- From: Amol Ghoting <aghoting@us.ibm.com>
- Date: Tue, 10 May 2011 11:41:37 -0400
- Message-ID: <OFCCD7B6B9.4D6327FD-ON8525788C.00530BC2-8525788C.00563598@us.ibm.com>
******************************************************************************** Call for Papers Third Workshop on Large-scale Data Mining: Theory and Applications (LDMTA 2011) in conjunction with SIGKDD2011, August 21-24, 2011, San Diego, CA, USA http://www.arnetminer.org/LDMTA2011 ******************************************************************************** Objectives With advances in data collection and storage technologies, large data sources have become ubiquitous. Today, organizations routinely collect terabytes of data on a daily basis with the intent of gleaning non-trivial insights on their business processes. To benefit from these advances, it is imperative that data mining and machine learning techniques scale to such proportions. Such scaling can be achieved through the design of new and faster algorithms and/or through the employment of parallelism. Furthermore, it is important to note that emerging and future processor architectures (like multi-cores) will rely on user-specified parallelism to provide any performance gains. Unfortunately, achieving such scaling is non-trivial and only a handful of research efforts in the data mining and machine learning communities have attempted to address these scales. At the other end of the spectrum, the past few years have witnessed the emergence of several platforms for the implementation and deployment of large-scale analytics. Examples of such platforms include Hadoop (Apache) and Dryad (Microsoft). These platforms have been developed by the large-scale distributed processing community and can not only simplify implementation but also support execution on the cloud making large-scale machine learning and data mining both affordable and available to all. Today, there is a large gap between the data mining/machine learning and the large scale distributed processing communities. To make advances in large-scale analytics it is imperative that both these communities work hand-in-hand. The intent of this workshop is to further research efforts on large-scale data mining and to encourage researchers and practitioners to share their studies and experiences on the implementation and deployment of scalable data mining and machine learning algorithms. Topics of Interest * Application case studies that showcase the need for large-scale machine learning/data mining. Areas of interest of interest include financial modeling, web mining, medical informatics, climate modeling, and mining retail and e-commerce data. * Parallel and distributed algorithms for large-scale machine learning/data mining, data preprocessing, and cleaning. * Exploiting modern and specialized hardware such as multi-core processors, GPUs, STI Cell processor, etc. * Memory hierarchy aware data mining/machine learning algorithms. * Streaming data algorithms for machine learning and data mining. * New platforms and/or programming model proposals for parallel/distributed machine learning and data mining for batch and/or stream domains. * Evaluation of platforms (such as Hadoop) and/or programming models (such as map-reduce) for batch and/or stream domains. * Performance studies comparing cloud, grid, and cluster implementations * Data intensive computing approaches * Future research challenges in cloud and data intensive computing Important dates and guidelines Submission deadline: May 21th, 2011 Notification of acceptance: June 10th, 2011 Final papers due: June 15th, 2011 All papers submitted should have a maximum length of 8 pages and must be prepared using the ACM camera‐ready template http://www.acm.org/sigs/pubs/proceed/template.html. Authors are required to submit their papers electronically in PDF format. The submission site URL will be available on our website shortly. All submissions should clearly present the author information including the names of the authors, the affiliations and the emails. Submission site is located at https://www.easychair.org/conferences/?conf=ldmta2011 Workshop Co-chairs Dr. Chidanand Apte, IBM Research Prof. Nitesh V. Chawla, University of Notre Dame Dr. Amol Ghoting, IBM Research Prof. Yan Liu, University of Southern California Dr. Jimeng Sun, IBM Research Prof. Jie Tang, Tsinghua University, China Dr. Ranga Raju Vatsavai, Oak Ridge National Laboratory Program Committee Shirish Tatikonda, IBM Research Gagan Agrawal, Ohio State University Jeffrey Yu, Chinese University of Hong Kong Alexander Gray, Georgia Tech Prabhanjan Kambadur, IBM Research Rong Yan, Facebook Elad Yom-Tov, Yahoo! Research Mohammed Zaki, Rensselaer Polytechnic Institute Saeed Salem, North Dakota State University Berthold Reinwald, IBM Research Yuan Yu, Microsoft Research Petros Drineas, Rensselaer Polytechnic Institute Misha Bilenko, Microsoft Research Ron Bekkerman, LinkedIn Vijay Narayanan, Yahoo! Milind Bhandarkar, LinkedIn Tina Eliassi-Rad, Rutgers University Steering Committee Prof. Christos Faloutsos, Carnegie Mellon University Prof. Robert Grossman, University of Illinois at Chicago Prof. Jiawei Han, University of Illinois at Urbana-Champaign
Received on Tuesday, 10 May 2011 15:42:18 UTC