UnivIS
Information system of Friedrich-Alexander-University Erlangen-Nuremberg © Config eG 
FAU Logo
  Collection/class schedule    module collection Home  |  Legal Matters  |  Contact  |  Help    
search:      semester:   
 
 Layout
 
printable version

 
 
 Also in UnivIS
 
course list

lecture directory

 
 
events calendar

job offers

furniture and equipment offers

 
 

  Knowledge Discovery in Databases (KDD)

Lecturers
Prof. Dr. Richard Lenz, Luciano Melodia, M.A.

Details
Vorlesung
Online
2 cred.h
nur Fachstudium, Sprache Englisch
Zeit: Tue 8:15 - 9:45, 00.152-113; comments on time and place: Aktueller Hinweis: Diese Veranstaltung findet dieses Semester online statt. Weitere Informationen finden Sie im zugehörigen StudOn-Kurs. Information regarding online courses are provided via StudOn.

Fields of study
WPF INF-MA ab 2
WPF INF-LAG 1-6
WPF INF-LAR 1-6
WF M-BA 4-6
WPF IIS-MA 2-3
WF MT-MA-BDV ab 1
WF AI-MA 1

Prerequisites / Organisational information
  • Konzeptionelle Modellierung

Contents
1. Introduction
2. Know Your Data
3. Data Preprocessing
4. Mining Frequent Patterns, Associations and Correlations: Basic Concepts and Methods
5. Advanced Frequent Pattern Mining
6. Classification: Basic Concepts
7. Classification: Advanced Methods
8. Cluster Analysis: Basic Concepts and Methods
9. Cluster Analysis: Advanced Methods
10. Outlier Detection
11. Trends and Research Frontiers in Data Mining

Recommended literature
  • Han, Jiawei ; Kamber, Micheline ; Pei, Jian: Data Mining: Concepts and Techniques. 3rd ed. Waltham, MA : Morgan Kaufmann, 2012 (The Morgan Kaufmann Series in Data Management Systems). - ISBN 978-0-12-381479-1 (copies are available in the TNZB)
  • Du, Hongbo: Data Mining Techniques and Applications. Andover, UK : Cengage Learning, 2010

  • Witten, Ian H. ; Frank, Eibe ; Hall, Mark A.: Data Mining. Practical Machine Learning Tools and Techniques. 3rd ed. Burlington, MA : Morgan Kaufmann, 2011 (The Morgan Kaufmann Series in Data Management Systems). - ISBN 978-0-12-3748569-0

ECTS information:
Title:
Knowledge Discovery in Databases

Prerequisites
  • Conceptual Modeling

Contents
1. Introduction
2. Know Your Data
3. Data Preprocessing
4. Mining Frequent Patterns, Associations and Correlations: Basic Concepts and Methods
5. Advanced Frequent Pattern Mining
6. Classification: Basic Concepts
7. Classification: Advanced Methods
8. Cluster Analysis: Basic Concepts and Methods
9. Cluster Analysis: Advanced Methods
10. Outlier Detection
11. Trends and Research Frontiers in Data Mining

The students will learn about:

  • the particular challenges of data mining on large sets of data

  • the technologies available for data analysis

  • the process of data mining

  • applications

Literature
  • Han, Jiawei ; Kamber, Micheline ; Pei, Jian: Data Mining: Concepts and Techniques. 3rd ed. Waltham, MA : Morgan Kaufmann, 2012 (The Morgan Kaufmann Series in Data Management Systems). - ISBN 978-0-12-381479-1 (copies are available in the TNZB)
  • Du, Hongbo: Data Mining Techniques and Applications. Andover, UK : Cengage Learning, 2010

  • Witten, Ian H. ; Frank, Eibe ; Hall, Mark A.: Data Mining. Practical Machine Learning Tools and Techniques. 3rd ed. Burlington, MA : Morgan Kaufmann, 2011 (The Morgan Kaufmann Series in Data Management Systems). - ISBN 978-0-12-3748569-0

Additional information
Keywords: Data Mining, KDD
Expected participants: 20

Verwendung in folgenden UnivIS-Modulen
Startsemester SS 2021:
Data Warehousing und Knowledge Discovery in Databases (DWKDD)
Datenbanken in Rechnernetzen und Knowledge Discovery in Databases (DBRNKDD)
Knowledge Discovery in Databases (KDD)
Knowledge Discovery in Databases and Transaction Systems (KDDTAS)

Department: Chair of Computer Science 6 (Data Management)
UnivIS is a product of Config eG, Buckenhof