首页> 外文会议>Joint International Conference on Artificial Neural Networks and Neural Information Processing - ICANN/ICONIP 2003 Jun 26-29, 2003 Istanbul, Turkey >Learning Distributed Representations of High-Arity Relational Data with Non-linear Relational Embedding
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Learning Distributed Representations of High-Arity Relational Data with Non-linear Relational Embedding

机译:用非线性关系嵌入学习高等关系数据的分布式表示

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摘要

We summarize Linear Relational Embedding (LRE), a method which has been recently proposed for generalizing over relational data. We show that LRE can represent any binary relations, but that there are relations of arity greater than 2 that it cannot represent. We then introduce Non-Linear Relational Embedding (NLRE) and show that it can learn any relation. Results of NLRE on the Family Tree Problem show that generalization is much better than the one obtained using backpropagation on the same problem.
机译:我们总结了线性关系嵌入(LRE),这是最近提出的一种用于概括关系数据的方法。我们证明LRE可以表示任何二元关系,但是存在不能表示的大于2的Arity关系。然后,我们介绍非线性关系嵌入(NLRE),并证明它可以学习任何关系。 NLRE在族谱问题上的结果表明,泛化要好于对同一问题使用反向传播获得的泛化。

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