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"I really like your product and I can't believe how easy data mining has become and how extendable it is by custom operators."

Marcel Van Velzen, Netherlands

 
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Home arrow Services arrow Data Mining Techniques: Theory and Practice (German)
Data Mining Techniques: Theory and Practice (German)

Our course "Data Mining Techniques: Theory and Practice" is a compact two day introduction into the foundations of data mining and the software RapidMiner. The theoretical backgrounds of all presented data mining techniques will be discussed and explained. Due to a high number of practical exercises, the participants will be able to transfer the gained knowledge to own data mining problems and solve them quickly and easily. Therefore, this course is probably the quickest possible way of getting the necessary insight into the ideas of knowledge discovery in databases and also shows all necessary practical aspects.

 

You can register to this course online.

 

Please note that this course will be held in German. Due to the high demands for this course we are able to offer an additional course date on March 17 and 18 in English. More information about this additional course.

 

Details

  • Course ID: 210801
  • Date: March 13rd - 14th, 2008
  • Number of days: 2 days
  • Location: Dortmund, Germany
  • Target audience: users, decision makers, developers, administrators
  • Previous knowledge: basic knowledge of computer programs and mathematics
  • Methods: lectures, discussions, individual and group work, exercises on realistic data. Participants may introduce own work and project specific questions in order to find particular solutions together with the trainer and other participants.
  • Content: this course is a compact introduction into the theoretical foundations of data mining and into the most important practical aspects of data mining with the software RapidMiner. It addresses beginners and intermediate learners. Topics of this course are
    • Machine Learning: Decision Trees, Rule Learning, Neural Networks, Nearest Neighbors, Bayes Learning
    • Meta Learning: Bagging and Boosting
    • Preprocessing: Automated Feature Selection and Generation (amongst others with genetic algorithms), Discretization, Normalization, Sampling
    • Validation: introduction into performance criteria, cross validation, bootstrapping
    • Visualization: high-dimensional data visualizations, ROC plots, Self-Organizing Maps (SOM)
    Extensive exercises on different data sets will be performed for all topics.

 

Prices

Number of Participants: 1 2 3 4 or more
Price per Participant: 1650 Euro 1400 Euro 1300 Euro 1100 Euro


Value added tax (VAT) may have to be added to these base prices.

 

Online Registration

 
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