Modelling Non-Smooth Signals with Complex Spectral Structure
Abstract
The Gaussian Process Convolution Model (GPCM; Tobar et al., 2015a) is a model for signals with complex spectral structure. A significant limitation of the GPCM is that it assumes a rapidly decaying spectrum: it can only model smooth signals. Moreover, inference in the GPCM currently requires (1) a mean-field assumption, resulting in poorly calibrated uncertainties, and (2) a tedious variational optimisation of large covariance matrices. We redesign the GPCM model to induce a richer distribution over the spectrum with relaxed assumptions about smoothness: the Causal Gaussian Process Convolution Model (CGPCM) introduces a causality assumption into the GPCM, and the Rough Gaussian Process Convolution Model (RGPCM) can be interpreted as a Bayesian nonparametric generalisation of the fractional Ornstein-Uhlenbeck process. We also propose a more effective variational inference scheme, going beyond the mean-field assumption: we design a Gibbs sampler which directly samples from the optimal variational solution, circumventing any variational optimisation entirely. The proposed variations of the GPCM are validated in experiments on synthetic and real-world data, showing promising results.
Cite
Text
Bruinsma et al. "Modelling Non-Smooth Signals with Complex Spectral Structure." Artificial Intelligence and Statistics, 2022.Markdown
[Bruinsma et al. "Modelling Non-Smooth Signals with Complex Spectral Structure." Artificial Intelligence and Statistics, 2022.](https://mlanthology.org/aistats/2022/bruinsma2022aistats-modelling/)BibTeX
@inproceedings{bruinsma2022aistats-modelling,
title = {{Modelling Non-Smooth Signals with Complex Spectral Structure}},
author = {Bruinsma, Wessel P. and Tegnér, Martin and Turner, Richard E.},
booktitle = {Artificial Intelligence and Statistics},
year = {2022},
pages = {5166-5195},
volume = {151},
url = {https://mlanthology.org/aistats/2022/bruinsma2022aistats-modelling/}
}