Infinite-Horizon Gaussian Processes
Arno Solin, James Hensman, Richard E. Turner
–Neural Information Processing Systems
Gaussian processes provide a flexible framework for forecasting, removing noise, and interpreting long temporal datasets. State space modelling (Kalman filtering) enables these non-parametric models to be deployed on long datasets by reducing the complexity to linear in the number of data points. The complexity is still cubic in the state dimensionmwhich is an impediment to practical application. In certain special cases (Gaussian likelihood, regular spacing) the GP posterior will reach a steady posterior state when the data are very long. We leverage this and formulate an inference scheme for GPs with general likelihoods, where inference is based on single-sweep EP (assumed density filtering).
Neural Information Processing Systems
Mar-26-2025, 22:03:21 GMT