斯坦福大学(Andrew Ng)机器学习课程讲义

http://see.stanford.edu/see/courseinfo.aspx?coll=348ca38a-3a6d-4052-937d-cb017338d7b1

http://www.stanford.edu/class/cs229/materials.html

Lecture notes 1 (ps) (pdf)   Supervised Learning, Discriminative Algorithms
Lecture notes 2 (ps) (pdf)   Generative Algorithms
Lecture notes 3 (ps) (pdf)   Support Vector Machines
Lecture notes 4 (ps) (pdf)   Learning Theory
Lecture notes 5 (ps) (pdf)   Regularization and Model Selection
Lecture notes 6 (ps) (pdf)   Online Learning and the Perceptron Algorithm. (optional reading)
Lecture notes 7a (ps) (pdf)   Unsupervised Learning, k-means clustering.
Lecture notes 7b (ps) (pdf)   Mixture of Gaussians
Lecture notes 8 (ps) (pdf)   The EM Algorithm
Lecture notes 9 (ps) (pdf)   Factor Analysis
Lecture notes 10 (ps) (pdf)   Principal Components Analysis
Lecture notes 11 (ps) (pdf)   Independent Components Analysis
Lecture notes 12 (ps) (pdf)   Reinforcement Learning and Control 


转自:http://blog.163.com/bioinfor_cnu/blog/static/194462237201181411551651/

你可能感兴趣的:(斯坦福大学(Andrew Ng)机器学习课程讲义)