HOME

TheInfoList



OR:

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 o ...
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 Cauchy distribution is a wrapped probability distribution that results from the "wrapping" of the
Cauchy distribution The Cauchy distribution, named after Augustin Cauchy, is a continuous probability distribution. It is also known, especially among physicists, as the Lorentz distribution (after Hendrik Lorentz), Cauchy–Lorentz distribution, Lorentz(ian) fu ...
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 ...
. The Cauchy distribution is sometimes known as a Lorentzian distribution, and the wrapped Cauchy distribution may sometimes be referred to as a wrapped Lorentzian distribution. The wrapped Cauchy distribution is often found in the field of spectroscopy where it is used to analyze diffraction patterns (e.g. see
Fabry–Pérot interferometer In optics, a Fabry–Pérot interferometer (FPI) or etalon is an optical cavity made from two parallel reflecting surfaces (i.e.: thin mirrors). Optical waves can pass through the optical cavity only when they are in resonance with it. It is n ...
).


Description

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) c ...
of the wrapped
Cauchy distribution The Cauchy distribution, named after Augustin Cauchy, is a continuous probability distribution. It is also known, especially among physicists, as the Lorentz distribution (after Hendrik Lorentz), Cauchy–Lorentz distribution, Lorentz(ian) fu ...
is: : f_(\theta;\mu,\gamma)=\sum_^\infty \frac\qquad -\pi<\theta<\pi where \gamma is the scale factor and \mu is the peak position of the "unwrapped" distribution.
Expressing Expression may refer to: Linguistics * Expression (linguistics), a word, phrase, or sentence * Fixed expression, a form of words with a specific meaning * Idiom, a type of fixed expression * Metaphorical expression, a particular word, phrase, ...
the above pdf 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 point ...
of the Cauchy distribution yields: : f_(\theta;\mu,\gamma)=\frac\sum_^\infty e^ =\frac\,\,\frac The PDF may also be expressed in terms of the circular variable ''z'' = ''e''''iθ'' and the complex parameter ''ζ'' = ''e''''i''(''μ''+''iγ'') : f_(z;\zeta)=\frac\,\,\frac where, as shown below, ''ζ'' = ⟨''z''⟩. In terms of the circular variable z=e^ the circular moments of the wrapped Cauchy distribution are the characteristic function of the Cauchy distribution evaluated at integer arguments: :\langle z^n\rangle=\int_\Gamma e^\,f_(\theta;\mu,\gamma)\,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 : \langle \theta \rangle=\mathrm\langle z \rangle = \mu and the length of the mean resultant is : R=, \langle z \rangle, = e^ yielding a circular variance of 1 − ''R''.


Estimation of parameters

A series of ''N'' measurements z_n=e^ drawn from a wrapped Cauchy distribution may be used to estimate certain parameters of the distribution. The average of the series \overline 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, \overline is an unbiased estimator of the first moment. If we assume that the peak position \mu 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 Cauchy distribution is defined as: :H = -\int_\Gamma f_(\theta;\mu,\gamma)\,\ln(f_(\theta;\mu,\gamma))\,d\theta where \Gamma is any interval of length 2\pi. The logarithm of the density of the wrapped Cauchy distribution may be written as a Fourier series in \theta\,: :\ln(f_(\theta;\mu,\gamma))=c_0+2\sum_^\infty c_m \cos(m\theta) where :c_m=\frac\int_\Gamma \ln\left(\frac\right)\cos(m \theta)\,d\theta which yields: :c_0 = \ln\left(\frac\right) (c.f.
Gradshteyn and Ryzhik ''Gradshteyn and Ryzhik'' (''GR'') is the informal name of a comprehensive table of integrals originally compiled by the Russian mathematicians I. S. Gradshteyn and I. M. Ryzhik. Its full title today is ''Table of Integrals, Series, and Products ...
4.224.15) and :c_m=\frac\qquad \mathrm\,m>0 (c.f.
Gradshteyn and Ryzhik ''Gradshteyn and Ryzhik'' (''GR'') is the informal name of a comprehensive table of integrals originally compiled by the Russian mathematicians I. S. Gradshteyn and I. M. Ryzhik. Its full title today is ''Table of Integrals, Series, and Products ...
4.397.6). The characteristic function representation for the wrapped Cauchy distribution in the left side of the integral is: :f_(\theta;\mu,\gamma) =\frac\left(1+2\sum_^\infty\phi_n\cos(n\theta)\right) where \phi_n= e^. Substituting these expressions into the entropy integral, exchanging the order of integration and summation, and using the orthogonality of the cosines, the entropy may be written: :H = -c_0-2\sum_^\infty \phi_m c_m = -\ln\left(\frac\right)-2\sum_^\infty \frac The series is just the
Taylor expansion In mathematics, the Taylor series or Taylor expansion of a function is an infinite sum of terms that are expressed in terms of the function's derivatives at a single point. For most common functions, the function and the sum of its Taylor se ...
for the logarithm of (1-e^) so the entropy may be written in closed form as: :H=\ln(2\pi(1-e^))\,


