Circular uniform distribution

Summary

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 edit

Definition edit

The probability density function (pdf) of the circular uniform distribution, e.g. with  , is:

 

Moments with respect to a parametrization edit

We consider the circular variable   with   at base angle  . In these terms, the circular moments of the circular uniform distribution are all zero, except for  :

 

where   is the Kronecker delta symbol.

Descriptive statistics edit

Here the mean angle is undefined, and the length of the mean resultant is zero.

 

Distribution of the mean edit

 
A 10,000 point Monte Carlo simulation of the distribution of the sample mean of a circular uniform distribution for N = 3
 
Probability densities   for small values of  . Densities for   are normalised to the maximum density, those for   and   are scaled to aid visibility.

The sample mean of a set of N measurements   drawn from a circular uniform distribution is defined as:

 

where the average sine and cosine are:[1]

 

and the average resultant length is:

 

and the mean angle is:

 

The sample mean for the circular uniform distribution will be concentrated about zero, becoming more concentrated as N increases. The distribution of the sample mean for the uniform distribution is given by:[2]

 

where   consists of intervals of   in the variables, subject to the constraint that   and   are constant, or, alternatively, that   and   are constant. The distribution of the angle  is uniform

 

and the distribution of   is given by:[2]

 

where   is the Bessel function of order zero. There is no known general analytic solution for the above integral, and it is difficult to evaluate due to the large number of oscillations in the integrand. A 10,000 point Monte Carlo simulation of the distribution of the mean for N=3 is shown in the figure.

For certain special cases, the above integral can be evaluated:

 

For large N, the distribution of the mean can be determined from the central limit theorem for directional statistics. Since the angles are uniformly distributed, the individual sines and cosines of the angles will be distributed as:

 

where   or  . It follows that they will have zero mean and a variance of 1/2. By the central limit theorem, in the limit of large N,   and  , being the sum of a large number of i.i.d's, will be normally distributed with mean zero and variance  . The mean resultant length  , being the square root of the sum of squares of two normally distributed independent variables, will be Chi-distributed with two degrees of freedom (i.e.Rayleigh-distributed) and variance  :

 

Entropy edit

The differential information entropy of the uniform distribution is simply

 

where   is any interval of length  . This is the maximum entropy any circular distribution may have.

See also edit

References edit

  1. ^ "Transmit beamforming for radar applications using circularly tapered random arrays - IEEE Conference Publication". doi:10.1109/RADAR.2017.7944181. S2CID 38429370. {{cite journal}}: Cite journal requires |journal= (help)
  2. ^ a b Jammalamadaka, S. Rao; Sengupta, A. (2001). Topics in Circular Statistics. World Scientific Publishing Company. ISBN 978-981-02-3778-3.