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ICDL-EpiRob 2012 : IEEE Conference on Development and Learning and Epigenetic Robotics

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Link: http://icdl2012.ucsd.edu/
 
When Nov 7, 2012 - Nov 9, 2012
Where San Diego, California, USA
Submission Deadline Jun 15, 2012
Notification Due Sep 15, 2012
Final Version Due Oct 1, 2012
Categories    robotics   machine learning   artificial intelligence   cognitive science
 

Call For Papers

The ICDL and the Epigenetic Robotics conferences are the premier venues for interdisciplinary research that blends the boundaries between robotics, artificial intelligence, machine learning, developmental psychology, and neuroscience. The scope of development and learning covered by this conference includes perceptual, cognitive, motor, behavioral, emotional and other related capabilities that are exhibited by humans, higher animals, artificial systems and robots.

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