Basic Math Concepts – Decision Tree Regression
Concept | Why It’s Needed |
---|---|
Mean (Average) | To calculate the predicted value at each leaf node. |
Difference / Subtraction | To measure how far each prediction is from the actual value. |
Squares and Squared Error | Used in computing how “wrong” a prediction is (error = (actual – predicted)²). |
Comparison Operators (<, >, ==) | To decide how to split the data at each decision point. |
Logic (if/else) | To navigate through the tree for splitting and prediction. |
Counting (Length, Frequency) | To decide when to stop splitting (e.g., few samples left). |
Basic Understanding of Tables / Rows / Columns | To handle data structured like CSVs or lists of lists. |
Decision Tree Regression – Decision Tree Regression Use Case Checklist