Full interpretable machine learning in 2D with inline coordinates
Abstract
This paper proposed a new methodology for machine learning in 2-dimensional space (2-D ML) in inline coordinates. It is a full machine learning approach that does not require to deal with n-dimensional data in n-dimensional space. It allows discovering n-D patterns in 2-D space without loss of n-D information using graph representations of n-D data in 2-D. Specifically, it can be done with the inline based coordinates in different modifications, including static and dynamic ones. The classification and regression algorithms based on these inline coordinates were introduced. A successful case study based on a benchmark data demonstrated the feasibility of the approach. This approach helps to consolidate further a whole new area of full 2-D machine learning as a promising ML methodology. It has advantages of abilities to involve actively the end-users into the discovering of models and their justification. Another advantage is providing interpretable ML models.
Cite
@article{arxiv.2106.07568,
title = {Full interpretable machine learning in 2D with inline coordinates},
author = {Boris Kovalerchuk and Hoang Phan},
journal= {arXiv preprint arXiv:2106.07568},
year = {2021}
}
Comments
8 pages, 20 figures