inst/help/mlClassificationBoosting.md

Boosting Classification

Boosting works by sequentially adding features to an decision tree ensemble, each one correcting its predecessor. However, instead of changing the weights for every incorrect classified observation at every iteration, Boosting method tries to fit the new feature to the residual errors made by the previous feature.

Assumptions

Input

Assignment Box

Tables

Plots

Data Split Preferences

Holdout Test Data

Training and Validation Data

Training Parameters

Algorithmic Settings

Number of Trees

Add Predicted Classes to Data

Generates a new column in your dataset with the class labels of your classification result. This gives you the option to inspect, classify, or predict the generated class labels.

Output

Boosting Classification Model Table

Evaluation Metrics

References

R-packages

Example



jasp-stats/jaspMachineLearning documentation built on April 5, 2025, 3:52 p.m.