English

Uncertainty-Aware Principal Component Analysis

Machine Learning 2019-10-14 v4 Human-Computer Interaction Machine Learning

Abstract

We present a technique to perform dimensionality reduction on data that is subject to uncertainty. Our method is a generalization of traditional principal component analysis (PCA) to multivariate probability distributions. In comparison to non-linear methods, linear dimensionality reduction techniques have the advantage that the characteristics of such probability distributions remain intact after projection. We derive a representation of the PCA sample covariance matrix that respects potential uncertainty in each of the inputs, building the mathematical foundation of our new method: uncertainty-aware PCA. In addition to the accuracy and performance gained by our approach over sampling-based strategies, our formulation allows us to perform sensitivity analysis with regard to the uncertainty in the data. For this, we propose factor traces as a novel visualization that enables to better understand the influence of uncertainty on the chosen principal components. We provide multiple examples of our technique using real-world datasets. As a special case, we show how to propagate multivariate normal distributions through PCA in closed form. Furthermore, we discuss extensions and limitations of our approach.

Keywords

Cite

@article{arxiv.1905.01127,
  title  = {Uncertainty-Aware Principal Component Analysis},
  author = {Jochen Görtler and Thilo Spinner and Dirk Streeb and Daniel Weiskopf and Oliver Deussen},
  journal= {arXiv preprint arXiv:1905.01127},
  year   = {2019}
}
R2 v1 2026-06-23T08:56:07.593Z