Data Mining I

5 credits

Syllabus, Master's level, 1DL360

A revised version of the syllabus is available.
Code
1DL360
Education cycle
Second cycle
Main field(s) of study and in-depth level
Computer Science A1N, Technology A1N
Grading system
Fail (U), Pass (3), Pass with credit (4), Pass with distinction (5)
Finalised by
The Faculty Board of Science and Technology, 18 March 2010
Responsible department
Department of Information Technology

Entry requirements

120 credits with mathematics 30 credits including mathematical statistics, computer science and/or technology 45 credits including an advanced course in programming and database design I. Algorithms and Data Structures I is recommended.

Learning outcomes

To pass, the student should be able to:

  • explain different methods to extract processed information from large amounts of data, both in theory and in practical application
  • use these methods with appropriate tools and
  • evaluate and compare the suitability of different methods.

Content

Introduction to data mining, its terminology and overview over various types of data and its properties, an overview of different methods to explore and visualise large amounts of data, introduction to classification methods, introduction to clustering methods, introduction to association analysis, handling of personal integrity in the area of data mining.

The subjects are treated both theoretically and practically through laboratory sessions where selected methods are implemented and tested on typical amounts of data.

Instruction

Lectures, seminars, laboratory sessions and written assignments. Guest lecture.

Assessment

Written examination (3 HE credits) and assignments that are presented orally and/or written (2 HE credits).

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