English

String and Membrane Gaussian Processes

Machine Learning 2016-08-22 v4

Abstract

In this paper we introduce a novel framework for making exact nonparametric Bayesian inference on latent functions, that is particularly suitable for Big Data tasks. Firstly, we introduce a class of stochastic processes we refer to as string Gaussian processes (string GPs), which are not to be mistaken for Gaussian processes operating on text. We construct string GPs so that their finite-dimensional marginals exhibit suitable local conditional independence structures, which allow for scalable, distributed, and flexible nonparametric Bayesian inference, without resorting to approximations, and while ensuring some mild global regularity constraints. Furthermore, string GP priors naturally cope with heterogeneous input data, and the gradient of the learned latent function is readily available for explanatory analysis. Secondly, we provide some theoretical results relating our approach to the standard GP paradigm. In particular, we prove that some string GPs are Gaussian processes, which provides a complementary global perspective on our framework. Finally, we derive a scalable and distributed MCMC scheme for supervised learning tasks under string GP priors. The proposed MCMC scheme has computational time complexity O(N)\mathcal{O}(N) and memory requirement O(dN)\mathcal{O}(dN), where NN is the data size and dd the dimension of the input space. We illustrate the efficacy of the proposed approach on several synthetic and real-world datasets, including a dataset with 66 millions input points and 88 attributes.

Keywords

Cite

@article{arxiv.1507.06977,
  title  = {String and Membrane Gaussian Processes},
  author = {Yves-Laurent Kom Samo and Stephen Roberts},
  journal= {arXiv preprint arXiv:1507.06977},
  year   = {2016}
}

Comments

To appear in the Journal of Machine Learning Research (JMLR), Volume 17

R2 v1 2026-06-22T10:18:13.783Z