non-conjugate gaussian process regression
Fast Bayesian Inference for Non-Conjugate Gaussian Process Regression
We present a new variational inference algorithm for Gaussian processes with non-conjugate likelihood functions. This includes binary and multi-class classification, as well as ordinal regression. Our method constructs a convex lower bound, which can be optimized by using an efficient fixed point update method. We then show empirically that our new approach is much faster than existing methods without any degradation in performance.
Fast Bayesian Inference for Non-Conjugate Gaussian Process Regression
Khan, Emtiyaz, Mohamed, Shakir, Murphy, Kevin P.
We present a new variational inference algorithm for Gaussian processes with non-conjugate likelihood functions. This includes binary and multi-class classification, as well as ordinal regression. Our method constructs a convex lower bound, which can be optimized by using an efficient fixed point update method. We then show empirically that our new approach is much faster than existing methods without any degradation in performance. Papers published at the Neural Information Processing Systems Conference.