Leveraging Business Intelligence to Build Meta-knowledge

作者: Sanjay Mathrani , Anuradha Mathrani

DOI: 10.1109/HICSS.2013.382

关键词:

摘要: Over the years, many organizations have implemented business intelligence (BI) systems as an initiative towards dynamically creating and managing information that enables real-time responses to process variations using focused analytical assessments. This study captures essence of BI practices are most responsible for optimizing organizational performance by applying analytic processes transforming enterprise-wide system data into knowledge decision making. Findings reveal although been able improve rationalize value chain BI, these firms often lack clarity in evaluating needs identifying context critical their success. Companies now extending capabilities via knowledge-based simulate scenarios align key metrics with functions, build meta-knowledge from extracts tools.

参考文章(26)
Hillol Bala, Arun Rai, Mark O. Lewis, Viswanath Venkatesh, Transitioning to a Modular Enterprise Architecture: Drivers, Constraints, and Actions Mis Quarterly Executive. ,vol. 9, pp. 4- ,(2010)
Jose M. Framinan, Jatinder N.D. Gupta, Rafael Ruiz-Usano, Enterprise Resource Planning for Intelligent Enterprises encyclopedia of information science and technology. pp. 1089- 1094 ,(2005) , 10.4018/978-1-59140-160-5.CH009
Jeanne G. Harris, Thomas H. Davenport, Competing on Analytics: The New Science of Winning ,(2007)
Mani Subramani, Nils O. Fonstad, Building Enterpise Alignment: A Case Study Mis Quarterly Executive. ,vol. 8, pp. 5- ,(2009)
Marta Araújo Tavares Ferreira, Rodrigo Baroni de Carvalho, Using information technology to support knowledge conversion processes. Information Research. ,vol. 7, ,(2001)
Bryan Bergeron, Essentials of Knowledge Management ,(2003)
Guy Paré, Line Dubé, Rigor in information systems positivist case research: current practices, trends, and recommendations Management Information Systems Quarterly. ,vol. 27, pp. 597- 635 ,(2003)
Andreas I. Nicolaou, Alignment of AIS with Business Intelligence Requirements Springer Berlin Heidelberg. pp. 167- 179 ,(2004) , 10.1007/978-3-540-24700-5_10
S Daley, DA Newton, SM Bennett, RJ Patton, Methods for fault diagnosis in rail vehicle traction and braking systems Qualitative and Quantitative Modelling Methods for Fault Diagnosis, IEE Colloquium on. pp. 5- 5 ,(1995) , 10.1049/IC:19950513
Jacques Pitrat, Implementation of a reflective system international joint conference on artificial intelligence. ,vol. 12, pp. 235- 242 ,(1996) , 10.1016/0167-739X(96)00011-8