Random Semantic Tensor Ensemble for Scalable Knowledge Graph Link Prediction

Yi Tay, Anh Tuan Luu, S. Hui, Falk Brauer
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引用次数: 19

Abstract

Link prediction on knowledge graphs is useful in numerous application areas such as semantic search, question answering, entity disambiguation, enterprise decision support, recommender systems and so on. While many of these applications require a reasonably quick response and may operate on data that is constantly changing, existing methods often lack speed and adaptability to cope with these requirements. This is aggravated by the fact that knowledge graphs are often extremely large and may easily contain millions of entities rendering many of these methods impractical. In this paper, we address the weaknesses of current methods by proposing Random Semantic Tensor Ensemble (RSTE), a scalable ensemble-enabled framework based on tensor factorization. Our proposed approach samples a knowledge graph tensor in its graph representation and performs link prediction via ensembles of tensor factorization. Our experiments on both publicly available datasets and real world enterprise/sales knowledge bases have shown that our approach is not only highly scalable, parallelizable and memory efficient, but also able to increase the prediction accuracy significantly across all datasets.
面向可扩展知识图链接预测的随机语义张量集成
知识图谱上的链接预测在语义搜索、问题回答、实体消歧、企业决策支持、推荐系统等众多应用领域都很有用。虽然这些应用程序中的许多都需要相当快速的响应,并且可能对不断变化的数据进行操作,但现有方法通常缺乏速度和适应性来应对这些需求。知识图通常非常大,并且可能很容易包含数百万个实体,这使得许多这些方法不切实际,这一事实加剧了这种情况。在本文中,我们通过提出随机语义张量集成(RSTE)来解决当前方法的弱点,RSTE是一种基于张量分解的可扩展集成框架。我们提出的方法对知识图张量的图表示进行采样,并通过张量分解的集合进行链接预测。我们在公开可用的数据集和现实世界的企业/销售知识库上的实验表明,我们的方法不仅具有高度可扩展性、可并行性和内存效率,而且能够显著提高所有数据集的预测准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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