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636-0019-00L 6 Credits DR , MSC D-BSSE , D-INFK

Data Mining II

Lecturers & Examiners: Dr. Juliane Klatt
Prerequisites: Basic understanding of mathematics, as taught in basic mathematics courses at the Bachelor`s level. Ideally, students will have attended Data Mining I before taking this class.
VVZ CR n/a

Last Updated: 2026-02-05 16:07:57

Abstract

Data Mining, the search for statistical dependencies in large databases, is of utmost important in modern society, in particular in biological and medical research. Building on the basic algorithms and concepts of data mining presented in the course "Data Mining I", this course presents advanced algorithms and concepts from data mining and the state-of-the-art in applications of data mining.

Objective

The goal of this course is that the participants gain an advanced understanding of data mining problems and algorithms to solve these problems, in particular in biological and medical applications, and to enable them to conduct their own research projects in the domain of data mining.

Content

The goal of the field of data mining is to find patterns and statistical dependencies in large databases, to gain an understanding of the underlying system from which the data were obtained. In computational biology, data mining contributes to the analysis of vast experimental data generated by high-throughput technologies, and thereby enables the generation of new hypotheses. In this course, we will present advanced topics in data mining and its applications in computational biology. Tentative list of topics: 1. Dimensionality Reduction 2. Association Rule Mining 3. Text Mining 4. Graph Mining

Resources

Lecture Notes

Course material will be provided in form of slides.

Literature

Will be provided during the course.

General Information

Language
English
Levels
DR , MSC
Frequency
Yearly recurring

Examination

Type
session examination
Mode
written 90 minutes
Aids
None
Final grade: 70% written examination, 30% project workProject work has to be re-done in case of repetitionThe project work includes up to 6 compulsory continuous performance assessments in form of biweekly homework assignments which constitute 30% of the final grade

Course Components

Type Title Time & Place Hours
lecture with exercise Data Mining II
Lecture: Wednesday 14-16h Tutorial: 16-17h This lecture will take place online only (via Zoom). Link will be send to registered students in due time. Room reserved in Basel: Oppenheim Room reserved in ZH: HG D 16.2
  • Wed 14:15-17:00 (BSD G 205)
  • Wed 14:15-17:00 (HG D 16.2)
3 h weekly
independent project Data Mining II
Project Work (compulsory continuous performance assessment), no fixed presence required.
No time listed 2 h weekly

Offered In

    • Electives (The electives list in the ETH course catalogue is an open list, and the courses listed in the ETH course catalogue provide just examples for possible elective courses, e.g. a selection of eligible courses. Students are expected to look for relevant courses in the ETH and University of Basel course catalogue and ask their mentor for approval. Courses from the advanced course category may also be taken as electives. We particularly recommend browsing the University of Basel course catalogue for elective courses of relevant master's degree programes (using the filter "programe structure" on the course catalogue website), such as for example: Biomedical Engineering, Chemistry, Drug Sciences, Epidemiology, Infection Biology, Molecular Biology, Nanosciences.)
    • Core Courses (Please note that the list of core courses is a closed list. Other courses cannot be added to the core course category in the study plan. Also the assignments of courses to core subcategories cannot be changed. Students need to pass at least one course in each core subcategory. A total of 40 ECTS needs to be acquired in the core course category.)
    • Subject Specialisation (The courses on offer below are a selection out of a much larger available number of courses. You may look for other courses too. If you are uncertain about the creditability and assessment of the course unit you wish to take, please consult the D-​BSSE Doctoral Administration. This should be done before registering the course unit.)