SigGPDE: scaling sparse Gaussian Processes on sequential data
Making predictions and quantifying their uncertainty when the input data is sequential is a fundamental learning challenge, recently attracting increasing attention. We develop SigGPDE, a new scalable sparse variational inference framework for Gaussian Processes (GPs) on sequential data. Our contrib...
Main Authors: | Lemercier, M, Salvi, C, Cass, T, Bonilla, EV, Damoulas, T, Lyons, T |
---|---|
Format: | Internet publication |
Language: | English |
Published: |
2021
|
Similar Items
-
SigGPDE: scaling sparse Gaussian Processes on sequential data
by: Lemercier, M, et al.
Published: (2021) -
Distribution regression for sequential data
by: Lemercier, M, et al.
Published: (2021) -
Distribution regression for sequential data
by: Lemercier, M, et al.
Published: (2020) -
Higher order kernel mean embeddings to capture filtrations of stochastic processes
by: Salvi, C, et al.
Published: (2021) -
Higher order kernel mean embeddings to capture filtrations of stochastic processes
by: Salvi, C, et al.
Published: (2022)