Deep Latent-Variable Kernel Learning

Volume: 52, Issue: 10, Pages: 10276 - 10289
Published: Oct 1, 2022
Abstract
Deep kernel learning (DKL) leverages the connection between the Gaussian process (GP) and neural networks (NNs) to build an end-to-end hybrid model. It combines the capability of NN to learn rich representations under massive data and the nonparametric property of GP to achieve automatic regularization that incorporates a tradeoff between model fit and model complexity. However, the deterministic NN encoder may weaken the model regularization of...
Paper Details
Title
Deep Latent-Variable Kernel Learning
Published Date
Oct 1, 2022
Volume
52
Issue
10
Pages
10276 - 10289
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