![]() Mining association rules in large databases: Association rule mining, Mining single-dimensional boolean association rules from transactional databases, mining multilevel association rules from transaction databases, Relational databases, and data warehouses, correlation analysis, classification and prediction, Data redundancy detection, and elimination techniques. Unit III: Mining Associations and Correlations Data Warehouse: Need for Data Warehousing, Paradigm Shift, Business Problem Definition, Operational and Information Data Stores, Data Warehouse Definition and Characteristics, Data Warehouse Architecture and Implementation, OLAP.ĭata Mining Primitives, Query Language, and System Architecture, Concept Description, Data generalization, Analysis of attribute relevance, Mining descriptive statistical measures in large databases, Data deduplication methodologies. Introduction: Data Mining, Functionalities, Data Mining Systems classification, Integration with Data Warehouse System, Data summarization, data cleaning, data integration and transformation, data reduction. ![]() ![]() Unit I: Data Mining and Data Preprocessing
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