Publication
Neural Computation
Paper

Approximation bounds for some sparse kernel regression algorithms

View publication

Abstract

Gaussian processes have been widely applied to regression problems with good performance. However, they can be computationally expensive. In order to reduce the computational cost, there have been recent studies on using sparse approximations in gaussian processes. In this article, we investigate properties of certain sparse regression algorithms that approximately solve a gaussian process. We obtain approximation bounds and compare our results with related methods.

Date

Publication

Neural Computation

Authors

Share