Collection of Methods Constructed using the Kernel-Based Quadratic Distances

It is implemented in R and Python, providing a comprehensive set of goodness-of-fit tests and clustering technique using kernel-based quadratic distances. This framework aims to bridge the gap between the statistical and machine learning literature. It includes:

Details

The work has been supported by Kaleida Health Foundation, National Science Foundation and Department of Biostatistics, University at Buffalo.

Authors

Giovanni Saraceno, Marianthi Markatou, Raktim Mukhopadhyay, Mojgan Golzy
Email: gsaracen@buffalo.edu

References