Progressive Methods in Data Warehousing and Business Intelligence, 1st Edition

  • Published By:
  • ISBN-10: 160566233X
  • ISBN-13: 9781605662336
  • Grade Level Range: College Freshman - College Senior
  • 369 Pages | eBook
  • Original Copyright 2008 | Published/Released April 2009
  • This publication's content originally published in print form: 2008

  • Price:  Sign in for price



Presents the latest trends, studies, and developments in business intelligence and data warehousing contributed by experts from around the world.

Table of Contents

Cover Page.
Title Page.
Copyright Page.
Other Frontmatter.
Editorial Page.
Associate Editors.
Editorial Page.
Table of Contents.
Detailed Table of Contents.
1: Conceptual Model and Development.
2: Development of Data Warehouse Conceptual Models: Method Engineering Approach.
3: Conceptual Modeling Solutions for the Data Warehouse.
4: A Machine Learning Approach to Data Cleaning in Databases and Data Warehouses.
5: Interactive Quality-Oriented Data Warehouse Development.
6: Integrated Business and Production Process Data Warehousing.
7: OLAP and Pattern.
8: Selecting and Allocating Cubes in Multi-Node OLAP Systems: An Evolutionary Approach.
9: Swarm Quant' Intelligence for Optimizing Multi-Node OLAP Systems.
10: Multidimensional Anlaysis of XML Document Contents with OLAP Dimensions.
11: A Multidimensional Pattern Based Approach for the Design of Data Marts.
12: Spatio-Temporal Data Warehousing.
13: A Multidimensional Methodology with Support for Spatio-Temporal Multigranularity in the Conceptual and Logical Phases.
14: Methodology for Improving Data Warehouse Design using Data Sources Temporal Metadata.
15: Using Active Rules to Maintain Data Consistency in Data Warehouse Systems.
16: Distributed Approach to Continuous Queries with kNN Join Processing in Spatial Telemetric Data Warehouse.
17: Spatial Data Warehouse Modelling.
18: Benchmarking and Evaluation.
19: Data Warehouse Benchmarking with DWEB.
20: Analyses and Evaluation of Responses to Slowly Changing Dimensions in Data Warehouses.
Compilation of References.
About the Contributors.