利用实体的仿射变换改进静态和时态知识图谱嵌入

IF 2.1 3区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Journal of Web Semantics Pub Date : 2024-05-28 DOI:10.1016/j.websem.2024.100824
Jinfa Yang, Xianghua Ying, Yongjie Shi, Ruibin Wang
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引用次数: 0

摘要

如今,为知识图谱(KG)找到合适的嵌入方法仍然是一项巨大的挑战。通过测量静态和时态知识图谱中三元组和四元组的距离或可信度,人们提出了许多可靠的知识图谱嵌入(KGE)模型。然而,这些经典模型可能无法很好地表示和推断各种关系模式,如 TransE 无法表示对称关系、DistMult 无法表示逆关系、RotatE 无法表示多重关系等。在本文中,我们通过引入仿射变换框架来提高这些模型表示各种关系模式的能力。具体来说,我们首先利用一组与每个关系或时间戳相关的仿射变换对实体向量进行操作,然后这些变换后的向量不仅可以应用于静态 KGE 模型,也可以应用于时态 KGE 模型。使用仿射变换的主要优势在于其良好的几何特性和可解释性。我们的实验结果表明,使用仿射变换的直观设计只需增加几个额外的处理步骤,并保持相同数量的嵌入参数,就能在统计学上显著提高性能。以 TransE 为例,我们采用了比例变换(仿射变换的特例)。令人惊讶的是,在各种数据集上,它的性能甚至在一定程度上优于 RotatE。我们还分别在 RotatE、Distmult、ComplEx、TTransE 和 TComplEx 中引入了仿射变换,实验证明,仿射变换可以在静态和时态知识图谱基准上持续、显著地提高最先进的 KGE 模型的性能。
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Improving static and temporal knowledge graph embedding using affine transformations of entities

To find a suitable embedding for a knowledge graph (KG) remains a big challenge nowadays. By measuring the distance or plausibility of triples and quadruples in static and temporal knowledge graphs, many reliable knowledge graph embedding (KGE) models are proposed. However, these classical models may not be able to represent and infer various relation patterns well, such as TransE cannot represent symmetric relations, DistMult cannot represent inverse relations, RotatE cannot represent multiple relations, etc.. In this paper, we improve the ability of these models to represent various relation patterns by introducing the affine transformation framework. Specifically, we first utilize a set of affine transformations related to each relation or timestamp to operate on entity vectors, and then these transformed vectors can be applied not only to static KGE models, but also to temporal KGE models. The main advantage of using affine transformations is their good geometry properties with interpretability. Our experimental results demonstrate that the proposed intuitive design with affine transformations provides a statistically significant increase in performance with adding a few extra processing steps and keeping the same number of embedding parameters. Taking TransE as an example, we employ the scale transformation (the special case of an affine transformation). Surprisingly, it even outperforms RotatE to some extent on various datasets. We also introduce affine transformations into RotatE, Distmult, ComplEx, TTransE and TComplEx respectively, and experiments demonstrate that affine transformations consistently and significantly improve the performance of state-of-the-art KGE models on both static and temporal knowledge graph benchmarks.

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来源期刊
Journal of Web Semantics
Journal of Web Semantics 工程技术-计算机:人工智能
CiteScore
6.20
自引率
12.00%
发文量
22
审稿时长
14.6 weeks
期刊介绍: The Journal of Web Semantics is an interdisciplinary journal based on research and applications of various subject areas that contribute to the development of a knowledge-intensive and intelligent service Web. These areas include: knowledge technologies, ontology, agents, databases and the semantic grid, obviously disciplines like information retrieval, language technology, human-computer interaction and knowledge discovery are of major relevance as well. All aspects of the Semantic Web development are covered. The publication of large-scale experiments and their analysis is also encouraged to clearly illustrate scenarios and methods that introduce semantics into existing Web interfaces, contents and services. The journal emphasizes the publication of papers that combine theories, methods and experiments from different subject areas in order to deliver innovative semantic methods and applications.
期刊最新文献
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