From the Publisher:
Optimize your organization's data delivery system! Improving data delivery is a top priority in business computing today. This comprehensive,cutting-edge guide can help—by showing you how to effectively integrate data mining and other powerful data warehousing technologies. You'll learn how to: Use data warehousing to establish a competitive advantage; Solve business problems faster by exploiting online analytical processing (OLAP); Evaluate various data warehousing solutions (including SMP and MPP,parallel database management systems,metadata,OLAP,etc. ); Leverage your data warehousing utility via the Internet,client/server computing,and various data mining tools. In addition to providing a detailed overview and strategic analysis of the available data warehousing technologies,the book serves as a practical guide to data warehouse database design,star and snowflake schema approaches,multidimensional and mutirelational models,advanced indexing techniques,and data mining. You'll also learn how to compare different data mine technologies and products,and understand how they fit into your overall business and data processes. Intended for IS professionals as well as strategic planners,this fascinating book can be well relied upon as the essential reference to the standards,tools,technologies—and possibilities—of data warehousing today
Cited By
- Kumar R and Singh K (2022). A survey on soft computing-based high-utility itemsets mining, Soft Computing - A Fusion of Foundations, Methodologies and Applications, 26:13, (6347-6392), Online publication date: 1-Jul-2022.
- Long Q, Kurth W, Pradal C, Migault V and Pallas B An Architecture for the Integration of Different Functional and Structural Plant Models Proceedings of the 7th International Conference on Informatics, Environment, Energy and Applications, (107-113)
- Nimmagadda S, Reiners T and Rudra A (2017). An Upstream Business Data Science in a Big Data Perspective, Procedia Computer Science, 112:C, (1881-1890), Online publication date: 1-Sep-2017.
- Nimmagadda S, Zhu D and Rudra A Knowledge Base Smarter Articulations for the Open Directory Project in a Sustainable Digital Ecosystem Proceedings of the 26th International Conference on World Wide Web Companion, (1537-1545)
- Bortoli S, Bouquet P, Pompermaier F and Molinari A Semantic big data for tax assessment Proceedings of the International Workshop on Semantic Big Data, (1-6)
- Rojas E, Munoz-Gama J, Sepúlveda M and Capurro D (2016). Process mining in healthcare, Journal of Biomedical Informatics, 61:C, (224-236), Online publication date: 1-Jun-2016.
- Jander K, Braubach L and Lamersdorf W (2016). Distributed monitoring and workflow management for goal-oriented workflows, Concurrency and Computation: Practice & Experience, 28:4, (1324-1335), Online publication date: 25-Mar-2016.
- Shams F, Cerone A and Nicola R On Integrating Social and Sensor Networks for Emergency Management Revised Selected Papers of the SEFM 2015 Collocated Workshops on Software Engineering and Formal Methods - Volume 9509, (145-160)
- Ienco D, Pitarch Y, Poncelet P and Teisseire M Knowledge-Free Table Summarization Proceedings of the 15th International Conference on Data Warehousing and Knowledge Discovery - Volume 8057, (122-133)
- Li F, Lei J, Tian Y, Punyapatthanakul S and Wang Y Model selection strategy for customer attrition risk prediction in retail banking Proceedings of the Ninth Australasian Data Mining Conference - Volume 121, (119-124)
- Pinet F, Kang M, Boulil K, Bimonte S, De Sousa G, Roussey C, Schneider M and Chanet J (2011). Using OCL to Model Constraints in Data Warehouses, International Journal of Technology Diffusion, 2:3, (36-46), Online publication date: 1-Jul-2011.
- Lin Y, Tsai K, Shiang W, Kuo T and Tsai C (2009). Research on using ANP to establish a performance assessment model for business intelligence systems, Expert Systems with Applications: An International Journal, 36:2, (4135-4146), Online publication date: 1-Mar-2009.
- Zhan J, Loh H and Liu Y (2009). Gather customer concerns from online product reviews - A text summarization approach, Expert Systems with Applications: An International Journal, 36:2, (2107-2115), Online publication date: 1-Mar-2009.
