A comparison of various methods for estimating the parameters in mixtures of von mises distributions |
| |
Authors: | Barrie D Spurr Majdi A Koutbeiy |
| |
Institution: | 1. Department of Mathematical &2. Computational Sciences , UNIVERSITY OF ST ANDREWS;3. Computational Sciences , University of ST Andrews |
| |
Abstract: | In this paper we compare five methods for estimating the unknown parameters in a mixture of two von Mises distributions. We propose a new method based on the characteristic function and compare it with the classical methods based on maximum likelihood and moments. Thus far these methods have been successfully applied only to linear data. Here we show that the application to circular data is reasonably straightforward and that convergence to the final estimates is fairly rapid. For various simulated known mixtures the results obtained are satisfactory. Finally, we introduce a modification of the method of moments which is considerably faster in CPU time than any of the other methods used and gives good results. |
| |
Keywords: | Estimation Mixtures of von Mises Distributions Maximum Likelihood Moments Characteristic Function Cramer-von Mises |
|