Goodness-of-fit tests for Laplace, Gaussian and exponential power
distributions based on -th power skewness and kurtosis
Temperature data, like many other measurements in quantitative fields, are usually modeled using a normal distribution. However, some distributions can offer a better fit while avoiding underestimation of tail event probabilities. To this point, we extend Pearson's notions of skewness and kurtosis to build a powerful family of goodness-of-fit tests based on Rao's score for the exponential power distribution , including tests for normality and Laplacity when is set to 1 or 2. We find the asymptotic distribution of our test statistic, which is the sum of the squares of two -scores, under the null and under local alternatives. We also develop an innovative regression strategy to obtain -scores that are nearly independent and distributed as standard Gaussians, resulting in a distribution valid for any sample size (up to very high precision for ). The case leads to a powerful test of fit for the Laplace() distribution, whose empirical power is superior to all competitors in the literature, over a wide range of alternatives. Theoretical proofs in this case are particularly challenging and substantial. We applied our tests to three temperature datasets. The new tests are implemented in the R package PoweR.
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