Abstract
This introductory paper to the special issue on Data Mining Lessons Learned presents lessons from data mining applications, including experience from science, business, and knowledge management in a collaborative data mining setting.
Article PDF
Avoid common mistakes on your manuscript.
References
Adriaans, P. (2002). Backgrounds and general trends. In J. Meij (Ed.), Dealing with the dataflood, mining data, text and multimedia (pp. 16–25). STT Beweton, The Hague, Netherlands.
Adriaans, P. (2002a). Production control. In W. Klösgen, & J. M. Zytkow (Eds.), Handbook of data mining and knowledge discovery. Oxford University Press.
Adriaans, P., & Zantinge, D. (1996). Data mining. Addison-Wesley.
Armistead, C., & Meakins, M. (2002).Aframework for practising knowledge management. Long Range Planning, 35:1, 49–71.
Berry, M. J. A., & Linoff, G. S. (1997). Data mining techniques: For marketing, sales, and customer support. John Wiley and Sons.
Brodley, C. E., & Smyth, P. (1995). The process of applying machine learning algorithms. In Proceedings of the ICML-95 Workshop on Applying Machine Learning in Practice.
Camarinha-Matos, L. M., Afsarmanesh, H., & Rabelo, R. (Eds.). (2000). E-business and virtual enterprise: Managing business-to-business cooperation. Kluwer.
Chapman, P., Clinton, J., Kerber, R., Khabaza, T., Reinartz, T., Shearer, C., & Wirth, R. (2000). CRISP-DM 1.0: Step-by-step data mining guide. CRISP-DM consortium.
Clark, P., & Matwin, S. (1993). Using qualitative models to guide inductive learning. In Proceedings of the Tenth International Conference on Machine Learning (pp. 49–56).
Danyluk, A., Provost, F., & Carr, B. (2002).Telecommunications network diagnosis. In W. Klösgen, & J. M. Zytkow (Eds.), Handbook of data mining and knowledge discovery. Oxford University Press.
Dieng, R. (2000). Guest editor's introduction: Knowledge management and the Internet. IEEE Intelligent Systems, 15:3, 14–17.
Džeroski, S., & Lavrač, N. (Eds.). (2001). Relational data mining. Springer.
Edvinsson, L., & Malone, M. S. (1997). Intellectual capital. Harper Business.
Evans, B., & Fisher, D. (2002). Using decision tree induction to minimize process delays in the printing industry. InW. Klösgen, & J. M. Zytkow (Eds.), Handbook of data mining and knowledge discovery. Oxford University Press.
Fayyad, U. M., Piatetsky-Shapiro, G., & Smyth, P. (1996). From data mining to knowledge discovery in databases. AI Magazine, 17, 37–54.
Fayyad, U. M., Piatetsky-Shapiro, G., & Smyth, P. (1996a). From data mining to knowledge discovery: An overview. In U. M. Fayyad, G. Piatetsky-Shapiro, P. Smyth, & R. Uthurusamy (Eds.), Advances in knowledge discovery and data mining. AAAI/MIT Press.
Furubotn, E. G., & Richter, R. (1997). Institutions and economic theoy: The contribution of the new institutional economics. The University of Michigan Press.
Garmus, D., & Herron, D. (2001). Function point analysis: measurement practices for successful software projects. Addison-Wesley Longman Publishing Co., Inc.
Goranson, H. T. (1999). The agile virtual enterprise: Cases, metrics, tools. Quorum Books.
Halliman, C. (2001). Business intelligence using smart techniques. Information Uncover.
Hand, D. J., Mannila, H., & Smyth, P. (2001). Principles of data mining. MIT Press.
Jorge, A., Moyle, S., Blockeel, H., & Voss, A. (2003). Data mining process and collaboration principles. In D. Mladenić, N. Lavrač, M. Bohanec, & S. Moyle (Eds.), Data mining and decision support: Integration and collaboration (pp. 63–78). Kluwer.
Jorge, A., Bojadžiev, D., Mladenić, D., & #x0160;těpánková, O., Palouš, J., Alves, M. A., Petrak, J., & Flach, P. (2003a). Internet support to collaboration: A knowledge management and organizational memory view. In D. Mladenić, N. Lavrač, M. Bohanec, & S. Moyle (Eds.), Data mining and decision support: Integration and collaboration (pp. 247–259). Kluwer.
Kohavi, R., Mason, L., Parekh, R., & Zheng, Z. (2004). Lessons and challenges from mining retail e-commerce data. Machine Learning, 57:1/2, Kluwer.
Maedche, A. 2002 Ontology learning for the semantic Web. Kluwer Academic publishers.
Kubat, M., Holte, R. C., & Matwin, S. (1998). Machine learning for the detection of oil spills in satellite radar images. Machine Learning, 30:2/3, 195–216.
Langley, P. (2000). The computational support of scientific discovery. International Journal of Human-Computer Studies, 53, 393–410.
Langley, P., & Simon, H. A. (1995). Applications of machine learning and rule induction. Communications of the ACM, 38:11, 54–64.
Lavrač, N. (2001) Computational logic and machine learning: A roadmap for inductive logic programming. Computational logic, Special issue: Computational logic roadmap (pp. 47–73).
