Instructor: Kate Saenko, Brian Kulis
This course is an introduction to modern machine learning concepts, techniques, and algorithms. Topics include regression, classification, unsupervised and supervised learning, kernels, support vector machines, feature selection, clustering, sequence models, and Bayesian methods. Weekly labs and projects emphasize taking theory into practice, through applications on real-world problems and data sets.
ps2:Classification
ps3:Cluster,PCA
ps4:Neural Networks
ps5:LDA,CNN
ps6:SVM