Files
DMCT-NOTES/unit 2/00_Index.md
Akshat Mehta 8f8e35ae95 unit 2 added
2025-11-24 15:26:41 +05:30

29 lines
950 B
Markdown

# Machine Learning Notes
Welcome to your simplified Machine Learning notes! These notes are designed to be easy to understand.
## Table of Contents
1. [[01_Introduction_to_ML|Introduction to Machine Learning]]
- Supervised Learning
- Regression vs Classification
2. [[02_Data_Science_Process|Standard Process for Data Science (CRISP-DM)]]
- The 6 phases of a project
3. [[03_Logistic_Regression|Logistic Regression]]
- Odds and Probability
- Sigmoid Function
4. [[04_Model_Evaluation|Model Evaluation Metrics]]
- Confusion Matrix, Accuracy, Precision, Recall
- ROC and AUC
5. [[05_Imbalanced_Data|Handling Imbalanced Data]]
- SMOTE and Resampling
6. [[06_KNN_Algorithm|K-Nearest Neighbors (KNN)]]
- Distance Measures
- How KNN works
7. [[07_Naive_Bayes|Naive Bayes Classifier]]
- Bayes Theorem
- Spam Filter Example
8. [[08_Decision_Tree|Decision Tree Algorithm]]
- Nodes and Splitting
- Gini and Entropy