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Machine learning / Artificial intelligence / Learning / Mathematics / Sparse approximation / Semantic memory / Regularization / Supervised learning / Semantic network / Sparse matrix / Dense graph
Date: 2011-02-04 14:34:11
Machine learning
Artificial intelligence
Learning
Mathematics
Sparse approximation
Semantic memory
Regularization
Supervised learning
Semantic network
Sparse matrix
Dense graph

Discovering Structure by Learning Sparse Graphs Brenden M. Lake and Joshua B. Tenenbaum Department of Brain and Cognitive Sciences Massachusetts Institute of Technology {brenden, jbt}@mit.edu Abstract

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