The tutorial includes
- What is a Decision Tree? How does it work?
- Regression Trees vs Classification Trees
- How does a tree decide where to split?
- What are the key parameters of model building and how can we avoid over-fitting in decision trees?
- Are tree based models better than linear models?
- Working with Decision Trees in R and Python
- What are the ensemble methods of trees based model?
- What is Bagging? How does it work?
- What is Random Forest ? How does it work?
- What is Boosting ? How does it work?
- Which is more powerful: GBM or Xgboost?
- Working with GBM in R and Python
- Working with Xgboost in R and Python
- Where to Practice ?
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