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Modify bootstrapping when model includes random effects #23

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mfasiolo opened this issue Sep 25, 2017 · 0 comments
Open

Modify bootstrapping when model includes random effects #23

mfasiolo opened this issue Sep 25, 2017 · 0 comments

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@mfasiolo
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Currently bootstrapping can fail when random effects are included in the model. If a subject has very few associated observations, it might be left out the training or test set which results in an error. There should be a ways of resampling that makes sure that every subject appears in every bootstrap dataset. The same problem might occur in cross-validation.

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