Fast relational learning using bottom clause propositionalization with artificial neural networks

Volume: 94, Issue: 1, Pages: 81 - 104
Published: Jul 4, 2013
Abstract
Relational learning can be described as the task of learning first-order logic rules from examples. It has enabled a number of new machine learning applications, e.g. graph mining and link analysis. Inductive Logic Programming (ILP) performs relational learning either directly by manipulating first-order rules or through propositionalization, which translates the relational task into an attribute-value learning task by representing subsets of...
Paper Details
Title
Fast relational learning using bottom clause propositionalization with artificial neural networks
Published Date
Jul 4, 2013
Volume
94
Issue
1
Pages
81 - 104
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