English

Principal component analysis for Gaussian process posteriors

Machine Learning 2023-04-07 v2 Machine Learning

Abstract

This paper proposes an extension of principal component analysis for Gaussian process (GP) posteriors, denoted by GP-PCA. Since GP-PCA estimates a low-dimensional space of GP posteriors, it can be used for meta-learning, which is a framework for improving the performance of target tasks by estimating a structure of a set of tasks. The issue is how to define a structure of a set of GPs with an infinite-dimensional parameter, such as coordinate system and a divergence. In this study, we reduce the infiniteness of GP to the finite-dimensional case under the information geometrical framework by considering a space of GP posteriors that have the same prior. In addition, we propose an approximation method of GP-PCA based on variational inference and demonstrate the effectiveness of GP-PCA as meta-learning through experiments.

Keywords

Cite

@article{arxiv.2107.07115,
  title  = {Principal component analysis for Gaussian process posteriors},
  author = {Hideaki Ishibashi and Shotaro Akaho},
  journal= {arXiv preprint arXiv:2107.07115},
  year   = {2023}
}
R2 v1 2026-06-24T04:12:59.588Z