Peer Evaluation activity
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Followblock this user Tom Schaul
Courant Institute, New York University
Coherence Progress: A Measure of Interestingness Based on Fixed Compressors
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Author(s) : Tom Schaul, Leo Pape, Tobias Glasmachers, Vincent Graziano, Jürgen Schmidhuber
Area : Other
Language : English
Year : 2011
|Affiliations :||Courant Institute, New York University|
Volume : 6830
Pages : 21-30
Url : http://api.mendeley.com/research/coherence-progress-measure-interestingness-based-fixed-compressors/
Doi : 10.1007/978-3-642-22887-2_3
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