← curriculum/phase 2 · Ml Fundamentals
edit on github ↗
← all lessons in phase
phase 2 · 18 lessons
  • 01What Is Machine Learning
  • 02Linear Regression
  • 03Logistic Regression
  • 04Decision Trees
  • 05Support Vector Machines
  • 06Knn And Distances
  • 07Unsupervised Learning
  • 08Feature Engineering
  • 09Model Evaluation
  • 10Bias Variance
  • 11Ensemble Methods
  • 12Hyperparameter Tuning
  • 13Ml Pipelines
  • 14Naive Bayes
  • 15Time Series
  • 16Anomaly Detection
  • 17Imbalanced Data
  • 18Feature Selection
‹
›
phase 2 · lesson 03 of 18

Logistic Regression

03-logistic-regression·full lesson folder ↗

← previous
Linear Regression
complete & next →
Decision Trees
Edit with