CFPPrevious | item22 | NextFrom: Joerg Keller joerg.keller@daimlerchrysler.com Subject: CFD: ECML'2000 Workshop Meta-Learning, May 30th, 2000, Barcelona, Spain Date: Mon, 31 Jan 2000 17:13:28 +0100 Call for papers: ECML'2000 Workshop May 30th, 2000, Barcelona, Catalonia (Spain) Meta-Learning: Building Automatic Advice Strategies for Model Selection and Method Combination http://www.iiia.csic.es/ecml2000/ Motivation and Technical Description ------------------------------------------------------------------------- The application of Machine Learning (ML) and Data Mining (DM) tools to classification and regression tasks has become a standard, not only in research but also in administrative agencies, commerce and industry (e.g., finance, medicine, engineering). Two important aspects of such application is the selection of a suitable model and the combination of methods. Since the expertise to address these issues is seldom available in-house, users of commercial ML and DM tools must either resort to trial-and-error or consultation of experts. Clearly, neither solution is completely satisfactory for the non-expert end-users who wish to access the technology more directly and cost-effectively. Automatic and systematic guidance is required. Automatic guidance in model selection and data transformation requires meta-knowledge. Current ML and DM tools are only as powerful/useful as their users. One main aim of current research in the community is to develop meta-learning assistants to support users. Such systems should be able to deal with the increasing number of models and techniques, and give advice dynamically on model selection and method combination. Furthermore, inductive meta-learning capabilities should be included, which use cumulative expertise gained from prior research and the conclusions of past comparative studies, all of which are useful forms of meta-knowledge. Meta-learning assistants could be integrated naturally in future versions of commercial ML and DM tools. Objective and Scope ----------------------------------------------------------------------------- In the past decade, a number of research projects have examined meta-learning. In Europe, the most prominent ones include the ESPRIT Statlog (1991-1994) and METAL (1998-2001) projects. The aim of this workshop is to offer the international community a forum to exchange experience, knowledge and perspectives in meta-learning. In particular, it is hoped that academics and those working in research institutes will present the current status of the research; ML/DM practitioners will describe applications of meta-learning in real-world problems; and ML/DM software developers will discuss tools and potential integration of meta-learning assistants in their systems. This workshop continues in the tradition of previous related workshops, such as the ECML95 Workshop on Learning at the Knowledge Level and the ICML97 Workshop on Machine Learning Applications in the Real World. It also complements the results of the ECML98 Workshop on Upgrading Learning to the Meta-Level, the AAAI98/ICML98 Workshop on the Methodology of Applying Machine Learning and the ICML99 Workshop on Advances in Meta-learning and Future Work. Contributions (from all main sub-fields of ML) describing work in progress as well as position papers are invited. All contributions must focus on the automation of machine learning and meta-learning. Of particular interest are methods and proposals that address the following issues: *- What criteria and metrics can be used for evaluating and autmating model selection in classification and regression? What is the cost of these metrics? - How can expert knowledge be integrated with meta-learning? - What are the requirements for a dynamic, incremental meta-learning system? What multi-criteria advice strategy should be used? *- What different approaches to meta-learning have been/can be proposed * and/or implemented? Presentations of beta versions of meta-learning tools for automated or guided use of methods or algorithms with respect to performance or run stability are also welcome. Submissions ------------------------------------------------------------------------------ Papers must be submitted electronically, preferably in postscript, to one of the organisers. Submitted papers will be reviewed by at least two independent referees from the Program Committee. Accepted papers will be published in the workshop proceedings and contributors will be allocated 30 minutes for an oral presentation during the workshop. Format according to ECML-2000: long papers (less than 6000 words) and short papers (less than 4000 words) will be accepted (excluding title page, but including all tables, figures and bibliography) submission deadline of whole workshop paper: Feb. 29 th, 2000 dates for acceptance/rejection notification: Mar. 31 rd, 2000 final camera ready copy: Apr. 17 th, 2000 Organisation ------------------------------------------------------------------------------ Organisers: J. Keller, DaimlerChrysler AG, Germany joerg.keller@daimlerchrysler.com C. Giraud-Carrier, University of Bristol, UK cgc@cs.bris.ac.uk http://www.iiia.csic.es/ecml2000/ Program Committee: Pavel Brazdil, University of Porto, Portugal Philip Chan, Florida Institute of Technology, USA Robert Engels, University of Karlsruhe, Germany Dieter Fensel, University of Karlsruhe, Germany Jean-Gabriel Ganascia, Univeriste Paris VI, France Christophe Giraud-Carrier, University of Bristol, England Ashok Goel, Georgia Institute of Technology, USA Melanie Hilario, Univeristy of Geneva, Switzerland Joerg Keller, DaimlerChrysler AG, Germany Stan Matwin, University of Ottawa, Canada Dunja Mladenic, Jozef Stefan Institute, Slovenia Gholamreza Nakhaeizadeh, DaimlerChrysler AG, Germany Bernhard Pfahringer, Austrian Research Institute for AI, Austria Andreas Prodromidis, Columbia University, USA Maarten van Someren, University of Amsterdam, The Netherlands Gerhard Widmer, Austrian Research Institute for AI, Austria Takahira Yamaguchi, Shizuoka Univeristy, Japan Previous | item22 | Next |
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