392123 Introduction to Data Mining (V) (WiSe 2025/2026)

Contents, comment

The course covers foundational methods of data mining, explorative data analysis, and visualization. The focus is on educational data (so-called 'educational data mining' or 'learning analytics'). Example methods are:

  • statistical tests, esp. t-tests and signed rank test
  • Principal Component Analysis
  • k-Means Clustering
  • Item Response Theory
  • Bayesian Knowledge Tracing
  • Variational Auto Encoders
  • Generative Models

The core skills taught are:

  • critical, analytical thinking about models and applications of data mining
  • how to design models (formalization, following modeling arguments)
  • how to implement models (in Python)
  • debugging and interpreting models when applied to data

Requirements for participation, required level

Useful prior knowledge: Neural Networks, Linear Algebra, Probability Theory
Relations to: Information Visualization, Introduction to Machine Learning, Pattern Recognition, Unsupervised Machine Learning, Generative AI

Bibliography

Teaching staff

Dates ( Calendar view )

Frequency Weekday Time Format / Place Period  
weekly Mo 12-14 Unpublished 13.10.2025-06.02.2026

Subject assignments

Module Course Requirements  
39-Inf-DM Grundlagen Datamining Grundlagen Datamining Ungraded examination
Graded examination
Student information
39-Inf-WP-DS Data Science (Basis) Einführende Vorlesung Student information
- Graded examination Student information
39-Inf-WP-DS-x Data Science (Schwerpunkt) Einführende Veranstaltung Seminar o. Vorlesung Student information
- Graded examination Student information
39-Inf-WP-IG Informatik & Gesellschaft (Basis) Einführende Vorlesung Student information
- Graded examination Student information
39-Inf-WP-IG-x Informatik & Gesellschaft (Schwerpunkt) Einführende Veranstaltung Seminar o. Vorlesung Student information
- Graded examination Student information
39-M-Inf-AI-bas Basics of Artificial Intelligence Basics of Artificial Intelligence: Vorlesung Student information
- Ungraded examination Student information

The binding module descriptions contain further information, including specifications on the "types of assignments" students need to complete. In cases where a module description mentions more than one kind of assignment, the respective member of the teaching staff will decide which task(s) they assign the students.


Students need to achieve 50% points in the exercises, need to present their exercises at least two times in the tutorial, and need to pass a final, written exam

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WS2025_392123@ekvv.uni-bielefeld.de
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5 Students to be reached directly via email
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Last update basic details/teaching staff:
Monday, May 26, 2025 
Last update times:
Monday, May 26, 2025 
Last update rooms:
Monday, May 26, 2025 
Type(s) / SWS (hours per week per semester)
lecture (V) / 2
Language
This lecture is taught in english
Department
Faculty of Technology
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561915492