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10-702 Statistical Machine Learning

Units:12.0
Department:Center for Auto. Learning & Disc.
Prerequisites:10-701 and 36-705
Cross-listed:36-702
Related URLs:http://www.cmu.edu

This course builds on the material presented in 10-701(Machine Learning), introducing new learning methods and going more deeply into their statistical foundations and computational aspects. Applications and case studies from statistics and computing are used to illustrate each topic. Aspects of implementation and practice are also treated. A tentative list of topics to be covered includes (but is not restricted to) the following: Maximum likelihood vs. Bayesian inference; Regression, Classficiation, and Clustering; Graphical Methods, including Causal Inference; The EM Algorithm; Data Augmentation, Gibbs, and Markov Chain Monte Carlo Algorithms; Techniques for Supervised and Unsupervised Learning; Sequential Decision making and Experimental Design.


  Popularity index
Rank for this semester:#881
Rank in this department:#3

  Students also scheduled
46-903 Financial Analysis and Securities T...
46-950 Numerical Methods
17-791 Software Engineering Seminar
93-711 Entrepreneurship in Creative Enterp...
11-741 Information Retrieval
10-701 Machine Learning
16-865 Advanced Mobile Robot Development
46-929 Financial Time Series Analysis
16-722 Sensing and Sensors
05-417 Computer-mediated Communication


The Carnegie Pulse: Pulse Scheduler: 10-702 Statistical Machine Learning
The Carnegie Pulseabout the carnegie pulse | advertise | contact | subscriptions | join 
newsart & cultureopinionseventsclassifiedscourse schedule

My schedule
My textbooks
Most popular
View departments
View locations
View times

Find course by title:




 


10-702 Statistical Machine Learning

Units:12.0
Department:Center for Auto. Learning & Disc.
Prerequisites:10-701 and 36-705
Cross-listed:36-702
Related URLs:http://www.cmu.edu

This course builds on the material presented in 10-701(Machine Learning), introducing new learning methods and going more deeply into their statistical foundations and computational aspects. Applications and case studies from statistics and computing are used to illustrate each topic. Aspects of implementation and practice are also treated. A tentative list of topics to be covered includes (but is not restricted to) the following: Maximum likelihood vs. Bayesian inference; Regression, Classficiation, and Clustering; Graphical Methods, including Causal Inference; The EM Algorithm; Data Augmentation, Gibbs, and Markov Chain Monte Carlo Algorithms; Techniques for Supervised and Unsupervised Learning; Sequential Decision making and Experimental Design.


  Popularity index
Rank for this semester:#881
Rank in this department:#3

  Students also scheduled
46-903 Financial Analysis and Securities T...
46-950 Numerical Methods
17-791 Software Engineering Seminar
93-711 Entrepreneurship in Creative Enterp...
11-741 Information Retrieval
10-701 Machine Learning
16-865 Advanced Mobile Robot Development
46-929 Financial Time Series Analysis
16-722 Sensing and Sensors
05-417 Computer-mediated Communication


The Carnegie Pulse: Pulse Scheduler: 10-702 Statistical Machine Learning
The Carnegie Pulseabout the carnegie pulse | advertise | contact | subscriptions | join 
newsart & cultureopinionseventsclassifiedscourse schedule

My schedule
My textbooks
Most popular
View departments
View locations
View times

Find course by title:




 


10-702 Statistical Machine Learning

Units:12.0
Department:Center for Auto. Learning & Disc.
Prerequisites:10-701 and 36-705
Cross-listed:36-702
Related URLs:http://www.cmu.edu

This course builds on the material presented in 10-701(Machine Learning), introducing new learning methods and going more deeply into their statistical foundations and computational aspects. Applications and case studies from statistics and computing are used to illustrate each topic. Aspects of implementation and practice are also treated. A tentative list of topics to be covered includes (but is not restricted to) the following: Maximum likelihood vs. Bayesian inference; Regression, Classficiation, and Clustering; Graphical Methods, including Causal Inference; The EM Algorithm; Data Augmentation, Gibbs, and Markov Chain Monte Carlo Algorithms; Techniques for Supervised and Unsupervised Learning; Sequential Decision making and Experimental Design.


  Popularity index
Rank for this semester:#881
Rank in this department:#3

  Students also scheduled
46-903 Financial Analysis and Securities T...
46-950 Numerical Methods
17-791 Software Engineering Seminar
93-711 Entrepreneurship in Creative Enterp...
11-741 Information Retrieval
10-701 Machine Learning
16-865 Advanced Mobile Robot Development
46-929 Financial Time Series Analysis
16-722 Sensing and Sensors
05-417 Computer-mediated Communication


SecTimeDayInstructorLocation 
A1:30 - 2:50 pmM WassermanWEH 4623Add course to my schedule
W WassermanWEH 4623

 




  (c) Copyright 2004 The Carnegie Pulse, Carnegie Mellon's first exclusively online student-run news source. campus mirror | RSS    



  (c) Copyright 2004 The Carnegie Pulse, Carnegie Mellon's first exclusively online student-run news source. campus mirror | RSS    



  (c) Copyright 2004 The Carnegie Pulse, Carnegie Mellon's first exclusively online student-run news source. campus mirror | RSS