Data Warehousing In The Real World Sam Anahory Pdf Free

  суббота 16 марта
      39

Anahory, Sam, Data warehousing in the real world: a practical guide for building decision support systems, Delhi: Pearson. Education Asia, 1997. Data Warehousing in the Real World: A practical guide for building Decision Support Systems [S. Tkp 45 501 254 2012. Murray] on Amazon.com. *FREE* shipping on qualifying offers. This is a practical, hands-on guide which explains tried-and-true techniques for developing data warehouses using relational databases and open system technology.

Latest Material Links DWDM – DWDM – DWDM – DWDM – DWDM – DWDM – DWDM – DWDM – DWDM – DWDM Old Material Links DWDM – DWDM – DWDM – DWDM – DWDM – Please find the more DWDM Notes ppt files download links below UNIT – I • Introduction: Fundamentals of data mining, Data Mining Functionalities, Classification of Data Mining systems, Major issues in Data Mining. Data Preprocessing: Needs Preprocessing the Data, Data Cleaning, Data Integration and Transformation, Data Reduction, Discretization and Concept Hierarchy Generation.

UNIT – II • Data Warehouse and OLAP Technology for Data Mining Data Warehouse, Multidimensional Data Model, Data Warehouse Architecture, Data Warehouse Implementation, Further Development of Data Cube Technology, • From Data Warehousing to Data Mining. Data cube computation and Data Generalization: Efficient methods for Data cube computation, Further Development of Data Cube and OLAP Technology, Attribute Oriented Induction. UNIT – III • Mining Frequent Patterns, Associations And Correlations, Basic Concepts.

Efficient And Scalable Frequent Itemset Mining Methods Mining Various Kinds Of Association Rules, • From Associative Mining To Correlation Analysis, Constraint Based Association Mining. Axt advertising arabic font for photoshop. UNIT – IV • Classification and Prediction: Issues Regarding Classification and Prediction, Classification by Decision Tree Induction, Bayesian Classification, Classification by Backpropagation, Support Vector Machines, • Associative Classification, Lazy Learners, Other Classification Methods, Prediction, Accuracy and Error Measures, Evaluating the accuracy of Classifier or a predictor, Ensemble methods. UNIT – V • Cluster Analysis Introduction: Types of Data in Cluster Analysis, A Categorization of Major Clustering Methods, Partitioning Methods, Density-Based Methods, • Grid-Based Methods, Model-Based Clustering Methods, Outlier Analysis. UNIT – VI • Mining Streams, Time Series and Sequence Data: Mining Data Streams Mining Time Series Data, Mining Sequence Patterns in Transactional Databases, Mining Sequence Patterns in biological Data, • Graph Mining, Social Network Analysis and Multi Relational Data Mining UNIT – VII • 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 of the World WideWeb. UNIT – VIII • Applications and Trends In Data Mining: Data mining applications, Data Mining Products and Research Prototypes, Additional Themes on Data Mining and Social Impacts Of Data Mining.

World

TEXT BOOKS: • Data Mining – Concepts and Techniques – JIAWEI HAN & MICHELINE KAMBER Harcourt India.2nd ed 2006 • introduction to data mining- pang-ning tan, micheal steinbach and vipin kumar, pearson education. REFERENCES: • Data Mining Introductory and advanced topics –MARGARET H DUNHAM, PEARSON EDUCATION • Data Mining Techniques – ARUN K PUJARI, University Press. • Data Warehousing in the Real World – SAM ANAHORY & DENNIS MURRAY. Pearson Edn Asia. • Data Warehousing Fundamentals – PAULRAJ PONNAIAH WILEY STUDENT EDITION. • The Data Warehouse Life cycle Tool kit – RALPH KIMBALL WILEY STUDENT EDITION. Note:- These notes are according to the r09 Syllabus book of.In R13,8-units of R09 syllabus are combined into 5-units in r13 syllabus.