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.
Date | Topics | References | Out | Due |
---|---|---|---|---|
March 27 | Course introduction | |||
March 29 | Linear and non-linear regression | Sec. 1.1 | ||
April 3 | Probability theory | Sec. 1.2 | ||
April 4 (x-hour) | Introduction to Matlab | |||
April 5 | ML and MAP regression | Sec. 3.1 | ||
April 10 | Model selection | Sec. 1.3 | ||
April 12 | Project spotlight presentations Locally weighted regression | hw1 | project proposal | |
April 17 | Classification: logistic regression | Sec. 4.3 | ||
April 19 | Gaussian Discriminant Analysis; Naive Bayes | Sec. 4.2 | ||
April 24 | kNN; Decision trees | Sec. 2.5, 14.4 | ||
April 26 | Support Vector Machines | Sec 7.1 | hw2 | hw1 |
May 1 | Support Vector Machines (part 2) | |||
May 3 | Kernels; SMO | |||
May 8 | Project milestone presentations | project milestone | ||
May 10 | k-means; Mixture of Gaussians | Sec. 9.1, 9.2, 9.3 | hw2 | |
May 15 | Expectation Maximization | Sec. 12.2.2, 12.2.4 | ||
May 17 | Principal Component Analysis | Sec. 12.1 | hw3 | |
May 22 | Multidimensional Scaling | |||
May 24 | "How to prepare a bad poster"; Isomap | hw3 | ||
May 29 | Project poster presentations (at 10am, 2nd floor of Hopkins Center for the Arts) | |||
May 30 | project final write-up |