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feat: Divergence-free and Curl-free Matrix Value Kernels #35

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adam-hartshorne opened this issue Jan 14, 2023 · 1 comment
Open

feat: Divergence-free and Curl-free Matrix Value Kernels #35

adam-hartshorne opened this issue Jan 14, 2023 · 1 comment
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enhancement New feature or request

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@adam-hartshorne
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As described in "Learning divergence-free and curl-free vector fields with matrix-valued kernels" by Macedo and Castro, 2010.

They outline how to define Matrix valued RBF functions which are divergence and curl free, for use in vector flow fields.

@adam-hartshorne adam-hartshorne added the enhancement New feature or request label Jan 14, 2023
@daniel-dodd
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Hi @adam-hartshorne, happy to support you with a PR if this something you are interested in seeing. Note we currently do not have abstractions for multi-output kernel gram and cross-covariances - this might be something we'll need first. But keen to develop/add this soon (also aim to add some multi-output Gaussian process models to MOGPJax, dependent on this). Interested to hear your thoughts. :)

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