edit
at MLSS, Arequipa on Aug 2, 2016
[pdf]
Introduction to Gaussian Processes II
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$$
×
Neil D. Lawrence, University of Sheffield
Links
Abstract
In the second session we will look at how Gaussian process models are related to Kalman filters and how they may be extended to deal with multiple outputs and mechanistic models.