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

950 B

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
    • Supervised Learning
    • Regression vs Classification
  2. 02_Data_Science_Process
    • The 6 phases of a project
  3. 03_Logistic_Regression
    • Odds and Probability
    • Sigmoid Function
  4. 04_Model_Evaluation
    • Confusion Matrix, Accuracy, Precision, Recall
    • ROC and AUC
  5. 05_Imbalanced_Data
    • SMOTE and Resampling
  6. 06_KNN_Algorithm
    • Distance Measures
    • How KNN works
  7. 07_Naive_Bayes
    • Bayes Theorem
    • Spam Filter Example
  8. 08_Decision_Tree
    • Nodes and Splitting
    • Gini and Entropy