To purchase hard copies of this book, please email:
orders@intechopen.com
By only printing on demand InTech ensures our carbon footprint is kept to a minimum.
The data below shows the environmental impact of printing one single book:
15.58 kg wood
0.84 g CO2
14.15 ml Water
Share this page
Business Intelligence - Solution for Business Development
Edited by Marinela Mircea, ISBN 978-953-51-0019-5, Hard cover, 108 pages, Publisher: InTech, Published: February 01, 2012 under CC BY 3.0 license, in subject Numerical Analysis and Scientific Computing
DOI: 10.5772/2352
The work addresses to specialists in informatics, with preoccupations in development of Business Intelligence systems, and also to beneficiaries of such systems, constituting an important scientific contribution. Experts in the field contribute with new ideas and concepts regarding the development of Business Intelligence applications and their adoption in organizations. This book presents both an overview of Business Intelligence and an in-depth analysis of current applications and future directions for this technology. The book covers a large area, including methods, concepts, and case studies related to: constructing an enterprise business intelligence maturity model, developing an agile architecture framework that leverages the strengths of business intelligence, decision management and service orientation, adding semantics to Business Intelligence, towards business intelligence over unified structured and unstructured data using XML, density-based clustering and anomaly detection, data mining based on neural networks.
This book is indexed in:
Book contents
- Chapter 1Construct an Enterprise Business Intelligence Maturity Model (EBI2M) Using an Integration Approach: A Conceptual Framework
- Chapter 2An Agile Architecture Framework that Leverages the Strengths of Business Intelligence, Decision Management and Service Orientation
- Chapter 3Adding Semantics to Business Intelligence: Towards a Smarter Generation of Analytical Tools
- Chapter 4Towards Business Intelligence over Unified Structured and Unstructured Data Using XML
- Chapter 5Density-Based Clustering and Anomaly Detection
- Chapter 6Data Mining Based on Neural Networks for Gridded Rainfall Forecasting
