ f W E ( θ ; λ ) d θ = 1 1 i n / λ , {\displaystyle \langle z^{n}\rangle =\int _{\Gamma }e^{in\theta }\,f_{WE}(\theta ;\lambda )\,d\theta ={\frac {1}{1-in/\lambda }},}

where Γ {\displaystyle \Gamma \,} is some interval of length 2 π {\displaystyle 2\pi } . The first moment is then the average value of z, also known as the mean resultant, or mean resultant vector:

z = 1 1 i / λ . {\displaystyle \langle z\rangle ={\frac {1}{1-i/\lambda }}.}

The mean angle is

θ = A r g z = arctan ( 1 / λ ) , {\displaystyle \langle \theta \rangle =\mathrm {Arg} \langle z\rangle =\arctan(1/\lambda ),}

and the length of the mean resultant is

R = | z | = λ 1 + λ 2 . {\displaystyle R=|\langle z\rangle |={\frac {\lambda }{\sqrt {1+\lambda ^{2}}}}.}

and the variance is then 1-R.

Characterisation

The wrapped exponential distribution is the maximum entropy probability distribution for distributions restricted to the range 0 θ < 2 π {\displaystyle 0\leq \theta <2\pi } for a fixed value of the expectation E ( θ ) {\displaystyle \operatorname {E} (\theta )} .[1]

See also

  • Wrapped distribution
  • Directional statistics

References

  1. ^ 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.
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