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ECIS-LADS 2013 : International Workshop on Learning Analytics, Design, and Systems

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Link: http://lads.eiura.org/
 
When Jun 5, 2013 - Jun 5, 2013
Where Utrecht, The Netherlands
Submission Deadline Mar 15, 2013
Notification Due Apr 15, 2013
Final Version Due May 6, 2013
Categories    learning analytics   e-learning    learning intelligence   technology enhanced learning
 

Call For Papers

The LADS workshop concentrates on research problems related to learning analytics and attempts
to bring researchers and practitioners together discussing and sharing advanced ideas and
preliminary results in learning analytics research. In order to foster a high level of interaction and
discussion participants are invited to submit and present a paper and also to take an active role in
the discussion. With this workshop we intend to provide a forum to support the emerging research
community in Learning Analytics.

For more details, please visit the web site at http://lads.eiura.org/

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