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tests / p-values for groups of multiple variables in GLMMs #81

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qiuyugong-aifi opened this issue Dec 12, 2022 · 1 comment
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enhancement New feature or request

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@qiuyugong-aifi
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qiuyugong-aifi commented Dec 12, 2022

Hi,

Thank you for this great package.

I am just wondering is there a way to get p value of the model like following?
Screen Shot 2022-12-12 at 12 15 15 PM
Screen Shot 2022-12-12 at 12 15 36 PM

Thank you!

Q

@fabsig
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fabsig commented Dec 13, 2022

By running the code as you do it you obtain p-values for individual variables. Anova-style p-values for multiple variables (e.g., all fixed effects dummies of a factorial variable) is currently not possible.

While being simple from a statistical point of view, the question is how to implement this consistently in both the R and the Python package. What is currently not yet entirely clear to me is how do we let the software (automatically) know which variables belong together (given that GPBoost does not use the R-style formula notation). I will think about it and let you know if there is an update.

@fabsig fabsig added the enhancement New feature or request label Dec 13, 2022
@fabsig fabsig changed the title p value of the model? tests / p-values for groups of multiple variables in GLMMs Dec 13, 2022
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