392123 Introduction to Data mining (V) (WiSe 2021/2022)

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Das Modul bietet eine Einführung in grundlegende Methoden des Datamining, der explorativen Datenanalyse und dafür einschlägigen Verfahren maschinellen Lernens und der Visualisierung von Daten.

This module offers an introduction into basic methods of data mining, exploratory data analysis and relevant machine learning methods and visualization techniques for high-dimensional data.

Requirements for participation, required level

Nützlich: Neuronale Netze und Lernen, Bildverarbeitung, Vertiefung Mathematik
Querbezüge zu: Information Visualization, Sequenzanalyse, Mustererkennung bzw. Musterklassifikation

Bibliography

Statistics: Numerical Recipes in C (selected chapters including t-test, chi2-test, KS-test, linear correlation, cramer's V, etc.)

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Subject assignments

Module Course Requirements  
39-Inf-DM Grundlagen Datamining Grundlagen Datamining Ungraded examination
Graded examination
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WS2021_392123@ekvv.uni-bielefeld.de
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Last update basic details/teaching staff:
Friday, May 12, 2023 
Last update times:
Sunday, December 5, 2021 
Last update rooms:
Sunday, December 5, 2021 
Type(s) / SWS (hours per week per semester)
V / 2
Language
This lecture is taught in english
Department
Faculty of Technology
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293596349