| agaricus.test | Test part from Mushroom Data Set |
| agaricus.train | Training part from Mushroom Data Set |
| callbacks | Callback closures for booster training. |
| cb.cv.predict | Callback closure for returning cross-validation based predictions. |
| cb.early.stop | Callback closure to activate the early stopping. |
| cb.evaluation.log | Callback closure for logging the evaluation history |
| cb.gblinear.history | Callback closure for collecting the model coefficients history of a gblinear booster during its training. |
| cb.print.evaluation | Callback closure for printing the result of evaluation |
| cb.reset.parameters | Callback closure for resetting the booster's parameters at each iteration. |
| cb.save.model | Callback closure for saving a model file. |
| dim.xgb.DMatrix | Dimensions of xgb.DMatrix |
| dimnames.xgb.DMatrix | Handling of column names of 'xgb.DMatrix' |
| dimnames<-.xgb.DMatrix | Handling of column names of 'xgb.DMatrix' |
| getinfo | Get information of an xgb.DMatrix object |
| getinfo.xgb.DMatrix | Get information of an xgb.DMatrix object |
| predict.xgb.Booster | Predict method for eXtreme Gradient Boosting model |
| predict.xgb.Booster.handle | Predict method for eXtreme Gradient Boosting model |
| print.xgb.Booster | Print xgb.Booster |
| print.xgb.cv.synchronous | Print xgb.cv result |
| print.xgb.DMatrix | Print xgb.DMatrix |
| setinfo | Set information of an xgb.DMatrix object |
| setinfo.xgb.DMatrix | Set information of an xgb.DMatrix object |
| slice | Get a new DMatrix containing the specified rows of original xgb.DMatrix object |
| slice.xgb.DMatrix | Get a new DMatrix containing the specified rows of original xgb.DMatrix object |
| xgb.attr | Accessors for serializable attributes of a model. |
| xgb.attr<- | Accessors for serializable attributes of a model. |
| xgb.attributes | Accessors for serializable attributes of a model. |
| xgb.attributes<- | Accessors for serializable attributes of a model. |
| xgb.Booster.complete | Restore missing parts of an incomplete xgb.Booster object. |
| xgb.create.features | Create new features from a previously learned model |
| xgb.cv | Cross Validation |
| xgb.DMatrix | Construct xgb.DMatrix object |
| xgb.DMatrix.save | Save xgb.DMatrix object to binary file |
| xgb.dump | Dump an xgboost model in text format. |
| xgb.gblinear.history | Extract gblinear coefficients history. |
| xgb.ggplot.deepness | Plot model trees deepness |
| xgb.ggplot.importance | Plot feature importance as a bar graph |
| xgb.importance | Importance of features in a model. |
| xgb.load | Load xgboost model from binary file |
| xgb.model.dt.tree | Parse a boosted tree model text dump |
| xgb.parameters<- | Accessors for model parameters. |
| xgb.plot.deepness | Plot model trees deepness |
| xgb.plot.importance | Plot feature importance as a bar graph |
| xgb.plot.multi.trees | Project all trees on one tree and plot it |
| xgb.plot.shap | SHAP contribution dependency plots |
| xgb.plot.tree | Plot a boosted tree model |
| xgb.save | Save xgboost model to binary file |
| xgb.save.raw | Save xgboost model to R's raw vector, user can call xgb.load to load the model back from raw vector |
| xgb.train | eXtreme Gradient Boosting Training |
| xgboost | eXtreme Gradient Boosting Training |
| xgboost-deprecated | Deprecation notices. |
| [.xgb.DMatrix | Get a new DMatrix containing the specified rows of original xgb.DMatrix object |