A class of goodness-of-fit tests for circular distributions based on trigonometric moments
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Abstract
We propose a class of goodness–of–fit test procedures for arbitrary parametric families of circular
distributions with unknown parameters. The tests make use of the specific form of the characteristic function of the family being tested, and are shown to be consistent. We derive the asymptotic
null distribution and suggest that the new method be implemented using a bootstrap resampling
technique that approximates this distribution consistently. As an illustration, we then specialize
this method to testing whether a given data set is from the von Mises distribution, a model that
is commonly used and for which considerable theory has been developed. An extensive Monte
Carlo study is carried out to compare the new tests with other existing omnibus tests for this model.
An application involving five real data sets is provided in order to illustrate the new procedure
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Jammalamadaka, S.R. et al. 2019. A class of goodness-of-fit tests for circular distributions based on trigonometric moments. SORT: statistics and operations research transactions, 43(2):317-336. [https://doi.org/10.2436/20.8080.02.90]
