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DM: ACAI-99: new deadlinesFrom: Ivan Bruha Date: Tue, 2 Mar 1999 11:22:35 -0500 (EST) &&&&&&&&&&&&&&&&&&&&&&&&&& New Deadlines &&&&&&&&&&&&&&&&&&&&&&& C A L L F O R P A P E R S ----------------------------- >>>>>>> Pre- and Post-Processing in Machine Learning and Data >Mining: <<<<<<< >>>>>>> Theoretical Aspects and Applications > <<<<<<< :::::A WORKSHOP WITHIN:::: MACHINE LEARNING AND APPLICATIONS Advanced Course on Artificial Intelligence 1999 (ACAI-99) 5-16 July 1999, Greece (http://www.iit.demokritos.gr/skel/eetn/acai99) European Coordinating Committee on Artificial Intelligence (ECCAI) (http://www.eccai.org) & Hellenic Artificial Intelligence Society (EETN) (http://www.iit.demokritos.gr/skel/eetn) This workshop addresses an important aspect related to the Data Mining (DM) and Machine Learning (ML) in pre-processing and analyzing real-world data. First, the data which are to be processed by a DM algorithm are usually noisy and often inconsistent. Many steps are involved before the actual data analysis starts. Moreover, the genuine logical ML systems do not easily allow processing of numerical attributes as well as numerical (continuous) classes. Therefore, certain procedures have to precede the actual data analysis process. Second, a result of a genuine ML algorithm, such as a decision tree or a set of decision rules, need not be perfect from the view of custom or commercial applications. It is quite known that a concept description as a result of an inductive process has to be usually processed by a pre- or post-pruning procedure. Other post-processing procedures include rule quality processing, rule filtering, rule combination, or even knowledge integration. All these procedures provide a kind of "symbolic filter" for noisy, imprecise, or "non-user-friendly" knowledge derived by an inductive algorithm. Thus, the pre- and post-processing tools always help the DM algorithms to investigate databases as well as to refine the acquired knowledge. Usually, these tools exploit techniques that are not genuinely logical, e.g., statistics, neural nets, and others. These reasons let us to launch this workshop. In fact, we would like to support both theoretical aspects of this issue and practical, experienced, empirical applications. As for the latter, we would like to focus on industry and business applications, but we will review any functional application of the above concern in any discipline. The theme of this workshop is directly related to the "Machine Learning and Applications" conference: 1. It provides a forum for researchers and practitioners who are interested in the scope of the workshop to exchange information by attending and/or presenting a paper. 2. Since this workshop is focused on both theoretical and applications aspects, it provides an opportunity for researchers to learn about the challenges and real problems in development and applications of machine learning techniques. Organizers: ---------- A. (Fazel) Famili (chair) Editor-in-Chief, Intelligent Data Analysis http://www.elsevier.com/locate/ida Phone: +1-613-9938554 Institute for Information Technology Fax : +1-613-9527151 National Research Council of Canada, Email: Fazel.Famili@ai.iit.nrc.ca Bldg. M-50, Montreal Rd. Ottawa, Ont. http://ai.iit.nrc.ca/~fazel Canada K1A 0R6 Ivan Bruha (contact person) ^^^^^^^^^^^^^^^^ http://www.cas.mcmaster.ca/~bruha McMaster University Phone: +1-905-5259140 ext 23439 Dept. Computing & Software Fax: +1-905-5240340 Hamilton, Ont. Email: bruha@mcmaster.ca Canada L8S 4L7 Organization Notes: ------------------ There will be one or two invited talks on the workshop which will survey the given topic as well as introduce their own research. Up to 10 accepted papers will be presented (each 15-20 min). If there is a larger interest, then some papers might be accepted as posters. Maximum size is 10 (ten) pages. Submit your paper either by regular mail or by Email to I. Bruha. If you use Email, then the PostScript format would be the ^^^^^^^^ most suitable. The workshop will take place during the afternoon sessions of ACAI-99, from 14:30 to 18:00. Depending on the number of accepted papers the workshop will take place one or two afternoon sessions. The exact date of the workshop will be finalized by the ACAI-99 organizing committee. Anyone registered for the main ACAI-99 event can also attend all the workshops. For the workshop participants who will not be registered for the whole ACAI-99 there will be a fee that will be finalized soon. Proceedings will be published as a technical report in collaboration with the ACAI-99 organization committee. >>>>>> Please note that authors of the best papers will be invited >to <<<<<<< submit an extended version of their papers to the Intelligent Data Analysis Journal (http://www.elsevier.com/locate/ida), or even a special issue of the journal regarding this topic might be published. New deadline for paper submission: --------------------------------- Updated schedule: Deadline for paper submission: 20 March 1999 Notification of acceptance: 1 April 1999 Deadline for final camera ready papers: 15 April 1999
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