Introduction to Natural Language Processing

Overview

SemesterSummer 2026
ECTS5
LevelBachelor
LanguageEnglish

General

Lectures

  • InstructorHenning Wachsmuth
  • Location.Schneiderberg 32, 031
  • Time. Thursday 13:00–14:30
  • First date. April 9, 2026
  • Last date. July 16, 2026

Tutorials

  • Instructors. Timon Ziegenbein
  • LocationWelfengarten 1, F138
  • Time. Tuesday 10:30–12:00
  • First date. April 14, 2026
  • Last date. July 14, 2026

 

 

Description

This course teaches students basic skills needed to tackle analysis and generation tasks in natural language processing (NLP) with knowledge-based methods. Starting from fundamentals of linguistics and empirical methods, the course introduces rule-based and basic statistical techniques. The application of these techniques is exemplified for fundamental NLP tasks, including text segmentation, syntactic parsing, and entity recognition. Students learn to design, implement, and evaluate respective NLP methods, both theoretically and in practical assignments. Besides the topical content, the course aims to educate students in how to conduct data-driven scientific experiments. 

Topics

  • Overview of Natural Language Processing
  • Basics of Linguistics
  • NLP using Rules
  • NLP using Lexicons
  • Basics of Empirical Methods
  • NLP using Grammars
  • NLP using Language Models
  • NLP using Clustering
  • Practical Issues

Recommended pre-requisites

  • Basics of statistics
  • Knowledge of programming, ideally Python

Recommended Literature

  • Daniel Jurafsky and James H. Martin. 2009. Speech and Language Processing: An Introduction to Natural Language Processing, Speech Recognition, and Computational Linguistics. Prentice-Hall, 2nd edition. Free draft of third edition: Speech and Language Processing

Material

Lecture slides

Organizational information

  • General course Information (slides)