图颗粒的概念信息及其在知识图嵌入中的应用

IF 3.1 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE International Journal of Machine Learning and Cybernetics Pub Date : 2024-07-01 DOI:10.1007/s13042-024-02267-4
Jiaojiao Niu, Degang Chen, Yinglong Ma, Jinhai Li
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引用次数: 0

摘要

知识图谱嵌入(KGE)已成为用数字表示知识图谱中实体及其关系的最有效方法之一。传统方法主要利用结构为(头部实体、关系、尾部实体)的三元事实作为学习过程中的基本知识单元,并利用额外的外部信息来提高模型的性能。由于三元事实有时不够充分,而且外部信息并不总是可用的,因此从知识图谱(KG)中获取结构化的内部知识自然就成了 KGE 学习的可行方法。受此启发,本文采用形式化概念分析(FCA)挖掘知识图谱中的确定性概念知识,并通过考虑概念信息提出了一种新型知识图谱模型。更具体地说,共享相同头部实体的三元组被组织成名为图颗粒(graph granules)的知识结构,然后被转换成概念网格,在此基础上提出了一种基于网格的新型 KGE 模型(TransGr)来完成知识图谱。TransGr 假定实体和关系存在于不同的颗粒中,并使用矩阵(通过融合概念网格中的概念获得)来定量描述图颗粒。之后,在学习知识图谱的向量表示时,它会强制实体和关系满足图谱粒度约束。链接预测和三重分类实验表明,所提出的 TransGr 在具有相对完整图颗粒的数据集上是有效的。
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The concept information of graph granule with application to knowledge graph embedding

Knowledge graph embedding (KGE) has become one of the most effective methods for the numerical representation of entities and their relations in knowledge graphs. Traditional methods primarily utilise triple facts, structured as (head entity, relation, tail entity), as the basic knowledge units in the learning process and use additional external information to improve the performance of models. Since triples are sometimes less than adequate and external information is not always available, obtaining structured internal knowledge from knowledge graphs (KGs) naturally becomes a feasible method for KGE learning. Motivated by this, this paper employs formal concept analysis (FCA) to mine deterministic concept knowledge in KGs and proposes a novel KGE model by taking the concept information into account. More specifically, triples sharing the same head entity are organised into knowledge structures named graph granules, and then were transformed into concept lattices, based on which a novel lattice-based KGE model (TransGr) is proposed for knowledge graph completion. TransGr assumes that entities and relations exist in different granules and uses a matrix (obtained by fusing concepts from concept lattice) for quantitatively depicting the graph granule. Afterwards, it forces entities and relations to meet graph granule constraints when learning vector representations of KGs. Experiments on link prediction and triple classification demonstrated that the proposed TransGr is effective on the datasets with relatively complete graph granules.

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来源期刊
International Journal of Machine Learning and Cybernetics
International Journal of Machine Learning and Cybernetics COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
7.90
自引率
10.70%
发文量
225
期刊介绍: Cybernetics is concerned with describing complex interactions and interrelationships between systems which are omnipresent in our daily life. Machine Learning discovers fundamental functional relationships between variables and ensembles of variables in systems. The merging of the disciplines of Machine Learning and Cybernetics is aimed at the discovery of various forms of interaction between systems through diverse mechanisms of learning from data. The International Journal of Machine Learning and Cybernetics (IJMLC) focuses on the key research problems emerging at the junction of machine learning and cybernetics and serves as a broad forum for rapid dissemination of the latest advancements in the area. The emphasis of IJMLC is on the hybrid development of machine learning and cybernetics schemes inspired by different contributing disciplines such as engineering, mathematics, cognitive sciences, and applications. New ideas, design alternatives, implementations and case studies pertaining to all the aspects of machine learning and cybernetics fall within the scope of the IJMLC. Key research areas to be covered by the journal include: Machine Learning for modeling interactions between systems Pattern Recognition technology to support discovery of system-environment interaction Control of system-environment interactions Biochemical interaction in biological and biologically-inspired systems Learning for improvement of communication schemes between systems
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