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Students are introduced to the basic methods of discovering knowledge in data. In particular, they learn the basic techniques of data preprocessing, multidimensional data visualization, statistical techniques of data transformation, and fundamental principles of knowledge discovery methods. Students will be aware of the relationships between model bias and variance, and know the fundamentals of assessing model quality. Data mining software is extensively used in the module. Students will be able to apply basic data mining tools to common problems (classification, regression, clustering).
Last update: Jirát Jiří (10.01.2014)
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R:Larose, D. T. Discovering Knowledge in Data: An Introduction to Data Mining. Wiley-Interscience, 2004. ISBN 0471666572. Last update: Jirát Jiří (10.01.2014)
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1. Introduction to data mining, data preparation, data visualization. 2. Statistical analysis of data. 3. Data model, nearest neighbour classifier. 4. Training, validation and testing, model's quality evaluation. 5. Artificial neural networks in data mining. 6. Unsupervised neural networks - competitive learning 7. Probability and Bayesian classification. 8. Decision trees and rules. 9. Neural networks with supervised learning. 10. Cluster analysis. 11. Combining neural networks and models in general. 12. Data mining in the Clementine environment. 13. Text mining, Web mining, selected applications, new trends. Last update: Jirát Jiří (10.01.2014)
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https://edux.fit.cvut.cz/courses/BI-VZD/ (login necessary) Last update: Jirát Jiří (10.01.2014)
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Students will be able to: Understand knowledge discovery in data. Last update: Jirát Jiří (31.01.2014)
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none Last update: Jirát Jiří (31.01.2014)
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Teaching methods | ||||
Activity | Credits | Hours | ||
Účast na přednáškách | 1 | 28 | ||
Práce na individuálním projektu | 0.5 | 14 | ||
Příprava na zkoušku a její absolvování | 1.1 | 30 | ||
Účast na seminářích | 1 | 28 | ||
4 / 4 | 100 / 112 |