ICML2023
Bayesian online change point detection with Hilbert space approximate Student-t process
Jeremy Sellier, Petros Dellaportas
3 citations
Abstract
In this paper, we introduce a variant of Bayesian online change point detection with a reducedrank Student-t process (TP) and dependent Student-t noise, as a nonparametric time series model. Our method builds and improves upon the state-of-the-art Gaussian process (GP) change point model benchmark of Saatc ¸i et al. ( 2010 ). The Student-t process generalizes the concept of a GP and hence yields a more flexible alternative. Additionally, unlike a GP, the predictive variance explicitly depends on the training observations, while the use of an entangled Student-t noise model preserves analytical tractability. Our approach also uses a Hilbert space reduced-rank representation of the TP kernel, derived from an eigenfunction expansion of the Laplace operator (Solin & Särkkä, 2020) , to alleviate its computational complexity. Improvements in prediction and training time are demonstrated with real-world data sets.