Machine Learning with Tree-Based Models in R

DataCamp
via DataCamp
Learn how to use tree-based models and ensembles to make classification and regression predictions with tidymodels.
Save (0)
ClosePlease login

No account yet? Register

Tree-based machine learning models can reveal complex non-linear relationships in data and often dominate machine learning competitions. In this course, you’ll use the tidymodels package to explore and build different tree-based models—from simple decision trees to complex random forests. You’ll also learn to use boosted trees, a powerful machine learning technique that uses ensemble learning to build high-performing predictive models. Along the way, you’ll work with health and credit risk data to predict the incidence of diabetes and customer churn.

Instructor(s)

Sandro Raabe
DataCamp
via DataCamp
Free Trial Available
English
4 Hours
Self paced