CS074/CS174, Spring 2012
Machine Learning and Statistical Data Analysis

This page will be updated frequently with current and upcoming topics. Chapter references, when available, are to the recommended course textbook, Pattern Recognition and Machine Learning.

DateTopicsReferencesOutDue
March 27Course introduction
March 29Linear and non-linear regressionSec. 1.1
April 3Probability theorySec. 1.2
April 4 (x-hour)Introduction to Matlab
April 5ML and MAP regressionSec. 3.1
April 10Model selection
Sec. 1.3
April 12Project spotlight presentations
Locally weighted regression
hw1project proposal
April 17Classification: logistic regressionSec. 4.3
April 19Gaussian Discriminant Analysis; Naive BayesSec. 4.2
April 24kNN; Decision treesSec. 2.5, 14.4
April 26Support Vector MachinesSec 7.1hw2hw1
May 1Support Vector Machines (part 2)
May 3Kernels; SMO
May 8Project milestone presentationsproject milestone
May 10k-means; Mixture of GaussiansSec. 9.1, 9.2, 9.3hw2
May 15Expectation MaximizationSec. 12.2.2, 12.2.4
May 17Principal Component AnalysisSec. 12.1hw3
May 22Multidimensional Scaling
May 24"How to prepare a bad poster";
Isomap
hw3
May 29Project poster presentations
(at 10am, 2nd floor of Hopkins Center for the Arts)
May 30
project final write-up