Distant supervision knowledge extraction and knowledge graph construction method for supply chain management domain

Feiyue Huang, Lianglun Cheng
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Abstract

As the core competitiveness of the national industry, large-scale equipment such as ships, high-speed rail and nuclear power equipment, their production process involves in-depth personalization. It includes complex processes and long manufacturing cycles. In addition, the equipment’s supply chain management is extremely complex. Therefore, the development of a supply chain management knowledge graph is of significant strategic significance. It not only enhances the synergistic effect of the supply chain management but also upgrades the level of intelligent management. This paper proposes a distant supervision knowledge extraction and knowledge graph construction method in the supply chain management of large equipment manufacturing, which achieves digital and structured management and efficient use of supply chain management knowledge in the industry. This paper presents an approach to extract entity-relation knowledge using limited samples. We achieve this by establishing a distant supervision model. Furthermore, we introduce a fusion gate mechanism and integrate ontology information, thereby enhancing the model’s capability to effectively discern sentence-level semantics. Subsequently, we promptly modify the weights of input features using the gate mechanism to strengthen the model’s resilience and address the issue of vector noise diffusion. Finally, an inter-bag sentence attention mechanism is introduced to integrate different sentence bag information at the sentence bag level, which achieves more accurate entity-relation knowledge extraction. The experimental results prove that compared with the latest distant supervision method, the accuracy of relation extraction is improved by 2.8%, and the AUC value is increased by 3.9%, effectively improving the quality of knowledge graph in supply chain management.

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供应链管理领域的远程监督知识提取和知识图谱构建方法
船舶、高铁、核电设备等大型装备作为民族工业的核心竞争力,其生产过程涉及深度个性化定制。其中包括复杂的工艺流程和漫长的制造周期。此外,装备的供应链管理也极为复杂。因此,开发供应链管理知识图谱具有重要的战略意义。它不仅能增强供应链管理的协同效应,还能提升智能化管理水平。本文提出了大型装备制造业供应链管理中的远距离监管知识提取和知识图谱构建方法,实现了行业供应链管理知识的数字化、结构化管理和高效利用。本文提出了一种利用有限样本提取实体关联知识的方法。我们通过建立远距离监督模型来实现这一目标。此外,我们还引入了融合门机制,并整合了本体信息,从而增强了模型有效辨别句子级语义的能力。随后,我们利用门机制及时修改输入特征的权重,以增强模型的弹性,并解决向量噪声扩散的问题。最后,我们引入了句包间关注机制,在句包层面整合不同的句包信息,实现了更准确的实体相关知识提取。实验结果证明,与最新的远距离监督方法相比,关系提取的准确率提高了 2.8%,AUC 值提高了 3.9%,有效提高了供应链管理中知识图谱的质量。
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