ddalpha - Depth-Based Classification and Calculation of Data Depth
Contains procedures for depth-based supervised learning,
which are entirely non-parametric, in particular the
DDalpha-procedure (Lange, Mosler and Mozharovskyi, 2014
<doi:10.1007/s00362-012-0488-4>). The training data sample is
transformed by a statistical depth function to a compact
low-dimensional space, where the final classification is done.
It also offers an extension to functional data and routines for
calculating certain notions of statistical depth functions. 50
multivariate and 5 functional classification problems are
included. (Pokotylo, Mozharovskyi and Dyckerhoff, 2019
<doi:10.18637/jss.v091.i05>).