Look at Bayes Non parametric learning #1616
Replies: 8 comments
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Intended for when the model is wrong. Should be good for multimodal distributions |
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I would like to look into this too. And here is another paper that the above paper extends from: |
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Cool! We should also remember to check when Chris Holmes talk goes online on the Newton website. Would be good to save a link :-) |
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Seems to require multiple optimisation problems to be solved every iteration?? |
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One optimisation problem per 'sample' (like normal bootstrap) if I understood it correctly... |
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Yes, "One optimisation problem per 'sample'", but if we want N=5000 samples, then we have to run 5000 times of optimisation -- which sounds heavily to me. But I remember Chris once said this method does not lose computational time compared to normal MCMC, which I might get it wrong but I don't quite understand that. |
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"Bayesian posterior bootstrap"
Lyddon, Holmes, walker 2018 I think
Looks cool
Based on Ferguson 1974 ?
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