Natural Language Processing

Објавено: July 18, 2023
1. Course Title Natural Language Processing
2. Code 4ФЕИТ05032
3. Study program 19-MV
4. Organizer of the study program (unit, institute, department) Faculty of Electrical Engineering and Information Technologies
5. Degree (first, second, third cycle) Second cycle
6. Academic year/semester I/1   7.    Number of ECTS credits 6.00
8. Lecturer Dr Branislav Gerazov
9. Course Prerequisites
10. Course Goals (acquired competencies):

The goal of the course program is to allow students to acquire a wide knowledge of the techniques for the processing of natural language. It is designed to bring close the various approaches and applications through studying the state-of-the-art.

11. Course Syllabus:

1. Introduction to Natural Language Processing 2. Language modelling 3. Text classification and Sentiment analysis 4. Neural Networks for NLP 5. Distributional Hypothesis and Word Embeddings  6. POS tagging  7. Syntax  8. Dependency Parsing  9. Semantics  10. Machine Translation  11. Language Generation  12. Information Extraction  13. Dialogue generation

12. Learning methods:

Combined  learning: lectures with slides and visualisations and independent work on projects.

13. Total number of course hours 180
14. Distribution of course hours 3 + 3
15. Forms of teaching 15.1 Lectures-theoretical teaching 45 hours
15.2 Exercises (laboratory, practice classes), seminars, teamwork 45 hours
16. Other course activities 16.1 Projects, seminar papers 30 hours
16.2 Individual tasks 30 hours
16.3 Homework and self-learning 30 hours
17. Grading
17.1 Exams 0 points
17.2 Seminar work/project (presentation: written and oral) 50 points
17.3. Activity and participation 20 points
17.4. Final exam 30 points
18. Grading criteria (points) up to 50 points 5 (five) (F)
from 51 to 60 points 6 (six) (E)
from 61 to 70 points 7 (seven) (D)
from 71 to 80 points 8 (eight) (C)
from 81 to 90 points 9 (nine) (B)
from 91 to 100 points 10 (ten) (A)
19. Conditions for acquiring teacher’s signature and for taking final exam Attendance to lectures.
20. Forms of assessment Project assignment and final exam.
21. Language Macedonian and English
22. Method of monitoring of teaching quality Surveys, interviews and self-evaluation.
23. Literature
23.1.       Required Literature
No. Author Title Publisher Year
1. Dan Jurafsky and James H. Martin Speech and Language Processing Pearson Education 2014
2. Yoav Goldberg Neural Network Methods for Natural Language Processing Morgan & Claypool Publishers 2017
23.2.       Additional Literature
No. Author Title Publisher Year
1.  Uday Kamath, John Liu, James Whitaker  Deep Learning for NLP and Speech Recognition  Springer  2019
2.  Ian Goodfellow, Yoshua Bengio and Aaron Courville  Deep Learning  MIT Press  2016
3.  Hobson Lane, Cole Howard, Hannes Hapke  Natural Language Processing in Action: Understanding, analyzing, and generating text with Python  Manning Publications  2019