Fast Gradient Boosting with CatBoost - KDnuggets
In gradient boosting, predictions are made from an ensemble of weak learners. Unlike a random forest that creates a decision tree for each sample, in gradient boosting, trees are created one after the other. Previous trees in the model are not altered. Results from the previous tree are used to improve the next one. In this piece, we'll take a closer look at a gradient boosting library called CatBoost.
Oct-16-2020, 12:10:40 GMT