Nevertheless different sensitivities to the occurence
of rare events have to be taken into account very
carefully, when deriving conclusions from entropy
measures (Ricotta and Seidl, 2006).
In our case of diagnostic diversity of hospitals
we therefore believe that Shannon’s entropy is a
proper choice.
In conclusion the use of entropy as a measure for
health services research and classification algorithms
based on entropy have to be encouraged to learn
more about this measure, which unreasonably has
fallen into oblivion in health services research.
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