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MLTA-MIWAI 2013 : Special Session on Machine Learning and Text Analytics in MIWAI2013, Thailand


When Dec 9, 2013 - Dec 11, 2013
Where Krabi, Thailand
Submission Deadline Jul 31, 2013
Notification Due Sep 1, 2013
Final Version Due Sep 15, 2013
Categories    artificial intelligence   text mining   information management   machine learning

Call For Papers

A special session on Machine Learning and Text Analytics is being organized in the 7th Multi-Disciplinary Workshop on Artificial Intelligence (MIWAI 2013) in Krabi, Thailand during 9-11 Dec. 2013. Papers reporting original research and/ or state of the art are invited on all areas of Machine Learning and Text Analytics. The paper needs to be formatted according to Springer LNCS format, with a page limit of 12 pages. All accepted papers will be published in Springer LNAI series as part of MIWAI 2013 proceedings. The submissions will be managed through EasyChair conference system. The deadline for paper submission is 31st July 2013 (Hard deadline - No extensions).

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