Transductive and Inductive Methods for Approximate Gaussian Process
Regression
A. Schwaighofer and V. Tresp
Abstract:
Gaussian process regression allows a simple analytical treatment of exact
Bayesian inference and has been found to provide good performance, yet scales
badly with the number of training data. In this paper we compare several
approaches towards scaling Gaussian processes regression to large data sets:
the subset of representers method, the reduced rank approximation, online
Gaussian processes, and the Bayesian committee machine. Furthermore we
provide theoretical insight into some of our experimental results. We found
that subset of representers methods can give good and particularly fast
predictions for data sets with high and medium noise levels. On complex low
noise data sets, the Bayesian committee machine achieves significantly better
accuracy, yet at a higher computational cost.
Reference: A. Schwaighofer and V. Tresp.
Transductive and inductive methods for approximate Gaussian process
regression.
In S. Becker, S. Thrun, and K. Obermayer, editors, Advances in Neural
Information Processing Systems 15. MIT Press, 2003.