Introduction
Kinds of data and patterns to be mined, Basic statistical description of data.
Data Preprocessing
Data objects and attributes, Data similarity and dissimilarity, Data cleaning, Data integration, Data reduction, Data transformation and discretization.
Data Warehousing
Data warehouse modeling, Design issue, Implementation and usage, Data mining, Associations, Correlations, Mining methods, Pattern evaluation.
Data Classification
Decision tree induction, Classification methods, Evaluation and selection of classification, Classification accuracy.
Cluster Analysis
Partitioning, Hierarchy, Density and grid based clustering methods, evaluation of clustering methods, Cluster quality.