Survey
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
References [Aberer96] Aberer, K. and Hemm, K., “A methodology for building a data warehouse in a scientific environment,” Proceedings of the First International Conference on Cooperative Information Systems, pages 90 – 101, 1996 [Berry00] Michael J.A. Berry, “Mastering Data Mining – The Art and Science of CRM,” John Wiley & Sons, 2000 [Buchner00] Buchner, A. G. and Others, “Data Mining and XML: Current and Future Issues,” Proceedings of the First International Conference on Web Information Systems Engineering, 2000, Volume 2, pages 131 - 135 [Campos05] Campos, M. M. and Others, “Data-centric automated data mining,” Proceedings of the Fourth International Conference on Machine Learning and Applications, 2005 [Chaud01] Chaudhuri, S and Others, “Database technology for decision support systems,” Computer, Volume 34, Issue 12, pages 48-55, 2001 [D’Agos04] D’ Agostino, “CIO Insight,” Aug 2004 Issue 42, p72-76 [Delmater01] Rhonda Delmater & Monte Hancock, “Data Mining Explained: A Manager’s Guide to Customer-Centric Business Intelligence,” Digital Press, 2001 [Dix98] Alan Dix and Others, “Human-Computer Interaction,” Prentice Hall Europe, 1998 [Goebel99] Michael Goebel and Le Gruenwald, “A survey of data mining and knowledge discovery software tools,” ACM SIGKDD Explorations Newsletter, vol. 1, issue 1, pages 20 – 33, ACM Press, 1999 [Hand01] David Hand and Others, “Principles of Data Mining,” The MIT Press, 2001 [Howard97] Howard, C. M. and Rayward-Smith, V. J., “Streamlining a meteorological database for knowledge discovery,” IEE Colloquium on IT Strategies for Information Overload, page 9/1, Digest No: 1997/340 [Jacobson98] Ivar Jacobson and Others, “Software Reuse – Architecture, Process and Organization for Business Success,” Addison-Wesley, 1998 164 [Jensen98] Cary Jensen and Others, “Jbuilder Essentials,” McGraw-Hill/Osborne, 1998 [Kielty97] Kielty, J. and Others, “Advanced data extraction and preparation via Tipster (ADEPT),” Proceedings of MILCOM, vol. 1 pages 388 – 392, 1997 [Kim03] Won Kim and Others, “A Taxonomy of Dirty Data,” Data Mining and Knowledge Discovery, 7, 81-99, 2003, Kluwer Academic Publishers [Kimball04] Ralph Kimball & Joe Caserta, “The Data Warehouse ETL Toolkit: Practical Techniques for Extracting, Cleaning, Conforming, and Delivering Data,” John Wiley & Sons, 2004 [Larman98] Craig Larman, “Applying UML and Patterns,” Prentice Hall 1998 [Larose05] Daniel Larose, “Discovering Knowledge in Data: An Introduction to Data Mining,” John Wiley & Sons, 2005 [LeanYu06] Lean Yu and Others, “An integrated data preparation scheme for neural network data analysis,” IEEE Transactions on Knowledge and Data Engineering, pages 223-224, 2006 [Micro00] Microsoft Corporation 1988-2000, “SQL Server Books Online.” [Nazeri02] Nazeri, Z and Zhanq, Jianping, “Mining aviation data to understand impacts of severe weather on airspace system performance,” Proceedings of the International Conference on Information Technology: Coding and Computing, 2002, pages 518 – 523 [Olsen03] Jack E. Olsen, “Data Quality: The Accuracy Dimension,” Morgan Kaufmann Publishers, 2003 [Ordonez04] Carlos Ordonez, “Horizontal aggregations for building tabular data sets,” Data Mining And Knowledge Discovery, ACM Press, 2004, pages 35-42 [Pressman01] Roger S. Pressman, “Software Engineering – A Practitioner’s Approach,” McGraw Hill, 2001 [Putten04] Peter van der Putten and Maarten van Someren, “A Bias-Variance Analysis of a Real World Learning Problem: The CoIL Challenge 2000,” Machine Learning, 57, 177–195, 2004, Kluwer Academic Publishers 165 [Pyle99] Dorian Pyle, “Data Preparation for Data Mining,” Morgan Kaufmann Publishers, 1999 [Pyle03] Dorian Pyle, “Business Modeling and Data Mining,” Morgan Kaufmann Publishers, 2003 [Raja01] B. Rajagopalan and M. W. Isken, “Exploiting data preparation to enhance mining and knowledge discovery,” IEEE Transactions on Systems, Man and Cybernetics, Part C, 2001 [Rick05] Sherman, Rick, “Set the Stage with Data Preparation,” DM Review, Feb 2005, Vol. 15 Issue 2, p54-55 [Sattler01] Sattler, K. U. and Schallehn, E, “A data preparation framework based on a multidatabase language,” International Symposium on Database Engineering & Applications, pages 219 – 228, 2001 [Sequeira03] Sequeira A. and Alderman B., “The SQL Server 2000 Book,” Paraglyph Press, 2003. [Sihem04] Sihem, Amer-Yahia and Sophie Cluet, “ACM Transactions on Database Systems,” ACM Press, Volume 29, Issue 2, Pages 233-281, 2004 [Soukup02] Soukup T. and Davidson I., “Visual Data Mining,” John Wiley & Sons, 2002 [Tao00] Tao, Feng and Murtagh, K., “Towards knowledge discovery from WWW log data,” Proceedings of the International Conference on Information Technology: Coding and Computing, page 302-307, 2000 [Tremblay06] M. C. Tremblay and Others, “Feature Selection for Predicting Surgical Outcomes,” Proceedings of the 39th Annual Hawaii International Conference on System Sciences, 2006. [Wei03] Wei, W. and Tang, Y., “A generic neural network approach for filling missing data in data mining,” IEEE International Conference on Systems, Man and Cybernetics,” volume 1, pages 862 – 867, 2003 [Wood05] Woodward, V. L., “Systematic data preparation in an automated test diagnostic environment,” IEEE Autotestcon, page 703, 2005 166 [Wright00] Wright, P and Hodges, J, “A fuzzy-based instance selection approach for data mining,” The Ninth IEEE International Conference on Fuzzy Systems, 2000 [Yan97] Yan, Wu and Craske, N, “Discovery from Queries,” Proceedings of Knowledge and Data Engineering Exchange Workshop, pages 120-122, 1997 [Zhu05] Zhu, X and Wu, X, “Cost-constrained data acquisition for intelligent data preparation,” IEEE Transactions on Knowledge and Data Engineering, pages 1542-1556, 2005 167