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COPEM 2013 : ECML/PKDD 2013 Workshop - COPEM - Solving Complex Machine Learning Problems with Ensemble Methods | |||||||||||||||
Link: http://ama.imag.fr/COPEM | |||||||||||||||
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Call For Papers | |||||||||||||||
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COPEM - ECML/PKDD 2013 Workshop - Submission deadline: 06/28/2013 =================================================================== *** Extended Deadline : July 4th *** Call for Papers - COPEM - Solving Complex Machine Learning Problems with Ensemble Methods URL: http://ama.imag.fr/COPEM Workshop at ECML-PKDD 2013, September 27, Prague, Czech Republic **** Extended versions of selected papers will be considered for a Special Issue in Neurocomputing journal (Elsevier, http://www.journals.elsevier.com/neurocomputing/) *** Important Dates *****Workshop paper submission deadline: June 28, 2013 *****Workshop paper acceptance notification: July 19, 2013 *****Workshop paper camera-ready deadline: Aug 2, 2013 *****Extended versions of selected papers for journal Special Issue: Nov 2, 2013 Scope By combining the decisions of several different predictors, ensemble methods provide appealing solutions to challenging problems in machine learning. These include for example dealing with learning under non-standard circumstances, i.e., when large volumes of data are available for induction, or when a data stream has to be classified under the phenomenon of concept drift. Similarly, ensemble methods can be used to tackle difficult problems related to multi-label classification, feature selection, or active learning. Although research in the field of ensemble learning has grown considerably in the recent years, the specific application of ensemble methods to the problems described is still in a very early stage. There are still many open issues and there remain challenges which may require interdisciplinary approaches. This workshop aims to gather together researchers in the area of ensemble methods to present their latest work and their efforts to address difficult machine learning problems, to discuss the challenges in the field and to identify where to target our efforts as a research community. Additionally, one of the goals of the workshop is to initiate collaborations between experts in ensemble methods and non-experts. In order to achieve this objective, the workshop includes a scientific networking component, where challenging machine learning problems can be submitted for discussion. Topics of Interest Researchers are encouraged to submit papers focusing on how to use ensemble methods to tackle difficult machine learning problems including, but not restricted to the following topics: * Large Scale Learning * Multi-modal Classification * Multi-Label Classification * Data-stream classification and Concept Drift adaptation * Multi-Dimensional Classification * Feature Selection * Active Learning * Mining social networks * Applications of Ensemble Methods Submission Instructions Two types of submissions are invited: paper submissions and problem submissions. Paper submissions must be written in English and formatted according to the Springer-Verlag Lecture Notes in Artificial Intelligence guidelines. Authors instructions and style files can be downloaded at: http://www.springer.de/comp/lncs/authors.html. Two types of paper submissions are allowed: short papers and research papers. The maximum length of short papers is 6 pages in the format described before. The maximum length of research papers is 16 pages, although papers of up to 12 pages are preferred. Submitted papers will be peer-reviewed by at least three reviewers. Acceptance will be based on the basis of these reviews and on relevance, technical soundness, originality, and clarity of presentation. Accepted papers will be presented at the workshop either as a poster or via oral presentation. Submissions must be made through EasyChair system at http://www.easychair.org/conferences/?conf=copem2013. **** Extended versions of selected papers will be considered for a Special Issue in Neurocomputing journal (Elsevier, http://www.journals.elsevier.com/neurocomputing/) *** Problem submissions have the objective to start interactions in the machine learning community. Researchers are invited to submit: * A problem that they intend to conduct research on and they believe ensemble methods can be a suitable approach but have no expertise in the field. * A problem that they have already investigated using a probably simple ensemble strategy but they wish to improve it. Problem submissions can be uploaded in the workshop web site as either: * A document (extended abstract with the ability to add attachments). * A video presentation. via the following link: http://ama.imag.fr/COPEM A message board will be enabled under each problem to facilitate discussion between the different members of the machine learning community. Problem submission will be briefly presented in a Networking Session of the workshop by the authors and/or the workshop chairs. The goal will be then to obtain feedback from the community of experts in ensemble methods attending the workshop. Organizers * Ioannis Katakis: Department of Communication and Internet Studies, Cyprus University of Technology * Daniel Hernández-Lobato: Computer Science Department, Universidad Autónoma de Madrid * Gonzalo Martínez-Muñoz: Computer Science Department, Universidad Autónoma de Madrid * Ioannis Partalas: Laboratoire d'Informatique de Grenoble, University of Grenoble |
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