Research on Multirelational Entity Modeling Based on Knowledge Graph Representation Learning

Q3 Computer Science
Tongke Fan
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引用次数: 0

Abstract

A research concern revolves around as to what can make the representation of entities and relationships fully integrate the structural information of the knowledge atlas to solve the entity modeling capability in complex relationships. World knowledge can be organized into a structured knowledge network by mining entity and relationship information in real texts. In order to apply the rich structured information in the knowledge map to downstream applications, it is particularly important to express and learn the knowledge map. In the knowledge atlas with expanding scale and more diversified knowledge sources, there are many types of relationships with complex types. The frequency of a single relationship in all triples is further reduced, which increases the difficulty of relational reasoning. Thus, this study aimed to improve the accuracy of relational reasoning and entity reasoning in complex relational models. For the multi-relational knowledge map, CTransR based on the TransE model and TransR model adopts the idea of piecewise linear regression to cluster the potential relationships between head and tail entities, and establishes a vector representation for each cluster separately, so that the same relationship represented by different clusters still has a certain degree of similarity. The CTransR model carried out knowledge reasoning experiments in the open dataset, and achieved good performance. The CTransR model is highly effective and progressive for complex relationships. In this experiment, we have evaluated the model, including link prediction, triad classification, and text relationship extraction. The results show that the CTransR model has achieved significant improvement.
基于知识图表示学习的多关系实体建模研究
一个研究问题是如何使实体和关系的表示完全集成知识图谱的结构信息,以解决复杂关系中的实体建模能力。通过挖掘真实文本中的实体和关系信息,可以将世界知识组织成一个结构化的知识网络。为了将知识图谱中丰富的结构化信息应用于下游应用,表达和学习知识图谱尤为重要。在规模不断扩大、知识来源更加多样化的知识图谱中,存在着许多类型复杂的关系。单个关系在所有三元组中的频率进一步降低,这增加了关系推理的难度。因此,本研究旨在提高复杂关系模型中关系推理和实体推理的准确性。对于多关系知识图谱,基于TransE模型和TransR模型的CTransR采用分段线性回归的思想对头部和尾部实体之间的潜在关系进行聚类,并分别为每个聚类建立向量表示,使不同聚类表示的相同关系仍具有一定的相似性。CTransR模型在开放数据集中进行了知识推理实验,取得了良好的性能。对于复杂的关系,CTransR模型是非常有效和渐进的。在这个实验中,我们对模型进行了评估,包括链接预测、三元组分类和文本关系提取。结果表明,CTransR模型取得了显著的改进。
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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来源期刊
Recent Advances in Computer Science and Communications
Recent Advances in Computer Science and Communications Computer Science-Computer Science (all)
CiteScore
2.50
自引率
0.00%
发文量
142
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