Difference between revisions of "Syllabus for Machine Learning 10-601 in Fall 2013"

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| M 9/2 || ''No class - Labor day'' ||
 
| M 9/2 || ''No class - Labor day'' ||
 
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| W 9/4 || [[10-601 Introduction to Probability|Overview and Intro to Probability]] || William || || HW: Working with Probabilities
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| W 9/4 || [[10-601 Introduction to Probability|Overview and Intro to Probability]] || William|| HW: Working with Probabilities
 
|-  
 
|-  
| M 9/9 || [[10-601 Naive Bayes|The Naive Bayes algorithm]] || William || previous HW ||
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| M 9/9 || [[10-601 Naive Bayes|The Naive Bayes algorithm]] || William ||
 
|-  
 
|-  
| W 9/11 || [[10-601 Perceptrons and Voted Perceptrons|The Perceptron algorithm]] || William ||   || HW: Implement Naive Bayes and the Perceptron algorithm
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| W 9/11 || [[10-601 Perceptrons and Voted Perceptrons|The Perceptron algorithm]] || William ||   HW: Implement Naive Bayes and the Perceptron algorithm
 
|-  
 
|-  
 
| M 9/16 | [[10-601 Logistic Regression|Logistic Regression]] || William ||                   
 
| M 9/16 | [[10-601 Logistic Regression|Logistic Regression]] || William ||                   

Revision as of 15:53, 31 July 2013

This is the syllabus for Machine Learning 10-601 in Fall 2013.

Prezi Overview of All the Topics in the Course

Link to Prezi Overview

Schedule

Schedule for 10-601 in Fall 2013
Date Topic Lecturer Assignment
M 9/2 No class - Labor day
W 9/4 Overview and Intro to Probability William HW: Working with Probabilities
M 9/9 The Naive Bayes algorithm William
W 9/11 The Perceptron algorithm William HW: Implement Naive Bayes and the Perceptron algorithm
Logistic Regression William
W 9/18 Evaluating and comparing classifiers William
M 9/23 Neural networks Eric
W 9/25 K-nearest neighbor classifiers Eric
M 9/30 Decision trees Eric
W 10/2 PAC-learning and learning theory William
M 10/7 Bias-variance and linear regression William
W 10/9 K-means and Mixture models Eric
M 10/14 Dimensionality Reduction Eric
W 10/16 Modeling distributions with Bayes Nets and Markov Fields Eric
M 10/21 Learning with graphical models Eric
W 10/23 Topic models William
M 10/28 HMMs Eric
W 10/30
M 11/4
W 11/6
M 11/11
W 11/13
M 11/18
W 11/20
M 11/25
W 11/27 Thanksgiving - class cancelled
M 12/2
W 12/4

Section-by-Section

Linear Classifiers

A probabilistic view of linear classification:

Another view of classification:

Summary: