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DSMML
2004
Springer

Extensions of the Informative Vector Machine

13 years 10 months ago
Extensions of the Informative Vector Machine
The informative vector machine (IVM) is a practical method for Gaussian process regression and classification. The IVM produces a sparse approximation to a Gaussian process by combining assumed density filtering with a heuristic for choosing points based on minimizing posterior entropy. This paper extends IVM in several ways. First, we propose a novel noise model that allows the IVM to be applied to a mixture of labeled and unlabeled data. Second, we use IVM on a blockdiagonal covariance matrix, for “learning to learn” from related tasks. Third, we modify the IVM to incorporate prior knowledge from known invariances. All of these extensions are tested on artificial and real data.
Neil D. Lawrence, John C. Platt, Michael I. Jordan
Added 01 Jul 2010
Updated 01 Jul 2010
Type Conference
Year 2004
Where DSMML
Authors Neil D. Lawrence, John C. Platt, Michael I. Jordan
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