PřF:Bi0034 Analysis & classif. data - Course Information
Bi0034 Analysis and classification of data
Faculty of Scienceautumn 2017
- Extent and Intensity
- 2/1/0. 3 credit(s) (plus extra credits for completion). Recommended Type of Completion: zk (examination). Other types of completion: z (credit).
- Teacher(s)
- RNDr. Eva Koriťáková, Ph.D. (lecturer)
prof. Ing. Jiří Holčík, CSc. (lecturer) - Guaranteed by
- prof. RNDr. Ladislav Dušek, Ph.D.
RECETOX – Faculty of Science
Contact Person: RNDr. Eva Koriťáková, Ph.D.
Supplier department: RECETOX – Faculty of Science - Timetable
- Mon 18. 9. to Fri 15. 12. Wed 8:00–10:50 D29/347-RCX2
- Prerequisites
- It is recommended to attend the course Bi8600 Multivariate Methods beforehand.
- Course Enrolment Limitations
- The course is offered to students of any study field.
- Course objectives
- At the end of the course, students should be able to: - know fundamental theoretical and methodological principles of pattern analysis and recognition with emphasis to processing of medical and biological data;- choose and apply appropriatedata analysis method to obtain required results; - reduce and transform multivariate data using advances ordination methods; - classify data using various classification methods; - design modified algorithms to process data of given particular characteristics; - interpret obtained results including evaluation of classification performance.
- Syllabus
- 1. Multivariate data analysis and its aims. 2. Ordination methods – factor analysis (FA). 3. Ordination methods – canonical correspondence analysis (CCA), redundancy analysis (RDA). 4. Ordination methods – co-coordinate analysis. 5. Advanced method of feature extraction – independent component analysis (ICA) and other advanced methods. 6. Distance and similarity metrics. 7. Classification – introduction, discriminant analysis based on discriminant functions and minimal distance. 8. Classification – discriminant analysis based on boundaries: Fisher’s linear discriminant analysis. 9. Classification – discriminant analysis based on boundaries: linear support vector machines (SVM). 10. Classification – nonlinearSVM, sequential classification. 11. Evaluation of classification performance – cross-validation, comparison of classification results with random classification, comparison of classification performance of two or more classifiers. 12. Summary of methods for data analysis and classification.
- Literature
- Dunham,M.H.: Data Mining: Introductory and Advanced Topics. Prentice Hall 2002
- Holčík,J.: Analýza a klasifikace signálů. [Učební texty vysokých škol] Brno, Nakladatelství VUT v Brně 1992.
- Mitchel,T.M.: Machine Learning. McGraw Hill 1997
- Teaching methods
- Lectures supported by Power Point presentations. Understanding of principles, methods and algorithms is emphasized. Students are continuously encouraged to interact with the lecturer.
- Assessment methods
- oral examination
- Language of instruction
- Czech
- Further Comments
- Study Materials
The course is taught annually.
- Enrolment Statistics (autumn 2017, recent)
- Permalink: https://is.muni.cz/course/sci/autumn2017/Bi0034