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IEEE CIDM/SSCI - RLFCA 2017 : Representation learning for transfer and collaborative approaches (Special session in IEEE CIDM/SSCI 2017) | |||||||||||||
Link: http://www.ele.uri.edu/ieee-ssci2017/CIDM.htm | |||||||||||||
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Call For Papers | |||||||||||||
Call for Papers in Special Session
Representation learning for transfer and collaborative approaches IEEE Symposium on Computational Intelligence and Data Mining (CIDM) IEEE Symposium Series of Computational Intelligence (SSCI 2017) Honolulu, Hawaii, Nov 27 – Dec 1, 2017. Papers due July 16 Submission : http://www.ele.uri.edu/ieee-ssci2017/PaperSubmission.htm Select "CIDM6" as Main research topic Data Clustering is a fundamental task in the process of knowledge extraction from databases that aims to discover the intrinsic structures in a set of objects by forming clusters that share similar features. Over the past two decades, these tasks have become even more challenging when the available data sets became more complex with the introduction of multi-view data sets, distributed data, data streams and data set having different scales of structures of interest (e.g. hierarchical clusters). Because of this increased complexity in an already hard problem, new approaches are needed. Within this context, the purpose of our session is to bring together researchers working on unsupervised frameworks learning involving a decomposition of the clustering task into several sub-problems. The decomposition can involve algorithms working on different subsets of a multi-view or a distributed data set, searching for different scales of interested in the same data to find hierarchical structures, analyzing in parallel different time periods of a data stream, etc… These approaches are a recent area of research with a large number of applications to tackle difficult problems, such as clustering of distributed data, multi-expert clustering, multi-scale clustering analysis or multi-view clustering. Most of these frameworks can be regrouped under the umbrella of transfer and collaborative learning, the aim of which is to reveal the underlying structure of the data by sharing information between algorithms working on different sub-problems. Topics of interest include, but are not limited to the following: - Collaborative clustering - Collaborative learning - Cooperative learning - Multi-view learning - Multi-task learning - Transfers learning - Representation learning - Modular approaches - Distributed data - Task decomposition Contact Session Co-Chairs: - Guénaël Cabanes: Institut Galilée, University Paris 13, France (contact: cabanes@lipn.univ-paris13.fr) - Younès Bennani: Institut Galilée, University Paris 13, France - Nistor Grozavu: Institut Galilée, University Paris 13, France - Basarab Matei: Institut Galilée, University Paris 13, France |
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