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ICAI 2013 : ICAI 2013 Session title: ​Learning related to MapReduce and Phishing Detection

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Link: http://ramimustafaa.wix.com/mapreduced-phihsing
 
When Jul 22, 2013 - Jul 25, 2013
Where Las Vegas, USA.
Submission Deadline Apr 24, 2013
Notification Due May 24, 2013
Final Version Due Jun 1, 2013
Categories    map reduced   phishing   security   huge data processing
 

Call For Papers

ICAI 2013 Session title: ​Learning related to MapReduce and Phishing Detection​


​This session combines between new trends in learning algorithms within data mining and machine learning. The first one is the MapReduce programming paradigm which is becoming popular for large scale data intensive distributed applications due to its efficiency, simplicity and ease of use. The second trend is about web security such as detecting phishing which is simply identifying the type of a website and email based on certain characteristics that are connected with the website/email. Papers related to distributed, parallel, incremental learning algorithms for the different type of data mining tasks (classification, clustering, association rule, etc) are welcome.

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