基于外部信息语义增强的知识表示学习方法

Q3 Computer Science
Song Li, Yuxin Yang, Liping Zhang
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引用次数: 0

摘要

知识表示学习旨在将知识图谱中的实体和关系数据映射到向量形式的低维空间。本研究旨在将实体描述信息和文本关系描述信息与三元组结构信息相结合,然后利用线性映射法对结构向量和文本向量进行线性变换,得到联合表示向量。对于实体描述,使用双向长短期记忆网络(Bi-LSTM)模型和注意力机制进行向量表示。对于文本关系,使用卷积神经网络对实体之间的关系进行矢量编码,然后使用注意机制获取有价值的信息作为三元组的补充信息。链接预测和三元组分类实验在 FB15K、FB15K-237、WN18、WN18RR 和 NELL-995 数据集上进行。理论分析和实验结果表明,本文提出的DRKRL模型与现有模型相比具有更高的准确性和效率,将实体描述信息和文本关系描述信息与三元组结构信息相结合可以使模型具有更好的性能,有效提高知识表示学习能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge Representation Learning Method Based on Semantic Enhancement of External Information
Knowledge representation learning aims at mapping entity and relational data in knowledge graphs to a low-dimensional space in the form of vectors. The existing work has mainly focused on structured information representation of triples or introducing only one additional kind of information, which has large limitations and reduces the representation efficiency. This study aims to combine entity description information and textual relationship description information with triadic structure information, and then use the linear mapping method to linearly transform the structure vector and text vector to obtain the joint representation vector. A knowledge representation learning (DRKRL) model that fuses external information for semantic enhancement is proposed, which combines entity descriptions and textual relations with a triadic structure. For entity descriptions, a vector representation is performed using a bi-directional long- and short-term memory network (Bi-LSTM) model and an attention mechanism. For the textual relations, a convolutional neural network is used to vectorially encode the relations between entities, and then an attention mechanism is used to obtain valuable information as complementary information to the triad. Link prediction and triadic group classification experiments were conducted on the FB15K, FB15K-237, WN18, WN18RR, and NELL-995 datasets. Theoretical analysis and experimental results show that the DRKRL model proposed in this paper has higher accuracy and efficiency compared with existing models. Combining entity description information and textual relationship description information with triadic structure information can make the model have better performance and effectively improve the knowledge representation learning ability.
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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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