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:




 


11-734 Advanced Machine Translation Seminar

Units:6.0
Department:Language Technologies
Prerequisites:11-731
Related URLs:http://www.lti.cs.cmu.edu/

The Advanced Machine Translation Seminar is a graduate-level seminar on current research topics in Machine Translation. The seminar will cover recent research on different approaches to Machine Translation (Statistical MT, Example-based MT, Interlingua and rule-based approaches, hybrid approaches, etc.). Related problems that are common to many of the various approaches will also be discussed, including the acquisition and construction of language resources for MT (translation lexicons, language models, etc.), methods for building large sentence-aligned bilingual corpora, automatic word alignment of sentence-parallel data, etc. The material covered will be mostly drawn from recent conference and journal publications on the topics of interest and will vary from year to year. The course will be run in a seminar format, where the students prepare presentations of selected research papers and lead in class discussion about the presented papers. Prerequisites & corequisites: 11-731: Machine Translation, or instructor approval.


  Popularity index
Rank for this semester:#1213
Rank in this department:#8

  Students also scheduled
08-612 Sourcing Management
73-100 Principles of Economics
99-102 Computing @ Carnegie Mellon
73-200 Macroeconomics
73-150 Microeconomics
32-312 Naval Ship Systems II-Weapons
05-795 Applications of Cognitive Science
11-792 Software Engineering for Informatio...
99-101 Computing @ Carnegie Mellon
15-211 Fundamental Data Structures and Alg...


SecTimeDayInstructorLocation 
A1:30 - 2:50 pmW LavieBH 154AAdd course to my schedule

 




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