VSFS:BA_KDD Knowledge Disc. in Databases - Course Information
BA_KDD Knowledge Discovery in Databases
University of Finance and AdministrationWinter 2024
- Extent and Intensity
- 0/2/0. 3 credit(s). Recommended Type of Completion: z (credit). Other types of completion: zk (examination).
- Teacher(s)
- Ing. Radim Brixí (seminar tutor)
- Guaranteed by
- Ing. Radim Brixí
Department of Computer Science and Mathematics – Departments – University of Finance and Administration
Contact Person: Ivana Plačková - Timetable of Seminar Groups
- BA_KDD/cECPH: each even Monday 10:30–11:14 E309, each even Monday 11:15–12:00 E309, each even Monday 12:15–12:59 E309, each even Monday 13:00–13:45 E309, R. Brixí
- Prerequisites
- no special prerequisities
- Course Enrolment Limitations
- The course is offered to students of any study field.
- Course objectives
- Students will get familiar with the methods used for knowledge discovery in databases. The lectures focus on different data mining tasks and suitable machine learning algorithms. The students will also work with one of the widely used data mining systems.
- Learning outcomes
- At the end of the course students should be able to:
- understand the role of KDD for data analysis;
- understand different data mining tasks;
- understand the basic principles of various data mining algorithms;
- understand the basic methods of evaluation of created models;
- understand data preprocessing problems;
- formulate KDD tasks for real-world data - Syllabus
- - Data, information, knowledge
- - Process of knowledge discovery in databases
- - Machine learning
- - Weka
- - Symbolic classification and prediction
- - Subsymbolic classification and prediction
- - Dependency analysis
- - Segmentation
- - Evaluation of created models
- - New trends
- - Real tasks
- - Presentations of case studies
- Literature
- required literature
- Witten I., Frank E.: Data Mining, Practical Machine Learning Tools and Techniques with Java. Fourth edition. Morgan Kaufmann, San Francisco 2016
- recommended literature
- Han J., Kerber M.: Data Mining, Concepts and Techniques. Morgan Kaufmann, San Francisco 2001
- Teaching methods
- - lectures and seminars in full-time study,
- tutorials in part-time study,
- case study of data analysis using data mining system - Assessment methods
- - proof of effort (Accepted/not accepted) - case study of data analysis using data mining system or team project
- Language of instruction
- English
- Further comments (probably available only in Czech)
- The course can also be completed outside the examination period.
Information on the extent and intensity of the course: 12 hodin KS/semestr.
- Enrolment Statistics (recent)
- Permalink: https://is.vsfs.cz/course/vsfs/winter2024/BA_KDD