Supervised Machine Learning From First Principles
Offered By: Udemy
Course Description
Overview
Discussing the principles behind the most used Machine Learning algorithms
What you'll learn:
What you'll learn:
- Machine Learning Principles
- The principles behind Machine Learning algorithms (not just the codes!)
- Regression (Linear Regression, Multiple Linear Regression, Polynomial Regression, and Support Vector Regression)
- Classification (Logistic Regression, k-Nearest Neighbours, Trees, and Support Vector Machines)
- Other principles such as Cross Validation, AIC, BIC, and choosing the right metrics for your algorithm
This course is intended to introduce the principles behind the algorithms and concepts in Machine Learning. Understanding these will help you to take your Machine Learning skills to the next level. As Machine Learning is a tool, without understanding the principles, one will not fully utilize it and come up with valuable insights. What does it mean to have an MSEof 50 000? Why does this ML model work better than the other one? What is the best metric for the problem at hand - Accuracy, Specificity or Recall?
Taught by
Houston Muzamhindo
Related Courses
Machine LearningUniversity of Washington via Coursera Machine Learning
Stanford University via Coursera Machine Learning
Georgia Institute of Technology via Udacity Statistical Learning with R
Stanford University via edX Machine Learning 1—Supervised Learning
Brown University via Udacity