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8 items matching your criteria. RSS Feed
 Solving Deep Memory POMDPs with Recurrent Policy Gradients [1%] by gloye, 2007-04-17 01:17 PM
D. Wierstra, A. Foerster, J. Schmidhuber: Solving Deep Memory POMDPs with Recurrent Policy Gradients. Under review.
 Quasi-Online Reinforcement Learning for Robots [1%] by gloye, 2007-03-20 01:02 PM
B. Bakker, V. Zhumatiy, G. Gruener, J. Schmidhuber: Quasi-Online Reinforcement Learning for Robots, IEEE International Conference on Robotics and Automation ...
  Metric State Space Reinforcement Learning for a Vision-Capable Mobile Robot [1%] by gloye, 2007-04-17 01:25 PM
V. Zhumatiy, F. Gomez, M. Hutter, and J. Schmidhuber: Metric State Space Reinforcement Learning for a Vision-Capable Mobile Robot, Proc. of the Int'l Conf. ...
 Holonomic Control of a robot with an omnidirectional drive [1%] by gloye, 2007-04-17 01:24 PM
R. Rojas, A. Gloye Förster: Holonomic Control of a robot with an omnidirectional drive, KI - Künstliche Intelligenz, vol. 20, nr. 2, BöttcherIT Verlag, ...
 Training Recurrent Neural Networks by Evolino [1%] by gloye, 2007-04-17 01:25 PM
J. Schmidhuber, D. Wierstra, M. Gagliolo, F. Gomez: Training Recurrent Neural Networks by Evolino. To appear in Neural Computation.
 ZMINDRACESFILE_INDEXING_DOCUMENT [1%] by admin, 2007-04-16 05:38 PM
Zmindracesfile_indexing_document This is a special MindRACES file used to create categories indexes for the others
 RNN-based Learning of Compact Maps for Efficient Robot Localization [1%] by gloye, 2007-04-17 01:15 PM
A. Foerster, A. Graves, J. Schmidhuber: RNN-based Learning of Compact Maps for Efficient Robot Localization. ESANN 2007.
 Training Recurrent Neural Networks by Evolino [1%] by gloye, 2007-04-17 01:20 PM
J. Schmidhuber, D. Wierstra, M. Gagliolo, F. Gomez: Training Recurrent Neural Networks by Evolino. Neural Computation, 19(3), March 2007.
 

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Anticipatory Cognitive Science is a research field that ensembles artificial intelligence, biology, psychology, neurology, engineering and philosophy in order to build anticipatory cognitive systems that are able to face human tasks with the same anticipatory capabilities and performance. In deep: Cognitive science is the interdisciplinary study of mind and intelligence, embracing philosophy, psychology, artificial intelligence, neuroscience, linguistics, and anthropology. Its intellectual origins are in the mid-1950s when researchers in several fields began to develop theories of mind based on complex representations and computational procedures. Its organizational origins are in the mid-1970s when the Cognitive Science Society was formed and the journal Cognitive Science began. Since then, more than sixty universities in North America, Europe, Asia, and Australia have established cognitive science programs, and many others have instituted courses in cognitive science.