| |||||||||||||||
StreamKDD 2010 : Workshop on Novel Data Stream Pattern Mining Techniques | |||||||||||||||
Link: http://lyle.smu.edu/cse/dbgroup/IDA/StreamKDD2010 | |||||||||||||||
| |||||||||||||||
Call For Papers | |||||||||||||||
Data stream mining gained in importance over the last years because it is indispensable for many real applications such as prediction and evolution of weather phenomena; security and anomaly detection in networks; evaluating satellite data; and mining health monitoring streams. Stream mining algorithms must take account of the unique properties of stream data: infinite data, temporal ordering, concept drifts and shifts, demand for scalability etc.
Learning on streams has followed two threads thus far: mining (classification, clustering, frequent itemset discovery) and probabilistic modeling. In both threads, scholars devise solutions to the above problems. Stream clustering algorithms are more oriented towards scalability and tracing of model changes, while dynamic probabilistic modeling, e.g. dynamic topic modeling, encompasses methods that adapt seamlessly to drifts. At the same time, research on unsupervised stream learning seems to be scattered along the many application areas. Examples of areas that seem to evolve independently are sensor mining, mining on clickstreams and other logs in stream form, topic modeling on document streams, and temporal mining on data that are actually streams. With this workshop, we attempt to bring together the advances on those complementary areas. Suggested topics: * Clustering and classification on streams * Probabilistic modeling on dynamic data * Frequent itemset discovery on streams * Dealing with concept drift * Change and novelty detection on streams * Scalable stream mining algorithms * Visual analytics on streams We particularly solicit works for challenging application areas, such as: * Security * Assisted living * Patient monitoring * Traffic monitoring * Recommendation engines * Customer lifetime management Keynote Speech Speaker and topic: TBD Important Dates Submission date for full papers: May 4, 2010 Author notification: May 21, 2010 Submission of camera-ready paper: May 28, 2010 Half-day workshop at ACM SIGKDD conference: July 25, 2010 (afternoon) Paper Submission Submissions have to be 9 pages or less using the ACM template (http://www.acm.org/sigs/publications/proceedings-templates). Electronic submission via http://www.easychair.org/conferences/?conf=streamkdd2010 Proceedings All submitted papers will be refereed for quality and originality by the Program Committee. Accepted papers will be published in the workshop proceedings, which will be included in the ACM Digital Library. The best paper and a workshop report will be published in KDD Explorations. We are currently working on an outlet to publish complete post-proceedings. Organizers Margaret H. Dunham Intelligent Data Analysis Group (IDA) Department of Computer Science and Engineering Lyle School of Engineering Southern Methodist University Dallas, Texas 75275 U.S.A. mhd [at] lyle.smu.edu Michael Hahsler Intelligent Data Analysis Group (IDA) Department of Computer Science and Engineering Lyle School of Engineering Southern Methodist University Dallas, Texas 75275 U.S.A. mhahsler [at] lyle.smu.edu Myra Spiliopoulou Workgroup KMD: "Knowledge Management & Discovery" Faculty of Computer Science Otto-von-Guericke-Universität Magdeburg PO Box 4120, D-39016 Magdeburg Germany myra [at] iti.cs.uni-magdeburg.de Program Committee * Sanjay Chawla, University of Sydney, Australia * João Gama, Universidade do Porto, Portugal * Le Gruenwald, NSF/University of Oklahoma, USA * Eamonn Keogh, University of California - Riverside, USA * Latifur Khan, University of Texas at Dallas, USA * Chi-Hoon Lee, Yahoo! Labs, USA * Mohammad Masud, University of Texas at Dallas, USA * Tamer Özsu, University of Waterloo, Canada * Spiros Papadimitriou, IBM T.J. Watson Research Center, USA * Thomas Seidl, RWTH Aachen University, Germany * Dimitris Tasoulis, Imperial College London, UK Webmaster Michael Hahsler (mhahsler [at] lyle.smu.edu) |
|