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TST: Add sklearn <-> skglm match tests for Poisson and Gamma predictions #323
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mathurinm
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floriankozikowski:matchsklearnGLE
Jul 28, 2025
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9df9d80
follow up to PR 321, add unit test for Poisson and Gamma match with s…
floriankozikowski 2479119
add inverse link function
floriankozikowski 58587cc
merge unit tests in single parametrized unit test
floriankozikowski 05f1edb
make inverse_link the identity by default for API consistency
floriankozikowski a1302a5
call argument Xw for clarity
floriankozikowski 4041b1a
run test on random values of y instead
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one last thing : IMO it makes sense to run the test on completely random values of
y. They don't have to fit the model well, thay could be random integers between 0 and 5. We're notchecking statistical validity, we're checking that the optimizer works well and we return the same thing as sklearn. This would make the test simpler.