Using Deep Belief Nets to Learn Covariance Kernels for Gaussian Processes
Hinton, Geoffrey E., Salakhutdinov, Russ R.
–Neural Information Processing Systems
We show how to use unlabeled data and a deep belief net (DBN) to learn a good covariance kernel for a Gaussian process. We first learn a deep generative model of the unlabeled data using the fast, greedy algorithm introduced by Hinton et.al. If the data is high-dimensional and highly-structured, a Gaussian kernel applied to the top layer of features in the DBN works much better than a similar kernel applied to the raw input. Performance at both regression and classification can then be further improved by using backpropagation through the DBN to discriminatively fine-tune the covariance kernel. Papers published at the Neural Information Processing Systems Conference.
Neural Information Processing Systems
Feb-15-2020, 05:43:34 GMT
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