Robust Multi-Class Gaussian Process Classification
Hernández-lobato, Daniel, Hernández-lobato, Jose M., Dupont, Pierre
–Neural Information Processing Systems
Multi-class Gaussian Process Classifiers (MGPCs) are often affected by over-fitting problems when labeling errors occur far from the decision boundaries. To prevent this, we investigate a robust MGPC (RMGPC) which considers labeling errors independently of their distance to the decision boundaries. Expectation propagation is used for approximate inference. Experiments with several datasets in which noise is injected in the class labels illustrate the benefits of RMGPC. This method performs better than other Gaussian process alternatives based on considering latent Gaussian noise or heavy-tailed processes.
Neural Information Processing Systems
Feb-14-2020, 21:42:12 GMT
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