Foundations of Language Technology

Course content is available at the  Moodle Website.

Please note that the content of this website may be subject to change

Lecturers

 

Practice Classes

 

 

Prerequisites

The course assumes familiarity with basic computing concepts, but will not assume any knowledge of the Python language or linguistics, which will be acquired during the course. These skills are helpful and will enhance our discussions. If you like to work with your own notebook, we kindly ask you to follow the installation instructions given at  http://www.nltk.org/download.

Registration

Please use  TUCaN to register for the lecture and the exam.

Timetable

Exam

  • TBA

Course content

The lecture offers an introduction into the perspectives, problems, methods and techniques of text technology. All examples and tutorials are based on the programming language Python.

Key aspects:

  • Natural language processing (NLP)
    • Tokenizing
    • Segmentation
    • Part-of-Speech Tagging
    • Corpora
    • Statistical analysis
  • Machine Learning
    • Categorization and classification
    • Information Extraction
  • Introduction to Python
    • Data Structures
    • Library NLTK
    • Structured Programming

The course is based on the Python programming language together with an open source library called the Natural Language Toolkit (NLTK). NLTK allows explorative and problem-solving learning of theoretical concepts without the requirement of extensive programming knowledge.

Literature

Office Hour

  • TBA

What You Can Expect from Us

  • interactive lecture with integrated tutorials
  • problem based and explorative learning
  • stimulating environment
  • web page, moodle

What we expect from you

  • commitment
  • feedback
  • active participation

 Module-Guide Computer Science

If you like to have a jump start on NLTK, have a look at this  video.

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