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Topics


We followed Speech and Language Processing, 3rd Ed., as the primary text book for the course.

  1. Regular Expressions, Text Normalization, Edit Distance

  2. Edit Distance

  3. N-gram Language Models

  4. Naive Bayes and Sentiment Classification

  5. Logistic Regression

  6. Vector Semantics and Embeddings

  7. Neural Networks and Neural Language Models

  8. Sequence Labeling for Parts of Speech and Named Entities

  9. Deep Learning Architectures for Sequence Processing

  10. Contextual Embeddings

  11. Machine Translation

  12. Constituency Grammars

  13. Constituency Parsing

  14. Dependency Parsing

  15. Logical Representations of Sentence Meaning

  16. Computational Semantics and Semantic Parsing

  17. Information Extraction

  18. Word Senses and WordNet

  19. Semantic Role Labeling and Argument Structure

  20. Lexicons for Sentiment, Affect, and Connotation 2

  21. Coreference Resolution

  22. Discourse Coherence

  23. Question Answering

  24. Chatbots and Dialogue Systems

  25. Phonetics

  26. Automatic Speech Recognition and Text-to-Speech

Workshops Included with The Course


Acknowledgements


Heartiest gratitude to:

Annajiat Alim Rasel, Senior Lecturer, Department of Computer Science and Engineering and Deputy Director, Institutional Quality Assurance Cell, BRAC University. Also the instructor of this course.

Dan Jurafsky, Jackson Eli Reynolds Professor in Humanities, Professor of Linguistics, Professor of Computer Science, Stanford University

and his co-author,

James H. Martin, Professor of Computer Science and a fellow in the Institute of Cognitive Science, University of Colorado Boulder for their open source book, Speech and Language Processing, 3rd Ed. which was the primary learning textbook.

Software Carpentry, for their open source NLP learning repos.