- Lee C, Lau H, Ho G and Ho W (2009). Design and development of agent-based procurement system to enhance business intelligence, Expert Systems with Applications: An International Journal, 36:1, (877-884), Online publication date: 1-Jan-2009.
- Di Domenica N, Mitra G, Valente P and Birbilis G (2007). Stochastic programming and scenario generation within a simulation framework, Decision Support Systems, 42:4, (2197-2218), Online publication date: 1-Jan-2007.
- Rasheed F, Lee Y and Lee S Towards summarized representation of time series data in pervasive computing systems Proceedings of the Third international conference on Ubiquitous Intelligence and Computing, (658-668)
- Savinov A Grouping and aggregation in the concept-oriented data model Proceedings of the 2006 ACM symposium on Applied computing, (482-486)
- Park H, Song B, Yoo H, Rhee D, Park K and Chang J A data mining approach to analyze the effect of cognitive style and subjective emotion on the accuracy of time-series forecasting Data Mining, (218-228)
- Rasheed F, Lee Y and Lee S Context summarization and garbage collecting context Proceedings of the 2005 international conference on Computational Science and Its Applications - Volume Part II, (1115-1124)
- Leung R, Lau H and Kwong C (2004). An Intelligent System to Monitor the ChemicalConcentration of Electroplating Process, Artificial Intelligence Review, 21:2, (139-159), Online publication date: 1-Apr-2004.
- Kroeze J, Matthee M and Bothma T Differentiating data- and text-mining terminology Proceedings of the 2003 annual research conference of the South African institute of computer scientists and information technologists on Enablement through technology, (93-101)
- Kim W, Choi B, Hong E, Kim S and Lee D (2003). A Taxonomy of Dirty Data, Data Mining and Knowledge Discovery, 7:1, (81-99), Online publication date: 1-Jan-2003.
- Estivill-Castro V and Clifton C Preface Proceedings of the IEEE international conference on Privacy, security and data mining - Volume 14
- Riedewald M, Agrawal D and El Abbadi A Managing and analyzing massive data sets with data cubes Handbook of massive data sets, (547-578)
- Dasarathy B Data mining tasks and methods: Classification Handbook of data mining and knowledge discovery, (288-298)
- Kubat M and Cooperson M (2001). A reduction technique for nearest-neighbor classification: Small groups of examples, Intelligent Data Analysis, 5:6, (463-476), Online publication date: 1-Dec-2001.
- Dězeroski S Data mining in a nutshell Relational Data Mining, (3-27)
- Chun S, Chung C, Lee J and Lee S Dynamic Update Cube for Range-sum Queries Proceedings of the 27th International Conference on Very Large Data Bases, (521-530)
- Liu X (1999). Progress in Intelligent Data Analysis, Applied Intelligence, 11:3, (235-240), Online publication date: 1-Nov-1999.
- Zurek T and Sinnwell M Datawarehousing Has More Colours Than Just Black & White Proceedings of the 25th International Conference on Very Large Data Bases, (726-729)
- Costa M, Neves J, Sousa O and Santos S Verification and normalization of sentences Proceedings of the 7th international conference on Artificial intelligence and law, (136-137)
- Herschel R and Nemati H CKOS and knowledge management Proceedings of the 1999 ACM SIGCPR conference on Computer personnel research, (42-50)
- Büchner A and Mulvenna M (1998). Discovering Internet marketing intelligence through online analytical web usage mining, ACM SIGMOD Record, 27:4, (54-61), Online publication date: 1-Dec-1998.
Recommendations
Present and future directions in data warehousing
Many large organizations have developed data warehouses to support decision making. The data in a warehouse are subject oriented, integrated, time variant, and nonvolatile. A data warehouse contains five types of data: current detail data, older detail ...
A data warehouse architecture for clinical data warehousing
ACSW '07: Proceedings of the fifth Australasian symposium on ACSW frontiers - Volume 68Data warehousing methodologies share a common set of tasks, including business requirements analysis, data design, architectural design, implementation and deployment. Clinical data warehouses are complex and time consuming to review a series of patient ...