It
can be difficult to discriminate between the Complete Fourth Power Exponential
(CFPE) distribution and the normal distribution due to some similarities
between these distributions, e.g. their shapes and other properties. In this
paper, we derive the correlation between variate-values and ranks in a sample
from the Complete Fourth Power Exponential (CFPE) distribution. A sample from
the CFPE distribution could be misclassified as if it is drawn from the normal
distribution due to some similarities between the two distributions. In
practice, ranks are used instead of real values (variate-values) when there is
hardly any knowledge about the underlying distribution. This may lead to loss
of some of the information contained in the actual values. In this paper we
found that the amount of information loss, by using ranks instead of real data,
is larger when the sample is from the CFPE distribution than if it is from the
normal distribution. However, there is still a relatively high correlation between
variate-values and the corresponding ranks. Comparisons between the correlation
between variate-values and ranks for the CFPE distribution and some other
distributions are provided.
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