LING539
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LING539 - Statistical Natural Language Processing
Course ID
019929
Course Description
This course introduces the key concepts underlying statistical natural language processing. Students will learn a variety of techniques for the computational modeling of natural language, including: n-gram models, smoothing, Hidden Markov models, Bayesian Inference, Expectation Maximization, Viterbi, Inside-Outside Algorithm for Probabilistic Context-Free Grammars, and higher-order language models. Graduate-level requirements include assignments of greater scope than undergraduate assignments. In addition to being more in-depth, graduate assignments are typically longer and additional readings are required.
Min Units
3
Max Units
3
Repeatable for Credit
No
Grading Basis
GRD - Regular Grades A, B, C, D, E
Career
Graduate
Course Attributes
CE - CL (Cross Listed), GIDP - COGS (Cognitive Science), GIDP - SLAT (Sec. Lang. Acquisition & Teach), GIDP - STATD (Statistics and Data Science)
Course Requisites
two semesters of programming or equivalent
Cross Listed Courses
May be convened with
LING439
Component
Lecture
Optional Component
No