Edward Snelson, Carl Edward Rasmussen, and Zoubin Ghahramani
2004
We generalise the Gaussian process (GP) framework for regression by learning a nonlinear transformation of the GP outputs. This allows for non-Gaussian processes and non-Gaussian noise. The learning algorithm chooses a nonlinear transformation such that transformed data is well-modelled by a GP. This can be seen as including a preprocessing transformation as an integral part of the probabilistic modelling problem, rather than as an ad-hoc step. We demonstrate on several real regression problems that learning the transformation can lead to significantly better performance than using a regular GP, or a GP with a fixed transformation.
In: Neural Information Processing Systems 16 (NIPS)
| Type: | Inproceedings |
| URL: | http://www.gatsby.ucl.ac.uk/~snelson/gpwarp.pdf |