改进的知识表示模型:TransMR

Xuyang Wang, Yiyuan Zhang
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引用次数: 0

摘要

近年来知识图谱发展迅速,知识表示学习是知识图谱的一项基本任务,因此知识表示学习也受到了广泛关注。因此,学者们陆续提出了一系列基于TransE方法的知识表示模型,其中翻译模型TransE具有模型复杂度低、计算效率高、对三元组知识表示的语义表示能力强等特点。但是,TransE方法不能处理复杂的关系。鉴于此,本文在TransE方法的基础上提出了一种改进的知识表示模型TransMR,该模型使用马克思距离代替欧几里得距离来计算向量之间的距离,并分别在实体空间和关系空间建立实体和关系模型,其中利用单层神经网络的反向传播和非线性运算来增强它们之间的语义联系。同时,在模型训练过程中,通过对最相似实体的替换来提高负例三元组的容错性。
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Improved model for knowledge representation: TransMR
Knowledge graphs have developed rapidly in recent years, and knowledge representation learning is a fundamental task of knowledge graphs, so knowledge representation learning has likewise received widespread attention. Therefore, a series of knowledge representation models based on TransE methods have been proposed by scholars one after another, among which, the translation model TransE has low model complexity, high computational efficiency, and strong semantic representation ability for knowledge representation of triples. However, the TransE method cannot handle dealing with complex relations. In view of this, this paper proposes an improved knowledge representation model TransMR based on the TransE method, which uses the Marxian distance instead of Euclidean distance to calculate the distance between vectors, and builds entity and relationship models in entity space and relationship space respectively, in which the back propagation and nonlinear operation of single layer neural network are used to enhance the semantic connection between them. Meanwhile, during the model training process, experiments are conducted to improve the fault tolerance of negative example triples by using substitution for the most similar entities.
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