Fr. 135.00

Business Intelligence Techniques - A Perspective from Accounting and Finance

Inglese · Copertina rigida

Spedizione di solito entro 6 a 7 settimane

Descrizione

Ulteriori informazioni

Modern businesses generate huge volumes of accounting data on a daily basis. The recent advancements in information technology have given organizations the ability to capture and store these data in an efficient and effective manner. However, there is a widening gap between this data storage and usage of the data. Business intelligence techniques can help an organization obtain and process relevant accounting data quickly and cost efficiently. Such techniques include, query and reporting tools, online analytical processing (OLAP), statistical analysis, text mining, data mining, and visualization. Business Intelligence Techniques is a compilation of chapters written by experts in the various areas. While these chapters stand of their own, taken together they provide a comprehensive overview of how to exploit accounting data in the business environment.

Sommario

1 Historical Overview of Accounting Information Systems.- 2 Importance of Data in Decision-Making.- 3 Populating the Accounting Data Warehouse.- 4 The Accounting Centric Data Warehouse TM.- 5 XBRL; A New Tool For Electronic Financial Reporting.- 6 Online Analytical Processing in Accounting.- 7 Bankruptcy Prediction Using Neural Networks.- 8 Visualization of Patterns in Accounting Data with Self-organizing Maps.- 9 Visual Representations of Accounting Information.- 10 Alignment of AIS with Business Intelligence Requirements.- 11 A Methodology for Developing Business Intelligence Systems.- 12 An 00 Approach to Designing Business Intelligence Systems.- 13 Evaluating Business Intelligence: A Balanced Scorecard Approach.- 14 A Stakeholder Model of Business Intelligence.- References.- List of Contributors.

Riassunto

Modern businesses generate huge volumes of accounting data on a daily basis. The recent advancements in information technology have given organizations the ability to capture and store these data in an efficient and effective manner. However, there is a widening gap between this data storage and usage of the data. Business intelligence techniques can help an organization obtain and process relevant accounting data quickly and cost efficiently. Such techniques include, query and reporting tools, online analytical processing (OLAP), statistical analysis, text mining, data mining, and visualization. Business Intelligence Techniques is a compilation of chapters written by experts in the various areas. While these chapters stand of their own, taken together they provide a comprehensive overview of how to exploit accounting data in the business environment.

Dettagli sul prodotto

Con la collaborazione di Cadambi A Srinivasan (Editore), A. Anandarajan (Editore), Asoka Anandarajan (Editore), Asokan Anandarajan (Editore), M. Anandarajan (Editore), Murugan Anandarajan (Editore), C. A. Srinivasan (Editore), Cadambi A. Srinivasan (Editore)
Editore Springer, Berlin
 
Lingue Inglese
Formato Copertina rigida
Pubblicazione 28.10.2003
 
EAN 9783540408208
ISBN 978-3-540-40820-8
Pagine 268
Dimensioni 165 mm x 237 mm x 21 mm
Peso 608 g
Illustrazioni X, 268 p.
Categorie Scienze sociali, diritto, economia > Economia > Economia aziendale

B, Wirtschaftsmathematik und -informatik, IT-Management, Organization, Business and Management, Accounting, Unternehmensanwendungen, Accounting/Auditing, IT in Business, Information Technology, Management science, Business mathematics & systems, Management accounting & bookkeeping, Bookkeeping, Business—Data processing, Business applications, statistical analy

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