Non-Euclidean Self-Organizing Maps
Machine Learning
2024-08-12 v2 Neural and Evolutionary Computing
Geometric Topology
Abstract
Self-Organizing Maps (SOMs, Kohonen networks) belong to neural network models of the unsupervised class. In this paper, we present the generalized setup for non-Euclidean SOMs. Most data analysts take it for granted to use some subregions of a flat space as their data model; however, by the assumption that the underlying geometry is non-Euclidean we obtain a new degree of freedom for the techniques that translate the similarities into spatial neighborhood relationships. We improve the traditional SOM algorithm by introducing topology-related extensions. Our proposition can be successfully applied to dimension reduction, clustering or finding similarities in big data (both hierarchical and non-hierarchical).
Keywords
Cite
@article{arxiv.2109.11769,
title = {Non-Euclidean Self-Organizing Maps},
author = {Dorota Celińska-Kopczyńska and Eryk Kopczyński},
journal= {arXiv preprint arXiv:2109.11769},
year = {2024}
}
Comments
Accepted to IJCAI 2022