Completed
Optimization for machine learning
Class Central Classrooms beta
YouTube videos curated by Class Central.
Classroom Contents
Introduction to Optimization
Automatically move to the next video in the Classroom when playback concludes
- 1 Intro
- 2 What you will learn
- 3 Before we start
- 4 What is the likelihood?
- 5 Example: Balls in urns
- 6 Maximum likelihood estimator
- 7 Example: Coin flips
- 8 Likelihood - Cost
- 9 Back to the urn problem...
- 10 Grid search (brute force)
- 11 Local vs. global minima
- 12 Convex vs. non-convex functions
- 13 Implementation
- 14 Lecture attendance problem
- 15 Multi-dimensional gradients
- 16 Multi-dimensional gradient descent
- 17 Differentiable functions
- 18 Optimization for machine learning
- 19 Stochastic gradient descent
- 20 Regularization
- 21 Sparse coding