kulgevatest
Kulgevatest is a term used in theoretical discussions of nonparametric hypothesis testing to denote a family of permutation-based tests designed to detect distributional differences between two groups in high-dimensional or mixed-type data. In its standard formulation, the test constructs a Kulgeva statistic (S) that aggregates pairwise discrepancies between observations, weighted by group labels, using a chosen kernel or distance metric. Significance is assessed by generating the null distribution of S through repeated random reassignment of group labels (permutation testing). The approach aims to be robust to outliers and to function with small sample sizes better than some classical parametric tests.
The name Kulgevatest is derived from the fictional statistician A. Kulgeva, and it appears most commonly in
Typical applications include exploratory analysis in genomics, neuroimaging, and other fields where data are high-dimensional and
For further context, see permutation tests, kernel mean embeddings, and energy distance tests.