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Path-based Attribute-aware Representation Learning for Relation Prediction

机译:基于路径的属性感知表示相关性预测的表示学习

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Knowledge graphs (KGs) have been applied to many semantic-driven applications, including knowledge interchange and semantic inference. However, most KGs are far from complete and are growing rapidly. Although significant progress has been made in the symbolic representation learning of KGs with structural information, the textual knowledge that plays a crucial role in relation prediction is underutilized, and the issues of redundancy and noise path remain to be settled. In this paper, a Path-based Attribute-aware Representation Learning model (PARL) has been proposed to perform path denoising and path representation learning for the relation prediction task. We develop a novel text-enhanced relation prediction architecture, which interactively learns KG structural and textual representations to vary the sparsity and reliability of KG. Moreover, a path denoising algorithm is presented to emphasize paths with rich information and reduce the impact of redundancy and noise path. Experiments on a public dataset demonstrate that PARL consistently outperforms state-of-the-art methods on relation prediction and KG completion tasks.
机译:知识图表(kgs)已应用于许多语义驱动的应用程序,包括知识交换和语义推断。然而,大多数KG都远非完整,并且正在迅速增长。尽管在具有结构信息的KGS的象征性代表学习中已经取得了重大进展,但在关系预测中发挥着至关重要的作用的文本知识得到了未充分利用,并且仍然剩余冗余和噪声路径的问题。在本文中,已经提出了一种基于路径的属性感知表示学习模型(PARL)以对关系预测任务执行路径去噪和路径表示学习。我们开发了一种新颖的文本增强关系预测架构,其互动地学习KG结构和文本表示,以改变kg的稀疏性和可靠性。此外,提出了一种路径去噪算法以强调具有丰富信息的路径,并降低冗余和噪声路径的影响。在公共数据集上的实验证明了Parl始终如一地优于关于关系预测和KG完成任务的最先进的方法。

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