Inhalt

[ 921DASICDAK17 ] KV Computational Data Analytics

Versionsauswahl
Workload Education level Study areas Responsible person Hours per week Coordinating university
3 ECTS M1 - Master's programme 1. year Computer Science Johannes Fürnkranz 2 hpw Johannes Kepler University Linz
Detailed information
Original study plan Master's programme Computer Science 2025W
Learning Outcomes
Competences
Students are able to master foundational concepts and techniques of machine learning and data mining.
Skills Knowledge
Students are familiar with the general data mining process (k3), so that they can identify suitable algorithms for a wide variety of data mining problems (k4), and can competently apply them to these problems (k5). These skills are based on a thorough theoretical understanding of the state-of-the-art in data mining (k5), which enables them to implement such methods on their own (k5). In particular, they are also familiar with the challenges of big data (k4).
  • Data mining process models
  • Pre-processing techniques
  • Inductive rule learning
  • Efficient similarity-based techniques
  • Clustering for big data
  • Association rule mining
  • Foundations of Stream Mining
  • Evaluation
Criteria for evaluation Written Exam at the end of the semester
Methods Slide Presentations with Practical Exercises
Language English
Study material I. H. Witten, E. Frank, M. A. Hall, C. J. Pal: Data Mining. Morgan Kaufmann.

J. Leskovec, A. Rajaraman, J. D. Ullman: Mining of Massive Datasets. Cambridge University Press.

Changing subject? No
Further information The lecture is accompanied with a voluntary practical course (351.044), in which interested students can collect experience with practical data mining tools such as Weka, KNIME, or RapidMiner.
On-site course
Maximum number of participants -
Assignment procedure Direct assignment