Circular Cauchy distribution

If ''X'' is Cauchy distributed with median μ and scale parameter γ, then the complex variable :Z = \frac has unit modulus and is distributed on the unit circle with density: :f_(\theta,\mu,\gamma)= \frac \frac where :\zeta = \frac and ψ expresses the two parameters of the associated linear Cauchy distribution for ''x'' as a complex number: :\psi=\mu+i\gamma\, It can be seen that the circular Cauchy distribution has the same functional form as the wrapped Cauchy distribution in ''z'' and ζ (i.e. fWC(z,ζ)). The circular Cauchy distribution is a reparameterized wrapped Cauchy distribution: : f_(\theta,m,\gamma)=f_\left(e^,\, \frac\right) The distribution f_(\theta; \mu,\gamma) is called the circular Cauchy distribution (also the complex Cauchy distribution) with parameters μ and γ. (See also McCullagh's parametrization of the Cauchy distributions and
Poisson kernel In mathematics, and specifically in potential theory, the Poisson kernel is an integral kernel, used for solving the two-dimensional Laplace equation, given Dirichlet boundary conditions on the unit disk. The kernel can be understood as the deriv ...
for related concepts.) The circular Cauchy distribution expressed in complex form has finite moments of all orders : \operatorname ^n= \zeta^n, \quad \operatorname bar Z^n= \bar\zeta^n for integer ''n'' ≥ 1. For , φ, < 1, the transformation :U(z, \phi) = \frac is
holomorphic In mathematics, a holomorphic function is a complex-valued function of one or more complex variables that is complex differentiable in a neighbourhood of each point in a domain in complex coordinate space . The existence of a complex de ...
on the unit disk, and the transformed variable ''U''(''Z'', φ) is distributed as complex Cauchy with parameter ''U''(ζ, φ). Given a sample ''z''1, ..., ''zn'' of size ''n'' > 2, the maximum-likelihood equation :n^ U \left(z, \hat\zeta \right) = n^ \sum U \left(z_j, \hat\zeta \right) = 0 can be solved by a simple fixed-point iteration: :\zeta^ = U \left(n^ U(z, \zeta^), \, - \zeta^ \right)\, starting with ζ(0) = 0. The sequence of likelihood values is non-decreasing, and the solution is unique for samples containing at least three distinct values. The maximum-likelihood estimate for the median (\hat\mu) and scale parameter (\hat\gamma) of a real Cauchy sample is obtained by the inverse transformation: :\hat\mu \pm i\hat\gamma = i\frac. For ''n'' ≤ 4, closed-form expressions are known for \hat\zeta. The density of the maximum-likelihood estimator at ''t'' in the unit disk is necessarily of the form: :\frac\frac , where :\chi(t, \zeta) = \frac. Formulae for ''p''3 and ''p''4 are available.


See also

* Wrapped distribution *
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 t ...
* Wrapped normal distribution *
Circular uniform distribution In probability theory and directional statistics, a circular uniform distribution is a probability distribution on the unit circle whose density is uniform for all angles. Description Definition The probability density function (pdf) of the ...
* McCullagh's parametrization of the Cauchy distributions


References

* * {{ProbDistributions, directional Continuous distributions Directional statistics