Cluster and then Embed: A Modular Approach for Visualization
Machine Learning
2025-09-04 v1 Methodology
Machine Learning
Abstract
Dimensionality reduction methods such as t-SNE and UMAP are popular methods for visualizing data with a potential (latent) clustered structure. They are known to group data points at the same time as they embed them, resulting in visualizations with well-separated clusters that preserve local information well. However, t-SNE and UMAP also tend to distort the global geometry of the underlying data. We propose a more transparent, modular approach consisting of first clustering the data, then embedding each cluster, and finally aligning the clusters to obtain a global embedding. We demonstrate this approach on several synthetic and real-world datasets and show that it is competitive with existing methods, while being much more transparent.
Cite
@article{arxiv.2509.03373,
title = {Cluster and then Embed: A Modular Approach for Visualization},
author = {Elizabeth Coda and Ery Arias-Castro and Gal Mishne},
journal= {arXiv preprint arXiv:2509.03373},
year = {2025}
}