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Neural Relational Learning Through Semi-Propositionalization of Bottom Clauses

机译:神经关系学习通过底部条款的半预感化

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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 in social networks. The CILP++ system is a neural-symbolic system which can perform efficient relational learning, by being able to process first-order logic knowledge into a neural network. CILP++ relies on BCP, a recently discovered propositionalization algorithm, to perform relational learning. However, efficient knowledge extraction from such networks is an open issue and features generated by BCP do not have an independent relational description, which prevents sound knowledge extraction from such networks. We present a methodology for generating independent propositional features for BCP by using semi-propositionalization of bottom clauses. Empirical results obtained in comparison with the original version of BCP show that this approach has comparable accuracy and runtimes, while allowing proper relational knowledge representation of features for knowledge extraction from CILP++ networks.
机译:关系学习可以从示例中描述为学习一阶逻辑规则的任务。它已启用许多新机器学习应用,例如,社交网络中的图形挖掘与链路分析。 CILP ++系统是一种神经象征性系统,可以通过能够进入神经网络中的一阶逻辑知识来执行高效的关系学习。 CILP ++依赖于BCP,最近发现的命令算法,以执行关系学习。然而,从这些网络的有效知识提取是开放问题,BCP生成的功能没有独立的关系描述,这可以防止来自这种网络的声音知识提取。我们通过使用底部条款的半预感化来提出一种用于生成BCP的独立命题特征的方法。与BCP原始版本获得的经验结果表明,该方法具有可比的准确性和运行时间,同时允许从CILP ++网络的知识提取功能的适当关系知识表示。

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