Machine Learning
Syllabus, evaluation and other information:
Some usefull references:
Hastie, Tibshirani, Friedman - Elements of Statistical Learning.
Presentations:
Statistical and Machine Learning
Linear Regression
Collinearity
Ridge Regression
Cross Validation
Maximum Likelihood with Restrictions
B-Splines
EM algorithm, Gaussian mixture and k-means
Codes:
Codes and data for the course are available at the github repository: https://github.com/IrvingGomez/MachineLearning