657
Page views
6
Files
3
Videos
3
R.Links

Icon
Syllabus

UNIT
1
Data Mining

Introduction – Data Mining Functionalities – Classification of Data Mining Systems – Data Mining Task Primitives – Major Issues in Data Mining. Data Preprocessing – Introduction - Data Cleaning – Data Integration and Transformation – Data Reduction - Data Discretization and Concept Hierarchy Generation.

UNIT
2
Association Rule Mining

Apriori Algorithm-Finding Frequent Item set Candidate Generation - Generating Association Rules from Frequent Item set – Improving the Efficiency of Apriori – Mining Various Kinds of Association Rules: Mining Multilevel Association rule – Mining Multidimensional Association Rules from Relational Databases and Data Warehouses

UNIT
3
Classification and Predication

Introduction to Classification and Prediction- Issues Regarding Classification and Prediction – Classification by Decision Tree Induction – Bayesian Classification – Rule based Classification – Other Classification Methods – Prediction- Accuracy and Error Measures – Evaluating the Accuracy of a Classifier or Predictor – Ensemble Methods – Model selection.

UNIT
4
Cluster Analysis

Introduction – Types of Data in Cluster Analysis – Categorization of Major Clustering Methods – Partitioning Methods – Hierarchical Methods – Density based Methods – Grid based Methods – Model based Clustering Methods- Clustering High Dimensional Data- Constrained based Cluster Analysis- Outlier Analysis. Mining Object, Spatial, Multimedia, Text and Web Data: Multidimensional Analysis and Descriptive Mining of Complex Data Objects – Spatial Data Mining – Multimedia Data Mining – Text Mining – Mining the World Wide Web.

UNIT
5
Data Warehouse and OLAP Technology

Overview- Data Warehouse Introduction – A Multidimensional Data Model – Data Warehouse Architecture – Data Warehouse Implementation – From Data Warehousing to Data Mining.

Reference Book:

1. Alex Berson and Stephen J.Smith “data ware housing, data mining & OLAP”, Tata McGraw Hill Edition Reprint 2007. 2. Pang – ning , Michael Steinbach and vipin kumar “Introduction to Data Mining”, pearson Education , 2007.

Text Book:

1. Jiawei Han and Micheline Kamber “Data Mining Concepts and Techniques” Elsevier,Second Edition, Reprinted 2007.

 

Print    Download