Download DATA MINING AND WAREHOUSING MODULE: I Unit 1

Survey
yes no Was this document useful for you?
   Thank you for your participation!

* Your assessment is very important for improving the work of artificial intelligence, which forms the content of this project

Document related concepts
no text concepts found
Transcript
DATA MINING AND WAREHOUSING
MODULE: I
Unit 1- Fundamentals of Data Mining: Defnition, Motivation, what
kinds of data? Data Mining Functionalities
Unit 2 - Classification of Data Mining Systems, Major Issues in Data
Mining.
Unit 3 - Data Warehouse and OLAP Technology for Data Mining:
Definition, Multidimensional datamodels, Data Warehouse Architecture
Unit 4 - Data Warehouse Implementation, Further development of
data cube technology, From Data Warehousing to Data Mining.
MODULE: II
Unit 1 - Data Preprocessing: Need for preprocess the data, Data
Cleaning, Data Integration, Data Transformation
Unit 2 - Data Reduction, Discretization and Concept of Hierarchy
Generation.
Unit 3 - Data Mining Primitives, Languages and system Architectures:
Data Mining Primitives, Architectures of Data Mining System.
Unit 4 - A Data Mining Query Language, Designing Graphical User
Interfaces Based on a Data Mining Query Language
MODULE: III
Unit 1 - Concept Description-Characterization: Definition, Data
Generalization and Summarization-Based Characterization, Analytical
Characterization
Unit 2 - Concept Description-Comparison: Mining Class Comparisons,
Mining Descriptive Statistical Measures in Large Databases
Unit 3 - Mining Association Rules in Large Databases: Association Rule
Mining, Mining Single–Dimensional Boolean Association Rules form
Transactional Databases
Unit 4 - Mining Multilevel Association Rules form Transaction
Databases, Mining Multidimensional Association Rules from Relational
Databases and Data Warehouses.
MODULE: IV
Unit 1 - Classification and Prediction: Definition, Issues Regarding
Classification and Prediction
Unit 2 - Classification by Decision Tree Induction,
Classification, Classification by Back propagation
Bayesian
Unit 3 - Classification Based on Concepts form Association Rule
Mining, Other Classification Methods – Prediction, Classifier Accuracy.
MODULE: V
Unit 1 – Cluster Analysis: Definition, Types of data, Clustering
methods
Unit 2 - Partitioning methods, Hierarchical methods, Density based
methods
Unit 3 – Grid based methods, Model based clustering methods, Outlier
analysis
Module: VI
Unit 1 - Mining Complex Types of Data: Multidimensional Analysis
and Descriptive Mining of Complex Data Objects, Mining Spatial
Databases
Unit 2 - Mining Multimedia Databases, Mining Time – Series and
Sequence Data , Mining Text Databases, Mining the World
Wide Web.
Unit 3 - Applications and Trends in Data Mining: Data Mining
Applications, Data Mining /system Products and Research Prototypes
Unit 4 - Additional Themes on Data Mining, Social Impacts of /data
Mining, Trends in /data Mining.
Related documents