wrapped normal
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In
probability theory Probability theory is the branch of mathematics concerned with probability. Although there are several different probability interpretations, probability theory treats the concept in a rigorous mathematical manner by expressing it through a set ...
and
directional statistics Directional statistics (also circular statistics or spherical statistics) is the subdiscipline of statistics that deals with directions (unit vectors in Euclidean space, R''n''), axes (lines through the origin in R''n'') or rotations in R''n''. M ...
, a wrapped normal distribution is a wrapped probability distribution that results from the "wrapping" of the
normal distribution In statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is : f(x) = \frac e^ The parameter \mu ...
around the
unit circle In mathematics, a unit circle is a circle of unit radius—that is, a radius of 1. Frequently, especially in trigonometry, the unit circle is the circle of radius 1 centered at the origin (0, 0) in the Cartesian coordinate system in the Eucli ...
. It finds application in the theory of
Brownian motion Brownian motion, or pedesis (from grc, πήδησις "leaping"), is the random motion of particles suspended in a medium (a liquid or a gas). This pattern of motion typically consists of random fluctuations in a particle's position insi ...
and is a solution to the heat equation for periodic boundary conditions. It is closely approximated by the
von Mises distribution In probability theory and directional statistics, the von Mises distribution (also known as the circular normal distribution or Tikhonov distribution) is a continuous probability distribution on the circle. It is a close approximation to the w ...
, which, due to its mathematical simplicity and tractability, is the most commonly used distribution in directional statistics.


Definition

The
probability density function In probability theory, a probability density function (PDF), or density of a continuous random variable, is a function whose value at any given sample (or point) in the sample space (the set of possible values taken by the random variable) ca ...
of the wrapped normal distribution is : f_(\theta;\mu,\sigma)=\frac \sum^_ \exp \left frac \right 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 In mathematics, the term "characteristic function" can refer to any of several distinct concepts: * The indicator function of a subset, that is the function ::\mathbf_A\colon X \to \, :which for a given subset ''A'' of ''X'', has value 1 at points ...
of the normal distribution yields: : f_(\theta;\mu,\sigma)=\frac\sum_^\infty e^ =\frac\vartheta\left(\frac,\frac\right) , where \vartheta(\theta,\tau) is the
Jacobi theta function In mathematics, theta functions are special functions of several complex variables. They show up in many topics, including Abelian varieties, moduli spaces, quadratic forms, and solitons. As Grassmann algebras, they appear in quantum field theo ...
, given by : \vartheta(\theta,\tau)=\sum_^\infty (w^2)^n q^ \text w \equiv e^ and q \equiv e^ . The wrapped normal distribution may also be expressed in terms of the Jacobi triple product: :f_(\theta;\mu,\sigma)=\frac\prod_^\infty (1-q^n)(1+q^z)(1+q^/z) . where z=e^\, and q=e^.


Moments

In terms of the circular variable z=e^ the circular moments of the wrapped normal distribution are the characteristic function of the normal distribution evaluated at integer arguments: :\langle z^n\rangle=\int_\Gamma e^\,f_(\theta;\mu,\sigma)\,d\theta = e^. where \Gamma\, is some interval of length 2\pi. The first moment is then the average value of ''z'', also known as the mean resultant, or mean resultant vector: : \langle z \rangle=e^ The mean angle is : \theta_\mu=\mathrm\langle z \rangle = \mu and the length of the mean resultant is : R=, \langle z \rangle, = e^ The circular standard deviation, which is a useful measure of dispersion for the wrapped normal distribution and its close relative, the
von Mises distribution In probability theory and directional statistics, the von Mises distribution (also known as the circular normal distribution or Tikhonov distribution) is a continuous probability distribution on the circle. It is a close approximation to the w ...
is given by: : s=\ln(R^)^ = \sigma


Estimation of parameters

A series of ''N'' measurements ''z''''n'' = ''e'' ''iθ''''n'' drawn from a wrapped normal distribution may be used to estimate certain parameters of the distribution. The average of the series is defined as :\overline=\frac\sum_^N z_n and its expectation value will be just the first moment: :\langle\overline\rangle=e^. \, In other words, is an unbiased estimator of the first moment. If we assume that the mean ''μ'' lies in the interval
information entropy In information theory, the entropy of a random variable is the average level of "information", "surprise", or "uncertainty" inherent to the variable's possible outcomes. Given a discrete random variable X, which takes values in the alphabet \ ...
of the wrapped normal distribution is defined as: :H = -\int_\Gamma f_(\theta;\mu,\sigma)\,\ln(f_(\theta;\mu,\sigma))\,d\theta where \Gamma is any interval of length 2\pi. Defining z=e^ and q=e^, the Jacobi triple product representation for the wrapped normal is: :f_(\theta;\mu,\sigma) = \frac\prod_^\infty (1+q^z)(1+q^z^) where \phi(q)\, is the Euler function. The logarithm of the density of the wrapped normal distribution may be written: :\ln(f_(\theta;\mu,\sigma))= \ln\left(\frac\right)+\sum_^\infty\ln(1+q^z)+\sum_^\infty\ln(1+q^z^) Using the series expansion for the logarithm: :\ln(1+x)=-\sum_^\infty \frac\,x^k the logarithmic sums may be written as: :\sum_^\infty\ln(1+q^z^)=-\sum_^\infty \sum_^\infty \frac\,q^z^ = -\sum_^\infty \frac\,\frac\,z^ so that the logarithm of density of the wrapped normal distribution may be written as: :\ln(f_(\theta;\mu,\sigma))=\ln\left(\frac\right)-\sum_^\infty \frac \frac\,(z^k+z^) which is essentially a Fourier series in \theta\,. Using the characteristic function representation for the wrapped normal distribution in the left side of the integral: :f_(\theta;\mu,\sigma) =\frac\sum_^\infty q^\,z^n the entropy may be written: :H = -\ln\left(\frac\right)+\frac\int_\Gamma \left( \sum_^\infty\sum_^\infty \frac \frac\left(z^+z^\right) \right)\,d\theta which may be integrated to yield: :H = -\ln\left(\frac\right)+2\sum_^\infty \frac\, \frac


See also

*
Wrapped distribution In probability theory and directional statistics, a wrapped probability distribution is a continuous probability distribution that describes data points that lie on a unit ''n''-sphere. In one dimension, a wrapped distribution consists of points on ...
*
Dirac comb In mathematics, a Dirac comb (also known as shah function, impulse train or sampling function) is a periodic function with the formula \operatorname_(t) \ := \sum_^ \delta(t - k T) for some given period T. Here ''t'' is a real variable and th ...
*
Wrapped Cauchy distribution In probability theory and directional statistics, a wrapped Cauchy distribution is a wrapped probability distribution that results from the "wrapping" of the Cauchy distribution around the unit circle. The Cauchy distribution is sometimes known a ...
*
Von Mises distribution In probability theory and directional statistics, the von Mises distribution (also known as the circular normal distribution or Tikhonov distribution) is a continuous probability distribution on the circle. It is a close approximation to the w ...


References

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External links


Circular Values Math and Statistics with C++11
A C++11 infrastructure for circular values (angles, time-of-day, etc.) mathematics and statistics {{ProbDistributions, directional Continuous distributions Directional statistics Normal distribution