EECS 595 - Natural Language Processing
Section: 001
Term: WN 2012
Subject: Electrical Engineering and Computer Science (EECS)
Department: CoE Electrical Engineering and Computer Science
Credits:
3
Requirements & Distribution:
BS
Other:
Theme
Waitlist Capacity:
unlimited
Enforced Prerequisites:
Senior standing.
Other Course Info:
F.
BS:
This course counts toward the 60 credits of math/science required for a Bachelor of Science degree.
Repeatability:
May not be repeated for credit.
Primary Instructor:

A survey of syntactic and semantic theories of natural language processing, including unification-based grammars, methods of parsing, and a wide range of semantic theories from artificial intelligence as well as from philosophy of language. Programming is optional, though a project is normally required.

EECS 595 - Natural Language Processing
Schedule Listing
001 (LEC)
P
25830
Open
58
 
-
M 1:00PM - 4:00PM
NOTE: Data maintained by department in Wolverine Access. If no textbooks are listed below, check with the department.


ISBN: 9780131873216
Speech and language processing : an introduction to natural language processing, computational linguistics, and speech recognition, Author: Daniel Jurafsky, James H. Martin., Publisher: Pearson Prentice Hall 2nd ed. 2009
Required
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