Course detail
Knowledge Discovery in Databases
FIT-ZZNAcad. year: 2012/2013
Basic concepts concerning knowledge discovery in data, relation of knowledge discovery and data mining. Data sources for knowledge discovery. Principles and techniques of data preprocessing for mining. Systems for knowledge discovery in data, data mining query languages. Data mining techniques association rules, classification and prediction, clustering. Mining unconventional data - data streams, time series and sequences, graphs, spatial and spatio-temporal data, multimedia. Text and web mining. Working-out a data mining project by means of an available data mining tool.
Language of instruction
Number of ECTS credits
Mode of study
Guarantor
Department
Learning outcomes of the course unit
Prerequisites
Co-requisites
Planned learning activities and teaching methods
Assesment methods and criteria linked to learning outcomes
Course curriculum
- Introduction - motivation, fundamental concepts, data source and knowledge types.
- Data Warehouse and OLAP Technology for knowledge discovery.
- Data Preparation - methods.
- Data Preparation - characteristics of data.
- Mining frequent patterns and associations - basic concepts, efficient and scalable frequent itemset mining methods.
- Multi-level association rules, association mining and correlation analysis, constraint-based association rules.
- Classification and prediction - basic concepts, decision tree, Bayesian classification, rule-based classification.
- Classification by means of neural networks, SVM classifier, other classification methods, prediction.
- Cluster analysis - basic concepts, types of data in cluster analysis, partitioning and hierarchical methods. Other clustering methods.
- Introduction to mining data stream, time-series and sequence data.
- Introduction to mining in graphs, spatio-temporal data and moving object data.
- Mining in biological data.
- Text mining, mining the Web.
Work placements
Aims
Specification of controlled education, way of implementation and compensation for absences
Recommended optional programme components
Prerequisites and corequisites
Basic literature
Recommended reading
Classification of course in study plans
- Programme IT-MSC-2 Master's
branch MIN , 2 year of study, winter semester, compulsory
branch MPV , 1 year of study, winter semester, compulsory-optional
branch MBI , 2 year of study, winter semester, compulsory
branch MGM , 2 year of study, winter semester, elective
branch MIS , 2 year of study, winter semester, compulsory-optional
branch MSK , 2 year of study, winter semester, compulsory-optional
Type of course unit
Lecture
Teacher / Lecturer
Syllabus
- Introduction - motivation, fundamental concepts, data source and knowledge types.
- Data Warehouse and OLAP Technology for knowledge discovery.
- Data Preparation - methods.
- Data Preparation - characteristics of data.
- Mining frequent patterns and associations - basic concepts, efficient and scalable frequent itemset mining methods.
- Multi-level association rules, association mining and correlation analysis, constraint-based association rules.
- Classification and prediction - basic concepts, decision tree, Bayesian classification, rule-based classification.
- Classification by means of neural networks, SVM classifier, other classification methods, prediction.
- Cluster analysis - basic concepts, types of data in cluster analysis, partitioning and hierarchical methods. Other clustering methods.
- Introduction to mining data stream, time-series and sequence data.
- Introduction to mining in graphs, spatio-temporal data and moving object data.
- Mining in biological data.
- Text mining, mining the Web.