LMC Variational Strategy vs LMC Kernel; trying to understand mean functions. #2609
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fjaraavilaa
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I see someone tried to already solve this problem: |
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Hello. I am a new user and I am wondering one specific thing. I am not sure if I am, even theoretically, thinking things wrong.
I have a deterministic function for a Multi-Task mean.
This deterministic function is per task and it is sort of dependent on the task index. Nonetheless, I am not sure if I use a variational strategy how to proceed, given that the example here: https://docs.gpytorch.ai/en/v1.12/examples/04_Variational_and_Approximate_GPs/SVGP_Multitask_GP_Regression.html uses pre-made functions. I would also like to do something like this: http://bayesiandeeplearning.org/2019/papers/27.pdf . I am not sure how feasible it ends up being.
Thanks!
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