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[ÇóÖú] CFP: SML@IEEE BigData 2013

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                                      CALL FOR PAPERS
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SML@IEEE BigData 2013: International Workshop on Scalable Machine Learning: Theory and Applications

https://sites.google.com/site/bigdatasml/home
Co-located with IEEE BigData 2013, October 6, 2013, Santa Clara, CA, USA

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×éÖ¯Õß
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* Irwin King, The Chinese University of Hong Kong
* Michael R. Lyu, The Chinese University of Hong Kong
* Michael Mahoney, Stanford University
* Zenglin Xu, Purdue University
* Haiqin Yang, The Chinese University of Hong Kong

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* Mikhail Bilenko, Microsoft research
* Carlos Guestrin, University of Washington
* Alek Kolcz, Twitter
* Alex Smola, Carnegie Mellon University

TOPICS OF INTEREST
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Topics of interest include, but not limited to:

* Distributed machine learning architectures
  - Data separation and integration techniques
  - Machine learning algorithms for GPUs
  - Machine learning algorithms for clouds
  - Machine learning algorithms for clusters
* Theory and algorithms of data reduction techniques for Big Data
   - Online/incremental learning algorithms
   - Random projection
   - Hashing techniques
   - Data sampling algorithms
* Theory and algorithms of large-scale matrix approximation
   - Bound analysis of matrix approximation algorithms
   - Parallel matrix factorization
   - Parallel multiway array factorization
   - Online dictionary learning
   - Distributed topic modeling algorithms
* Heterogeneous learning on Big multi-modality Data
   - Multiview learning
   - Multitask learning
   - Transfer learning
   - Semi-supervised learning
   - Active learning
* Temporal analysis and spatial analysis in Big Data
   - Real time analysis for data stream
   - Trend prediction in financial data
   - Topic detection in instant message systems
   - Real time modeling of events in dynamic networks
   - Spacial modeling on maps
* Scalable Machine Learning in large graphs
   - Communities discovery and analysis in social networks
   - Link prediction in networks
   - Anomaly detection in social networks
   - Authority identification and influence measurement in social networks
   - Fusion of information from multiple blogs, rating systems, and social networks
   - Integration of text, videos, images, sounds in social media
   - Recommender systems
* Novel applications of scalable machine learning in
   - Healthcare
   - Cybersecurity
   - Mobile computing such as location-based service, mobile networks, etc.
   - Smart cities
   - Astronomy
   - Biological data analysis

ÖØÒªÈÕÆÚ
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* August 2, 2013: Due date for workshop papers submission
* August 30, 2013: Notification of paper decision to authors
* September 25, 2013: Camera-ready of accepted papers
* October 6 2013: Workshop

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IEEE ÂÛÎĸñʽ: Ïê¼ûSubmission Information in https://sites.google.com/site/bigdatasml/

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[ Last edited by yhq2k on 2013-7-4 at 13:09 ]
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