Schedule (Section 0101)

Subject to change.

Date Topics Readings
Th Jan 26 Welcome to Machine Learning
Tu Jan 31 Decision Trees CIML 1 + Syllabus
Th Feb 2 Limits of learning; Overfitting/Underfitting CIML 2
Tu Feb 7 Geometry and nearest neighbors CIML 3-3.3
Th Feb 9 K-means clustering CIML 3.4-3.5
Tu Feb 14 Perceptron I CIML 4-4.5
Th Feb 16 Perceptron II CIML 4.5-4.7
Tu Feb 21 Practical Issues CIML 5-5.5
Th Feb 23 Learning from Imbalanced Data CIML 6.1
Tu Feb 28 Beyond Binary Classification CIML 6.2-6.3
Th Mar 2 Ranking reductions/Catch-up/Practice Problems
Tu Mar 7 MIDTERM
Th Mar 9 Linear Classifiers and Gradient Descent CIML 7-7.4
Tu Mar 14 Snow day
Th Mar 16 Sub-gradient descent CIML 7.5-7.7
Spring Break!
Tu Mar 28 Probabilistic Models I CIML 9-9.5
Th Mar 30 Probabilistic Models II CIML 9.6-9.7
Tu Apr 4 Neural Networks I CIML 10-10.3
Th Apr 6 Neural Networks II CIML 10.4-10.6
Tu Apr 11 PCA CIML 15-15.2
Th Apr 13 Lab: Practice Problems
Tu Apr 18 Kernels CIML 11-11.3
Th Apr 20 Support Vector Machines I CIML 11.4-11.6
Tu Apr 25 Support Vector Machines II CIML 11.4-11.6
Th Apr 27 Bias and Fairness CIML 8
Tu May 2 Deep Learning I
Th May 4 Deep Learning II (see slides from May 2)
Tu May 9 Review and Perspectives
Th May 11

Web Accessibility