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Computational Linguistics

Course Objectives
In this course, the main goal is to define the methods and approaches used in Computational Linguistics.
Course materials
  • Daniel Jurafsky and James H. Martin, Speech and language processing an introduction to natural language processing, computational linguistics, and speech, 2000.
Assessment
20% Midterm exam + 20% Project (compulsory) + 60% Final exam
Prerequisites
there is no formal prerequisite, to get theory of computation (automata theory) course before is recommended.
 
Week Subjects
1. Introduction to NLP concept and terms
2. Normalization, Tokenizing, Lemmatization, Parsing
3. Syntax, N-Gram analysis
4. Corpus: Features and Analysis
5. Part of Speech Tagging, Treebank
6. Semantic analysis (probabilistic methods)
7. Morphological and Semantic Ambiguity
8. Midterm Exam
9. Lexical Similarity
10. Semantic Similarity
11. Dialogue Systems, Question Answering
12. Machine Translation
13. Keyword Extraction, Document Summarization
14. Paraphrasing, Ontology Mapping
15. Review for final exam
  Final Exam

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