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Wild et al., 2021 - Google Patents

Connections and equivalences between the Nyström method and sparse variational Gaussian processes

Wild et al., 2021

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Document ID
15703396177025572124
Author
Wild V
Kanagawa M
Sejdinovic D
Publication year
Publication venue
stat

External Links

Snippet

We investigate the connections between sparse approximation methods for making kernel methods and Gaussian processes (GPs) scalable to massive data, focusing on the Nyström method and the Sparse Variational Gaussian Processes (SVGP). While sparse …
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Classifications

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