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diproperm: An R Package for the DiProPerm Test (2009.00003v1)
Published 30 Aug 2020 in stat.CO, cs.LG, and stat.ML
Abstract: High-dimensional low sample size (HDLSS) data sets emerge frequently in many biomedical applications. A common task for analyzing HDLSS data is to assign data to the correct class using a classifier. Classifiers which use two labels and a linear combination of features are known as binary linear classifiers. The direction-projection-permutation (DiProPerm) test was developed for testing the difference of two high-dimensional distributions induced by a binary linear classifier. This paper discusses the key components of the DiProPerm test, introduces the diproperm R package, and demonstrates the package on a real-world data set.
- Andrew G. Allmon (1 paper)
- J. S. Marron (55 papers)
- Michael G. Hudgens (26 papers)