Data Mining I - Introduction to Data Mining
Summer
Introduction to Data Mining
(in German: Data Mining I - Introduction to Data Mining )
Module-ID: FIN-INF-120454 |
| Link: | LSF |
| Responsibility: | Myra Spiliopoulou |
| Lecturer: | Myra Spiliopoulou |
| Classes: |
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| Applicability in curriculum: | - M.Sc. DKE: Fundamentals of Data Science - M.Sc. DE: Methoden der Informatik - M.Sc. VC: Computer Science |
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Abbreviation DM1_ENG |
Credit Points 6 |
Semester Summer |
Term ab 1. |
Duration 1 Semester |
Language english |
Level Master |
Intended learning outcomes:
When successfully completing this course, the students
- comprehend the purpose of model induction from data
- are familiar with the behaviour of simple learning algorithms on tabular static data and can apply them to derive models
- comprehend the purpose, challenges and basic instruments for model evaluation
- can evaluate models
- comprehend the purpose of data engineering in preparation of data mining
- are familiar with basic tasks of data engineering
Content:
- Underpinnings: basic forms of learning
- BLOCK 1 - supervised: Classification algorithms and evaluation procedured
- BLOCK 2 - unsupervised: Clustering algorithms and evaluation procedures
- BLOCK Evaluation: more on model evaluation and model comparison
- BLOCK Data Engineering: basic steps on engineering the data before they are input to the model learner
Workload:
- 28 hours - in presence : lecture class (2 hours per week)
- 28 hourse in presence: exercise class (2 hours per week)
- 124 hours: independent work (for lectures, exerices and for the exam preparation)
| Pre-examination requirements: | Type of examination: | Teaching method / lecture hours per week (SWS): |
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A minimum number of points must be achieved during the course. |
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| Prerequisites according to examination regulations: | Recommended prerequisites: |
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keine |
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| Media: | Literature: |
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Book M: The book of the course is Introduction to Data Mining by Pan-Ning Tan, Michael Steinbach, Anuj Karpatne and Vipin Kumar. PEARSON, 2019 (2nd edition)
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Comments:
This module is intended for students in low semesters of 4-semester-long master degrees and assumes a limited background in data science. It is not appropriate for students with a bachelor degree in data science.