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BAO in IEEE ICEBE 2012 : Business Analytics and Optimization track, IEEE ICEBE

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Link: http://conferences.computer.org/icebe/
 
When Sep 9, 2012 - Sep 12, 2012
Where Hangzou, China
Submission Deadline May 20, 2012
Notification Due Jun 18, 2012
Final Version Due Jul 1, 2012
Categories    e-business   data mining   machine learning   optimization
 

Call For Papers

The IEEE International Conference on e-Business Engineering (ICEBE) is a prestigious conference sponsored by IEEE Technical Committee on Business Informatics and Systems (TCBIS, formerly TC on Electronic Commerce). It provides a high-quality international forum for researchers, engineers and business specialists to exchange their latest findings and experiences related to the design and implementation of e-business. ICEBE 2012 will take place in Hangzhou, China, September 9-11, 2012.

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