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Lifted Relational Neural Networks
[article]
2015
arXiv
pre-print
We propose a method combining relational-logic representations with neural network learning. A general lifted architecture, possibly reflecting some background domain knowledge, is described through relational rules which may be handcrafted or learned. The relational rule-set serves as a template for unfolding possibly deep neural networks whose structures also reflect the structures of given training or testing relational examples. Different networks corresponding to different examples share
arXiv:1508.05128v2
fatcat:yhez6siaqvflrcebqxfryybhtq