lightgbm
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I have a simple regression task (using a LightGBMRegressor) where I want to penalize negative predictions more than positive ones. Is there a way to achieve this with the default regression LightGBM objectives (see https://lightgbm.readthedocs.io/en/latest/Parameters.html)? If not, is it somehow possible to define (many example for default LightGBM model) and pass a custom regression objective?
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Sep 12, 2018
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Jun 10, 2021 - Jupyter Notebook
Describe the bug
Failed to execute Series.drop_duplicates.
In [75]: a = md.DataFrame(np.random.rand(10, 2), columns=['a', 'b'], chunk_size=2)
In [76]: a['a'].drop_duplicates().execute() -
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Feb 10, 2022 - Python
Our xgboost models use the binary:logistic' objective function, however the m2cgen converted version of the models return raw scores instead of the transformed scores.
This is fine as long as the user knows this is happening! I didn't, so it took a while to figure out what was going on. I'm wondering if perhaps a useful warning could be raised for users to alert them of this issue? A warning
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Nov 27, 2021 - Python
This issue has been coming up when I use,
automl.predict_proba(input)
I am using the requirements.txt in venv. Shouldn't input have feature names?
This message did not used to come up and I don't know why.
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Feb 10, 2021 - Python
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Nov 27, 2021 - Python
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Oct 23, 2021 - Java
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Mar 29, 2020
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Jul 1, 2019 - Python
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Mar 22, 2021 - Python
Currently we don't test (or document) that Eland should work with data streams, we should probably test that everything works properly.
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Mar 16, 2021 - Python
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Apr 28, 2021 - Go
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Jan 16, 2022 - Jupyter Notebook
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Feb 6, 2018 - Python
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Oct 30, 2019 - C++
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Jun 5, 2021 - HTML
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Feb 13, 2022 - R
Does HyperGBM's make_experiment return the best model?
How does it work on paramter tuning? It's say that, what's its seach space (e.g. in XGboost)???
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Oct 5, 2021 - Jupyter Notebook
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Feb 11, 2022 - Python
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Summary
mypyshows some issues in LightGBM's Python package.mypy \ --exclude='python-package/compile/|python-package/build' \ --ignore-missing-imports \ python-package/18 errors in 4 files (click me)