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Uncertainty-Aware PCA for Arbitrarily Distributed Data Modeled by Gaussian Mixture Models

Machine Learning 2026-01-15 v2 Graphics Machine Learning

Abstract

Multidimensional data is often associated with uncertainties that are not well-described by normal distributions. In this work, we describe how such distributions can be projected to a low-dimensional space using uncertainty-aware principal component analysis (UAPCA). We propose to model multidimensional distributions using Gaussian mixture models (GMMs) and derive the projection from a general formulation that allows projecting arbitrary probability density functions. The low-dimensional projections of the densities exhibit more details about the distributions and represent them more faithfully compared to UAPCA mappings. Further, we support including user-defined weights between the different distributions, which allows for varying the importance of the multidimensional distributions. We evaluate our approach by comparing the distributions in low-dimensional space obtained by our method and UAPCA to those obtained by sample-based projections.

Keywords

Cite

@article{arxiv.2508.13990,
  title  = {Uncertainty-Aware PCA for Arbitrarily Distributed Data Modeled by Gaussian Mixture Models},
  author = {Daniel Klötzl and Ozan Tastekin and David Hägele and Marina Evers and Daniel Weiskopf},
  journal= {arXiv preprint arXiv:2508.13990},
  year   = {2026}
}

Comments

10 pages, 6 figures

R2 v1 2026-07-01T04:57:06.938Z