verteilungsfreier
Verteilungsfreier refers to a class of statistical methods that do not make assumptions about the specific probability distribution of the underlying data. These methods are also known as non-parametric tests. Unlike parametric tests, which rely on assumptions like normality or homogeneity of variances, verteilungsfreier tests are more flexible and can be applied to a wider range of data types, including ordinal and nominal data, as well as continuous data that do not meet parametric assumptions.
The advantage of verteilungsfreier methods lies in their robustness and applicability when parametric assumptions are violated.
While verteilungsfreier tests offer flexibility, they can sometimes be less statistically powerful than their parametric counterparts