Discovering Hidden Features with Gaussian Processes Regression
Vivarelli, Francesco, Williams, Christopher K. I.
–Neural Information Processing Systems
W is often taken to be diagonal, but if we allow W to be a general positive definite matrix which can be tuned on the basis of training data, then an eigen-analysis of W shows that we are effectively creating hidden features, where the dimensionality of the hidden-feature space is determined by the data. We demonstrate the superiority of predictions usi ng the general matrix over those based on a diagonal matrix on two test problems.
Neural Information Processing Systems
Dec-31-1999
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