Fast and automatic gradient tree boosting designed to avoid manual tuning and cross-validation by utilizing an information theoretic approach. This makes the algorithm adaptive to the dataset at hand; it is completely automatic, and with minimal worries of overfitting. Consequently, the speed-ups relative to state-of-the-art implementations can be in the thousands while mathematical and technical knowledge required on the user are minimized.
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curl https://depscope.dev/api/check/conda/r-agtboostFirst published · 2022-06-07 16:18:44.034000+00:00
Last updated · 2025-09-24 07:49:12.761000+00:00