Using the Equivalent Kernel to Understand Gaussian Process Regression
Sollich, Peter, Williams, Christopher
–Neural Information Processing Systems
The equivalent kernel [1] is a way of understanding how Gaussian process regression works for large sample sizes based on a continuum limit. In this paper we show (1) how to approximate the equivalent kernel of the widely-used squared exponential (or Gaussian) kernel and related kernels, and (2) how analysis using the equivalent kernel helps to understand the learning curves for Gaussian processes.
Neural Information Processing Systems
Dec-31-2005