Wrapped normal distribution

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Wrapped Normal
Probability density function
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The support is chosen to be [-π,π] with μ=0
Cumulative distribution function
Plot of the von Mises CMF
The support is chosen to be [-π,π] with μ=0
Parameters μ real
σ>0
Support θ any interval of length 2π
PDF 12πϑ(θμ2π,iσ22π)
Mean μ if support is on interval μ±π
Median μ if support is on interval μ±π
Mode μ
Variance 1eσ2/2 (circular)
Entropy (see text)
CF eσ2n2/2+inμ

In probability theory and directional statistics, a wrapped normal distribution is a wrapped probability distribution that results from the "wrapping" of the normal distribution around the unit circle. It finds application in the theory of Brownian motion and is a solution to the heat equation for periodic boundary conditions. It is closely approximated by the von Mises distribution, which, due to its mathematical simplicity and tractability, is the most commonly used distribution in directional statistics.[1]

Definition

The probability density function of the wrapped normal distribution is[2]

fWN(θ;μ,σ)=1σ2πk=exp[(θμ+2πk)22σ2],

where μ and σ are the mean and standard deviation of the unwrapped distribution, respectively. Expressing the above density function in terms of the characteristic function of the normal distribution yields:[2]

fWN(θ;μ,σ)=12πn=eσ2n2/2+in(θμ)=12πϑ(θμ2π,iσ22π),

where ϑ(θ,τ) is the Jacobi theta function, given by

ϑ(θ,τ)=n=(w2)nqn2 where weiπθ and qeiπτ.

The wrapped normal distribution may also be expressed in terms of the Jacobi triple product:[3]

fWN(θ;μ,σ)=12πn=1(1qn)(1+qn1/2z)(1+qn1/2/z).

where z=ei(θμ) and q=eσ2.

Moments

In terms of the circular variable z=eiθ the circular moments of the wrapped normal distribution are the characteristic function of the normal distribution evaluated at integer arguments:

zn=ΓeinθfWN(θ;μ,σ)dθ=einμn2σ2/2.

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

z=eiμσ2/2

The mean angle is

θμ=Argz=μ

and the length of the mean resultant is

R=|z|=eσ2/2

The circular standard deviation, which is a useful measure of dispersion for the wrapped normal distribution and its close relative, the von Mises distribution is given by:

s=ln(R2)1/2=σ

Estimation of parameters

A series of N measurements zn = e n drawn from a wrapped normal distribution may be used to estimate certain parameters of the distribution. The average of the series z is defined as

z=1Nn=1Nzn

and its expectation value will be just the first moment:

z=eiμσ2/2.

In other words, z is an unbiased estimator of the first moment. If we assume that the mean μ lies in the interval [−ππ), then Arg z will be a (biased) estimator of the mean μ.

Viewing the zn as a set of vectors in the complex plane, the R2 statistic is the square of the length of the averaged vector:

R2=zz*=(1Nn=1Ncosθn)2+(1Nn=1Nsinθn)2

and its expected value is:

R2=1N+N1Neσ2

In other words, the statistic

Re2=NN1(R21N)

will be an unbiased estimator of eσ2, and ln(1/Re2) will be a (biased) estimator of σ2

Entropy

The information entropy of the wrapped normal distribution is defined as:[2]

H=ΓfWN(θ;μ,σ)ln(fWN(θ;μ,σ))dθ

where Γ is any interval of length 2π. Defining z=ei(θμ) and q=eσ2, the Jacobi triple product representation for the wrapped normal is:

fWN(θ;μ,σ)=ϕ(q)2πm=1(1+qm1/2z)(1+qm1/2z1)

where ϕ(q) is the Euler function. The logarithm of the density of the wrapped normal distribution may be written:

ln(fWN(θ;μ,σ))=ln(ϕ(q)2π)+m=1ln(1+qm1/2z)+m=1ln(1+qm1/2z1)

Using the series expansion for the logarithm:

ln(1+x)=k=1(1)kkxk

the logarithmic sums may be written as:

m=1ln(1+qm1/2z±1)=m=1k=1(1)kkqmkk/2z±k=k=1(1)kkqk/21qkz±k

so that the logarithm of density of the wrapped normal distribution may be written as:

ln(fWN(θ;μ,σ))=ln(ϕ(q)2π)k=1(1)kkqk/21qk(zk+zk)

which is essentially a Fourier series in θ. Using the characteristic function representation for the wrapped normal distribution in the left side of the integral:

fWN(θ;μ,σ)=12πn=qn2/2zn

the entropy may be written:

H=ln(ϕ(q)2π)+12πΓ(n=k=1(1)kkq(n2+k)/21qk(zn+k+znk))dθ

which may be integrated to yield:

H=ln(ϕ(q)2π)+2k=1(1)kkq(k2+k)/21qk

See also

References

  1. Collett, D.; Lewis, T. (1981). "Discriminating Between the Von Mises and Wrapped Normal Distributions". Australian Journal of Statistics 23 (1): 73–79. doi:10.1111/j.1467-842X.1981.tb00763.x. 
  2. 2.0 2.1 2.2 Mardia, Kantilal; Jupp, Peter E. (1999). Directional Statistics. Wiley. ISBN 978-0-471-95333-3. 
  3. Whittaker, E. T.; Watson, G. N. (2009). A Course of Modern Analysis. Book Jungle. ISBN 978-1-4385-2815-1.