Lavrač, N., Motoda, H., & Fawcett, T. (Eds.). (2002). Proceedings of the First International Workshop on Data Mining Lessons Learned, DMLL-2002, held in conjunction with ICML-2002, Sydney, July 2002. Available at: http://www.hpl.hp.com/personal/Tom Fawcett/DMLL-2002/Proceedings.html.
Lavrač, N. & Urbančič, T. (2003). Mind the gap: Academia-business partnership models and e-collaboration lessons learned. In D. Mladenić, N. Lavrač, M. Bohanec, & S. Moyle (Eds.), Data mining and decision support: Integration and collaboration (pp. 261–269). Kluwer.
Malhotra, Y. (2001). Knowledge management for the new world of business <http://www.kmnetwork.com/> whatis.htm.
Michie, D. (1989). Problems of computer-aided concept formation. In J. R. Quinlan (Ed.), Applications of expert systems, vol. 2 (pp. 310–333). Addison-Wesley.
Mitchell, F., Sleeman, D., Duffy, J. A., Ingram, M. D., & Young, R. W. (1997). Optical basicity of metallurgical slags: A new computer-based system for data visualisation and analysis. Ironmaking and Steelmaking, 24, 306–320.
Mitchell, T. (1997). Does machine learning really work? AI Magazine, 18:3, 11–20.
Mladenić, D., Lavrač, N., Bohanec, M., & Moyle, S. (Eds.). (2003). Data mining and decision support: Integration and collaboration. Kluwer.
Mladenić, D., & Lavrač, N. (Eds.). (2003). Data mining and decision support: A european virtual enterprise. DZS Publishers.
Morik, K., & Scholz, M. (2003). The MiningMart approach to knowledge discovery in databases. In N. Zhong, & J. Liu (Eds.), Handbook of intelligent IT. IOS Press.
Motoda, H. (Ed.). (2002). Active mining: New directions of data mining. IOS Press.
Motoda, H., & Washio, T. (Eds.). (2002). In Proceedings of the First International Workshop on Active Mining, AM2002, held in conjunction with IEEE ICDM-2002, Maebashi.
Moyle, S., McKenzie, J., & Jorge, A. (2003). Collaboration in a data mining virtual organization. In D. Mladenić, N. Lavrač, M. Bohanec, & S. Moyle (Eds.), Data mining and decision support: Integration and collaboration (pp. 49–62). Kluwer.
Pazzani, M. (2000). Knowledge discovery from data? IEEE intelligent systems, March/April, 10–13.
Pazzani, M. J., Mani, S., & Shankle, W. R. (2001). Acceptance of rules generated by machine learning among medical experts. Methods of Information in Medicine, 40, 380–385.
Porter, B. W., Bareiss, R., & Holte, R. C. (1990). Concept learning and heuristic classification in weak theory domains. Artificial Intelligence, 45:1/2, 229–263.
Provost, F. (2003). The role of applications in the science of machine learning. Invited talk at the Twentieth international conference on machine learning.
Provost, F., & Danyluk, A. (1999). Problem definition, data cleaning and evaluation: A classifier learning case study. Informatica, 23, 123–136.
Provost, F., Fawcett, T., & Kohavi, R. (1998). The case against accuracy estimation for comparing induction algorithms. In Proceedings of the Fifteenth International Conference on Machine Learning (pp. 445–453).
Pyle, D. (1999). Data preparation for data mining. Morgan Kaufmann.
Saito, K., Langley, P., Grenager, T., Potter, C., Torregrosa, A., & Klooster, S. A. (2001). Computational revision of quantitative scientific models. In Proceedings of the Fourth International Conference on Discovery Science, (pp. 336–349).
Saitta, L., & Neri, F. (1998). Learning in the 'real world'. Machine Learning, 30:2/3, 133–164.
Senator, T. (2002). Evidence extraction and link discovery program. Speech at DARPATech 2002. Transcript available: <http://www.darpa.mil/> DARPATech2002/presentations/iao pdf/speeches/SENATOR.pdf
Shapiro, A. D. (1987). Structured induction in expert systems. Addison-Wesley.
Turban, E., & Aronson, J. (1998). Decision support systems and intelligent systems, 5th edn. Prentice Hall.
Valdés-Pérez, R. (1994). Human/computer interactive elucidation of reaction mechanisms: Application to catalyzed hydrogenolysis of ethane. Catalysis Letters, 28, 79–87.
Wettschereck, D., Jorge, A., & Moyle, S. (2003). Data mining and decision support integration through the predictive model markup language standard and visualization. In D. Mladenić, N. Lavrač, M. Bohanec, & S. Moyle (Eds.), Data mining and decision support: Integration and collaboration (pp. 119–130). Kluwer.
Author information
Authors and Affiliations
Rights and permissions
About this article
Cite this article
Lavrač, N., Motoda, H., Fawcett, T. et al. Introduction: Lessons Learned from Data Mining Applications and Collaborative Problem Solving. Machine Learning 57, 13–34 (2004). https://doi.org/10.1023/B:MACH.0000035516.74817.51
Issue Date:
DOI: https://doi.org/10.1023/B:MACH.0000035516.74817.51