Files
DMCT-NOTES/unit 4/00_Index.md
2025-11-24 16:55:19 +05:30

22 lines
632 B
Markdown

# Unit 4: Classification and Prediction
Welcome to your simplified notes for Unit 4.
## Table of Contents
1. [[01_Classification_Basics|Classification Basics]]
- Classification vs Prediction
- Training vs Testing
2. [[02_Decision_Trees|Decision Tree Induction]]
- How Trees work
- Attribute Selection (Info Gain, Gini Index)
- Pruning
3. [[03_Bayesian_Classification|Bayesian Classification]]
- Bayes' Theorem
- Naive Bayes Classifier
4. [[04_KNN_Algorithm|K-Nearest Neighbors (KNN)]]
- Lazy Learning
- Distance Measures
5. [[05_Rule_Based_Classification|Rule-Based Classification]]
- IF-THEN Rules