Decision Tree Analysis Course
Master decision tree analysis for real-world cost prediction. Learn clean data prep, model tuning, class imbalance handling, AUC-ROC evaluation, and clear stakeholder communication to turn complex risk patterns into actionable business decisions.

flexible workload of 4 to 360h
valid certificate in your country
What will I learn?
This Decision Tree Analysis Course shows you how to define a clear high_cost target, build transparent trees in Python or R, and tune key hyperparameters for reliable performance. You will handle missing data, class imbalance, and outliers, evaluate models with ROC, F1, and calibration tools, and communicate results, risk segmentation, and business-ready recommendations to non-technical stakeholders with confidence.
Elevify advantages
Develop skills
- Decision tree modeling: build interpretable CART models fast in R and Python.
- Performance tuning: optimize depth, pruning, and class weights for sharp metrics.
- Cost-sensitive evaluation: set thresholds using AUC, F1, and business impact.
- Transparent preprocessing: clean, encode, and engineer features for clear trees.
- Stakeholder reporting: turn tree outputs into concise pricing and risk insights.
Suggested summary
Before starting, you can change the chapters and the workload. Choose which chapter to start with. Add or remove chapters. Increase or decrease the course workloadWhat our students say
FAQs
Who is Elevify? How does it work?
Do the courses have certificates?
Are the courses free?
What is the course duration?
What are the courses like?
How do the courses work?
What is the course duration?
What is the cost or price of the courses?
What is an EAD or online course and how does it work?
PDF Course