Sums of Independent Circular Random Variables and Maximum Likelihood Circular Uniformity Tests Based on Nonnegative Trigonometric Sums Distributions

12/02/2022
by   Fernández-Durán, et al.
0

The circular uniform distribution on the unit circle is closed under summation (modulus 2pi), that is, the sum of the independent circular uniformly distributed random variables is also circular uniformly distributed. In this study, it is shown that a family of circular distributions based on nonnegative trigonometric sums (NNTS) is also closed under summation. Given the flexibility of NNTS circular distributions to model multimodality and skewness, these are good candidates for use as alternative models to test for circular uniformity to detect different deviations from the null hypothesis of circular uniformity. The circular uniform distribution is a member of the NNTS family, but in the NNTS parameter space, it corresponds to a point on the boundary of the parameter space, implying that the regularity conditions are not satisfied when the parameters are estimated using the maximum likelihood method. Two NNTS tests for circular uniformity were developed by considering the standardised maximum likelihood estimator and the generalised likelihood ratio. Given the non-regularity condition, the critical values of the proposed NNTS circular uniformity tests were obtained via simulation. By generating new models close to the circular uniformity null hypothesis, the proposed NNTS circular uniformity tests' validity was evaluated by taking into account the fact that the NNTS family is closed under summation.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset