Lehre/Seminar Knowledge Discovery and Data Mining: Unterschied zwischen den Versionen
Cj2486 (Diskussion | Beiträge) |
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Potential topics are located in the field of Data Science, Machine Learning, Natural Language Processing, and Semantic Web. Participants can adapt the proposed tasks and topics if desired. | Potential topics are located in the field of Data Science, Machine Learning, Natural Language Processing, and Semantic Web. Participants can adapt the proposed tasks and topics if desired. | ||
− | |Literatur=Detailed references will be given along with each topic. Some fundamental | + | |Literatur=Detailed references will be given along with each topic. Some fundamental text books are: |
* Mitchell, T.; Machine Learning, McGraw Hill, 1997. | * Mitchell, T.; Machine Learning, McGraw Hill, 1997. | ||
* Cook, D.J. and Holder, L.B. (Editors) Mining Graph Data, ISBN: 0-471-73190-0, Wiley, | * Cook, D.J. and Holder, L.B. (Editors) Mining Graph Data, ISBN: 0-471-73190-0, Wiley, |
Version vom 4. April 2019, 15:10 Uhr
Praktikum Knowledge Discovery and Data Science
Dozent(en) | York Sure-Vetter |
Übungsleiter | Michael Färber, Anna Nguyen |
Fach (Gebiet) | Künstliche Intelligenz, Maschinelles Lernen, Data Science |
Leistungspunkte | ECTS |
Erfolgskontrolle | |
Semester | SS |
Aktuelle und ergänzende Informationen, sowie Zeiten und Räume der Lehrveranstaltung finden Sie im Vorlesungsverzeichnis der Universität.
Link zum Vorlesungsverzeichnis
Link zum Studierendenportal
This seminar will be given in English and will be provided by the group of Prof. York Sure-Vetter.
The aim of the Seminar/Praktikum Knowledge Discovery and Data Science is the implementation of a data science project. This includes the data preparation, modeling, computation, and scientific evaluation of the developed system.
The following aspects will be taken into consideration for the grade: (1) the practical implementation (software development); (2) the final presentation; (3) the written report, which should also contain theoretical basics for the corresponding data mining area.
At the first meeting (at the start of the semester), a selection of projects (with descriptions of the tasks and data sets to be used) will be presented. Then, groups of 2-3 people will be formed, and each group will work on one project.
Potential topics are located in the field of Data Science, Machine Learning, Natural Language Processing, and Semantic Web. Participants can adapt the proposed tasks and topics if desired.
Detailed references will be given along with each topic. Some fundamental text books are:
- Mitchell, T.; Machine Learning, McGraw Hill, 1997.
- Cook, D.J. and Holder, L.B. (Editors) Mining Graph Data, ISBN: 0-471-73190-0, Wiley,
- Manning, C. and Schütze, H.; Foundations of Statistical NLP, MIT Press, 1999.