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Category DM 2011
Deadline: August 22, 2011 | Date: August 29, 2011-September 01, 2011
Venue/Country: Maastricht, Netherlands
Updated: 2011-07-09 12:23:05 (GMT+9)
**** **** Apologies if you receive multiple copies of this announcement **** Please forward to anyone who might be interested **** **Summer School: Data MiningAn intensive 4-day introduction to methods and applicationsDepartment of Knowledge Engineering, Maastricht University,Maastricht, The NetherlandsAugust 29 - September 1, 2011IntroductionMost business organizations collect terabytes of data about business processes and resources. Usually these data provide just "facts and figures", not knowledge that can be used to understand and eventually re-engineer business processes and resources. Scientific community in academia and business have addressed this problem in the last 20 years by developing a new applied field of study known as data mining. In practice data mining is a process of extracting implicit, previously unknown, and potentially useful knowledge from data. It employs techniques from statistics, artificial intelligence, and computer science. Data mining has been successfully applied for acquiring new knowledge in many domains (like Business, Medicine, Biology, Economics, Military, etc.). As a result most business organizations need urgently data-mining specialists, and this is the point where this school comes to help. Description The school curricullum is well balanced between theory and practice. Each lecture is accompanied by a lab in which participants experiment with the techniques introduced in the lecture. The lab tool is Weka, one of the most advanced data-mining environments. A number of real data sets will be analysed and discussed. In the end of the school participants develop their own ability to apply data-mining techniques for business and research purposes.ToolsThe school focuses on techniques with a direct practical use. A step-by-step introduction to powerful (freeware) data-mining tools will enable you to achieve specific skills, autonomy and hands-on experience. A number of real data sets will be analysed and discussed. In the end of the school you will have your own ability to apply data-mining techniques for research purposes and business purposes. ContentThe school will cover the topics listed below.- The Knowledge Discovery Process - Data Preparation - Basic Techniques for Data Mining: + Decision-Tree Induction + Rule Induction + Instance-Based Learning + Bayesian Learning + Support Vector Machines + Regression Techniques + Clustering Techniques + Association Rules - Tools for Data Mining - How to Interpret and Evaluate Data-Mining Results Intended AudienceThis school is intended for four groups of data-mining beginners: students, scientists, engineers, and experts in specific fields who need to apply data-mining techniques to their scientific research, business management, or other related applications.PrerequisitesThe school does not require any background in databases, statistics, artificial intelligence, or machine learning. A general background in science is sufficient as is a high degree of enthusiasm for new scientific approaches. CertificateUpon request a certificate of full participation will be provided afterthe school. RegistrationTo register for the school please send an email to:smirnov
maastrichtuniversity.nlIn the e-mail please specify:- Name - University / Organisation - Address - Phone -E-Mail Registration Deadline: August 22, 2011Registration feesAcademic fee 600 EurosNon-academic fee 850 EurosIncluded in the price are: school material and coffee breaks. The local cafeteria will be available for lunch (not included).Registartion e-mail: smirnov
maastrichtuniversity.nlRegular mail should be sent to:Evgueni SmirnovDepartment of Knowledge Engineering Faculty of Humanities and SciencesMaastricht UniversityP.O.Box 6166200 MD MaastrichtThe NetherlandsPhone: +31 (0) 43 38 82023Fax: +31 (0) 43 38 84897 E-mail: smirnov
maastrichtuniversity.nlKeywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
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